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illusion","Swept-plane display","Numerosity adaptation effect","Phi phenomenon","Checker Shadow illusion","Illumination level","Visual Cortex","Surface darkness","Low-level phenomenon","Trompe-l’œil",[12182,12183,12184,12185,12186,12187,12188,12189,12190,12191,12192,12193,12194,12195,12196],"The Checker Shadow","The Cornsweet","The Kanizsa Triangle","The Muller-Lyer","The Lilac Chaser","The Jastrow ","The Kinetic depth effect ","The Leaning tower","The McCollough effect ","The Necker cube","The Hermann Grid","The Ponzo","The Zöllner","The Penrose stairs","The Troxler’s fading",[],[12199,12200,12201,12202],"It is a fact of neuroscience that everything we experience is a figment of our imagination. Although our sensations feel accurate and truthful, they do not necessarily reproduce the physical reality of the outside world. Of course, many experiences in daily life reflect the physical stimuli that send signals to the brain. But the same neural machinery that interprets inputs from our eyes, ears and other sensory organs is also responsible for our dreams, delusions and failings of memory. In other words, the real and the imagined share a physical source in the brain. So take a lesson from Socrates: “All I know is that I know nothing.” One of the most important tools used by neuroscientists to understand how the brain creates its sense of reality is the visual illusion. Historically, artists as well as researchers have used illusions to gain insights into the inner workings of the visual system. Long before scientists were studying the properties of neurons, artists had devised a series of techniques to deceive the brain into thinking that a flat canvas was three-dimensional or that a series of brushstrokes was indeed a still life. Visual illusions are defined by the dissociation between the physical reality and the subjective perception of an object or event. When we experience a visual illusion, we may see something that is not there or fail to see something that is there. Because of this disconnect between perception and reality, visual illusions demonstrate the ways in which the brain can fail to re-create the physical world. By studying these failings, we can learn about the computational methods used by the brain to construct visual experience.Brightness, color, shading, eye movement and other factors can have powerful effects on what we “see.” In this series of images, we showcase several basic categories of visual illusions and what they can teach us about perception in the brain. It is a fact of neuroscience that everything we experience is a figment of our imagination. Although our sensations feel accurate and truthful, they do not necessarily reproduce the physical reality of the outside world. Of course, many experiences in daily life reflect the physical stimuli that send signals to the brain. But the same neural machinery that interprets inputs from our eyes, ears and other sensory organs is also responsible for our dreams, delusions and failings of memory. In other words, the real and the imagined share a physical source in the brain. So take a lesson from Socrates: “All I know is that I know nothing.” One of the most important tools used by neuroscientists to understand how the brain creates its sense of reality is the visual illusion. Historically, artists as well as researchers have used illusions to gain insights into the inner workings of the visual system. Long before scientists were studying the properties of neurons, artists had devised a series of techniques to deceive the brain into thinking that a flat canvas was three-dimensional or that a series of brushstrokes was indeed a still life. Visual illusions are defined by the dissociation between the physical reality and the subjective perception of an object or event. When we experience a visual illusion, we may see something that is not there or fail to see something that is there. Because of this disconnect between perception and reality, visual illusions demonstrate the ways in which the brain can fail to re-create the physical world. By studying these failings, we can learn about the computational methods used by the brain to construct visual experience.Brightness, color, shading, eye movement and other factors can have powerful effects on what we “see.” In this series of images, we showcase several basic categories of visual illusions and what they can teach us about perception in the brain. It is a fact of neuroscience that everything we experience is a figment of our imagination. Although our sensations feel accurate and truthful, they do not necessarily reproduce the physical reality of the outside world. Of course, many experiences in daily life reflect the physical stimuli that send signals to the brain. But the same neural machinery that interprets inputs from our eyes, ears and other sensory organs is also responsible for our dreams, delusions and failings of memory. In other words, the real and the imagined share a physical source in the brain. So take a lesson from Socrates: “All I know is that I know nothing.” One of the most important tools used by neuroscientists to understand how the brain creates its sense of reality is the visual illusion. Historically, artists as well as researchers have used illusions to gain insights into the inner workings of the visual system. Long before scientists were studying the properties of neurons, artists had devised a series of techniques to deceive the brain into thinking that a flat canvas was three-dimensional or that a series of brushstrokes was indeed a still life. Visual illusions are defined by the dissociation between the physical reality and the subjective perception of an object or event. When we experience a visual illusion, we may see something that is not there or fail to see something that is there. Because of this disconnect between perception and reality, visual illusions demonstrate the ways in which the brain can fail to re-create the physical world. By studying these failings, we can learn about the computational methods used by the brain to construct visual experience.Brightness, color, shading, eye movement and other factors can have powerful effects on what we “see.” In this series of images, we showcase several basic categories of visual illusions and what they can teach us about perception in the brain. It is a fact of neuroscience that everything we experience is a figment of our imagination. Although our sensations feel accurate and truthful, they do not necessarily reproduce the physical reality of the outside world. Of course, many experiences in daily life reflect the physical stimuli that send signals to the brain. But the same neural machinery that interprets inputs from our eyes, ears and other sensory organs is also responsible for our dreams, delusions and failings of memory. In other words, the real and the imagined share a physical source in the brain. So take a lesson from Socrates: “All I know is that I know nothing.” One of the most important tools used by neuroscientists to understand how the brain creates its sense of reality is the visual illusion. Historically, artists as well as researchers have used illusions to gain insights into the inner workings of the visual system. Long before scientists were studying the properties of neurons, artists had devised a series of techniques to deceive the brain into thinking that a flat canvas was three-dimensional or that a series of brushstrokes was indeed a still life. Visual illusions are defined by the dissociation between the physical reality and the subjective perception of an object or event. When we experience a visual illusion, we may see something that is not there or fail to see something that is there. Because of this disconnect between perception and reality, visual illusions demonstrate the ways in which the brain can fail to re-create the physical world. By studying these failings, we can learn about the computational methods used by the brain to construct visual experience.Brightness, color, shading, eye movement and other factors can have powerful effects on what we “see.” In this series of images, we showcase several basic categories of visual illusions and what they can teach us about perception in the brain. It is a fact of neuroscience that everything we experience is a figment of our imagination. Although our sensations feel accurate and truthful, they do not necessarily reproduce the physical reality of the outside world. Of course, many experiences in daily life reflect the physical stimuli that send signals to the brain.","Two gray dots appear on a background that consists of a gradient from light gray to black. Although the two dots are identical, they appear very different based on where they are placed against the background.\n\nScientists who study the brain have been trying to figure out the mechanism behind this illusion, known as simultaneous brightness contrast, for more than 100 years. An MIT-led study now suggests that this phenomenon relies on brightness estimation that takes place before visual information reaches the brain’s visual cortex, possibly within the retina.\n\n“All of our experiments point to the conclusion that this is a low-level phenomenon,” says Pawan Sinha, a professor of vision and computational neuroscience in MIT’s Department of Brain and Cognitive Sciences. “The results help answer the question of what is the mechanism that underlies this very fundamental process of brightness estimation, which is a building block of many other kinds of visual analyses.”\n\nAs one part of their investigation, the researchers studied blind children in India and found that they were susceptible to this illusion almost immediately after their sight was initiated after surgery, offering further evidence that brightness estimations are likely based on simple neural circuitry that doesn’t require any prior visual experience to be set up.\n\nSinha is the senior author of the study, which appears in the August issue of Vision Research. Other authors of the paper are Sarah Crucilla, who worked with Sinha while she was in high school and is now a Caltech undergraduate; Tapan Gandhi, a faculty member at the Indian Institute of Technology and a former postdoc at MIT; Dylan Rose, a recent Northeastern University PhD recipient; Amy Singh of Google, who is also a former MIT postdoc; Suma Ganesh and Umang Mathur of Dr. Shroff’s Charity Eye Hospital in New Delhi; and Peter Bex, a professor of psychology at Northeastern University. Two gray dots appear on a background that consists of a gradient from light gray to black. Although the two dots are identical, they appear very different based on where they are placed against the background.\n\nScientists who study the brain have been trying to figure out the mechanism behind this illusion, known as simultaneous brightness contrast, for more than 100 years. An MIT-led study now suggests that this phenomenon relies on brightness estimation that takes place before visual information reaches the brain’s visual cortex, possibly within the retina.\n\n“All of our experiments point to the conclusion that this is a low-level phenomenon,” says Pawan Sinha, a professor of vision and computational neuroscience in MIT’s Department of Brain and Cognitive Sciences. “The results help answer the question of what is the mechanism that underlies this very fundamental process of brightness estimation, which is a building block of many other kinds of visual analyses.”\n\nAs one part of their investigation, the researchers studied blind children in India and found that they were susceptible to this illusion almost immediately after their sight was initiated after surgery, offering further evidence that brightness estimations are likely based on simple neural circuitry that doesn’t require any prior visual experience to be set up.\n\nSinha is the senior author of the study, which appears in the August issue of Vision Research. Other authors of the paper are Sarah Crucilla, who worked with Sinha while she was in high school and is now a Caltech undergraduate; Tapan Gandhi, a faculty member at the Indian Institute of Technology and a former postdoc at MIT; Dylan Rose, a recent Northeastern University PhD recipient; Amy Singh of Google, who is also a former MIT postdoc; Suma Ganesh and Umang Mathur of Dr. Shroff’s Charity Eye Hospital in New Delhi; and Peter Bex, a professor of psychology at Northeastern University. Two gray dots appear on a background that consists of a gradient from light gray to black. Although the two dots are identical, they appear very different based on where they are placed against the background.\n\nScientists who study the brain have been trying to figure out the mechanism behind this illusion, known as simultaneous brightness contrast, for more than 100 years. An MIT-led study now suggests that this phenomenon relies on brightness estimation that takes place before visual information reaches the brain’s visual cortex, possibly within the retina.\n\n“All of our experiments point to the conclusion that this is a low-level phenomenon,” says Pawan Sinha, a professor of vision and computational neuroscience in MIT’s Department of Brain and Cognitive Sciences. “The results help answer the question of what is the mechanism that underlies this very fundamental process of brightness estimation, which is a building block of many other kinds of visual analyses.”\n\nAs one part of their investigation, the researchers studied blind children in India and found that they were susceptible to this illusion almost immediately after their sight was initiated after surgery, offering further evidence that brightness estimations are likely based on simple neural circuitry that doesn’t require any prior visual experience to be set up.\n\nSinha is the senior author of the study, which appears in the August issue of Vision Research. Other authors of the paper are Sarah Crucilla, who worked with Sinha while she was in high school and is now a Caltech undergraduate; Tapan Gandhi, a faculty member at the Indian Institute of Technology and a former postdoc at MIT; Dylan Rose, a recent Northeastern University PhD recipient; Amy Singh of Google, who is also a former MIT postdoc; Suma Ganesh and Umang Mathur of Dr. Shroff’s Charity Eye Hospital in New Delhi; and Peter Bex, a professor of psychology at Northeastern University. \n\nTwo gray dots appear on a background that consists of a gradient from light gray to black. Although the two dots are identical, they appear very different based on where they are placed against the background.\n\nScientists who study the brain have been trying to figure out the mechanism behind this illusion, known as simultaneous brightness contrast, for more than 100 years. An MIT-led study now suggests that this phenomenon relies on brightness estimation that takes place before visual information reaches the brain’s visual cortex, possibly within the retina.\n\n“All of our experiments point to the conclusion that this is a low-level phenomenon,” says Pawan Sinha, a professor of vision and computational neuroscience in MIT’s Department of Brain and Cognitive Sciences. “The results help answer the question of what is the mechanism that underlies this very fundamental process of brightness estimation, which is a building block of many other kinds of visual analyses.”\n\nAs one part of their investigation, the researchers studied blind children in India and found that they were susceptible to this illusion almost immediately after their sight was initiated after surgery, offering further evidence that brightness estimations are likely based on simple neural circuitry that doesn’t require any prior visual experience to be set up.\n\nSinha is the senior author of the study, which appears in the August issue of Vision Research. Other authors of the paper are Sarah Crucilla, who worked with Sinha while she was in high school and is now a Caltech undergraduate; Tapan Gandhi, a faculty member at the Indian Institute of Technology and a former postdoc at MIT; Dylan Rose, a recent Northeastern University PhD recipient; Amy Singh of Google, who is also a former MIT postdoc; Suma Ganesh and Umang Mathur of Dr. Shroff’s Charity Eye Hospital in New Delhi; and Peter Bex, a professor of psychology at Northeastern University. Two gray dots appear on a background that consists of a gradient from light gray to black. Although the two dots are identical, they appear very different based on where they are placed against the background.","When we look at an image, our brain perceives a certain brightness at each location of the image. Surprisingly, however, our brightness percepts are not always proportional to the amount of light emanating from image regions, Sinha says. Instead, our perception is the product of the object’s actual color and the amount of light that is shining on it.\n\n“You could have a really dark piece of cloth under a bright spotlight, and the amount of light that you get from it could be the same as, or even more than, the amount of light from a white piece of paper under dim light,” Sinha says. “The brain is presented with the challenge of figuring out how light or dark a surface is based on just the amount of energy it’s receiving. In essence, the brain has to figure out the two numbers that were multiplied (illumination level and surface darkness) to produce the one number it is receiving (incoming energy) — a seemingly impossible task since infinitely many pairs of numbers can all yield the same product.”\n\nSome scientists, including the 19th century German physicist Hermann von Helmholtz, an early pioneer of vision studies, suggested that estimating brightness is a “high-level” process. That is, the brain estimates brightness based on a high-level understanding of the lighting conditions, shapes, and shadows in the environment that it’s seeing.\n\nMany visual tasks, such as identifying faces or objects, do rely on our previous experiences or expectations about what we’re seeing. However, the experiments that Sinha and his colleagues performed in this study suggest that in the case of brightness estimation, high-level processing does not play a significant role.\n\nIn their first set of experiments, the researchers created an image of a cube that appeared to be lit from the side, with one face appearing a little brighter than the other. In reality, using a clever trick that Chinese ceramic painters knew over 800 years ago, the face that looked brighter actually had lower luminance than the face that looked darker. In this display, the researchers found that when identical gray dots were placed on the two cube faces, the dot that was on the face that seemed to be in shadow actually appeared darker than an identical dot placed on a face that was receiving more light.\n\n“This is the opposite of what happens in standard simultaneous contrast displays, in which a dot on a dark background appears brighter than a dot on a light background,” Sinha says. “This result runs counter to the idea that high-level analysis of lighting conditions contributes to brightness estimation.”\n\nThe second set of experiments was designed to localize the processes of brightness estimation. It built on the curious fact that the unified view of the world we experience, constructed by merging images from the two eyes, is accompanied by an almost complete loss of “eye of origin” information. We do not know what the original images were, and which eye they came from; we are only aware of the merged view (sometimes called the “cyclopean” image, after the one-eyed monster Cyclops of Greek mythology). However, using specially designed images and stereo glasses, the researchers found that brightness estimation did not need to wait until information from the two eyes was merged; it had already occurred by that point.\n\nThis finding suggests that brightness estimation occurs very early, before information coming from each eye is combined into one visual stream. The combination occurs in a part of the brain’s cortex called V1 (so named because it represents the first stage of visual processing in the cortex). This places a tight constraint on the location of processing; the researchers hypothesize that significant brightness computation most likely takes place in the retina.\n\n“The implication of results from the first two sets of studies was that if brightness estimation is really a low-level process, and the circuitry is located as early as the retina, then perhaps this is an innate dispensation,” Sinha says. “This is something that the visual system comes prepared to do, right from birth.” When we look at an image, our brain perceives a certain brightness at each location of the image. Surprisingly, however, our brightness percepts are not always proportional to the amount of light emanating from image regions, Sinha says. Instead, our perception is the product of the object’s actual color and the amount of light that is shining on it.\n\n“You could have a really dark piece of cloth under a bright spotlight, and the amount of light that you get from it could be the same as, or even more than, the amount of light from a white piece of paper under dim light,” Sinha says. “The brain is presented with the challenge of figuring out how light or dark a surface is based on just the amount of energy it’s receiving. In essence, the brain has to figure out the two numbers that were multiplied (illumination level and surface darkness) to produce the one number it is receiving (incoming energy) — a seemingly impossible task since infinitely many pairs of numbers can all yield the same product.”\n\nSome scientists, including the 19th century German physicist Hermann von Helmholtz, an early pioneer of vision studies, suggested that estimating brightness is a “high-level” process. That is, the brain estimates brightness based on a high-level understanding of the lighting conditions, shapes, and shadows in the environment that it’s seeing.\n\nMany visual tasks, such as identifying faces or objects, do rely on our previous experiences or expectations about what we’re seeing. However, the experiments that Sinha and his colleagues performed in this study suggest that in the case of brightness estimation, high-level processing does not play a significant role.\n\nIn their first set of experiments, the researchers created an image of a cube that appeared to be lit from the side, with one face appearing a little brighter than the other. In reality, using a clever trick that Chinese ceramic painters knew over 800 years ago, the face that looked brighter actually had lower luminance than the face that looked darker. In this display, the researchers found that when identical gray dots were placed on the two cube faces, the dot that was on the face that seemed to be in shadow actually appeared darker than an identical dot placed on a face that was receiving more light.\n\n“This is the opposite of what happens in standard simultaneous contrast displays, in which a dot on a dark background appears brighter than a dot on a light background,” Sinha says. “This result runs counter to the idea that high-level analysis of lighting conditions contributes to brightness estimation.”\n\nThe second set of experiments was designed to localize the processes of brightness estimation. It built on the curious fact that the unified view of the world we experience, constructed by merging images from the two eyes, is accompanied by an almost complete loss of “eye of origin” information. We do not know what the original images were, and which eye they came from; we are only aware of the merged view (sometimes called the “cyclopean” image, after the one-eyed monster Cyclops of Greek mythology). However, using specially designed images and stereo glasses, the researchers found that brightness estimation did not need to wait until information from the two eyes was merged; it had already occurred by that point.\n\nThis finding suggests that brightness estimation occurs very early, before information coming from each eye is combined into one visual stream. The combination occurs in a part of the brain’s cortex called V1 (so named because it represents the first stage of visual processing in the cortex). This places a tight constraint on the location of processing; the researchers hypothesize that significant brightness computation most likely takes place in the retina.","The researchers were able to explore this hypothesis by studying blind children who had recently had their sight restored. Sinha runs an effort in India called Project Prakash, whose mission is to treat children suffering from preventable forms of blindness such as congenital cataracts. Many of the treated children go on to participate in scientific studies of visual development, although treatment is not contingent on such participation.\n\n“The prediction was that if brightness estimation is truly an innate mechanism, then right after sight is initiated in children who were congenitally blind, they should fall prey to the simultaneous contrast illusion,” Sinha says.\n\nThat is exactly what the researchers found, in a study of nine children who had cataracts surgically removed between the ages of 8 and 17. All of the children were susceptible to the illusion, in tests done just 24 to 48 hours after their surgical bandages were removed.\n\nThe researchers were able to explore this hypothesis by studying blind children who had recently had their sight restored. Sinha runs an effort in India called Project Prakash, whose mission is to treat children suffering from preventable forms of blindness such as congenital cataracts. Many of the treated children go on to participate in scientific studies of visual development, although treatment is not contingent on such participation.\n\n“The prediction was that if brightness estimation is truly an innate mechanism, then right after sight is initiated in children who were congenitally blind, they should fall prey to the simultaneous contrast illusion,” Sinha says.\n\nThat is exactly what the researchers found, in a study of nine children who had cataracts surgically removed between the ages of 8 and 17. All of the children were susceptible to the illusion, in tests done just 24 to 48 hours after their surgical bandages were removed.\n\nIn a 2015 study, Sinha showed that recently sighted children are also immediately susceptible to two other visual illusions, known as the Müller-Lyer and Ponzo illusions, which involve judging the length of lines based on visual cues.\n\n“The account that emerged from that work also seems to be consistent with the account that’s emerging from the brightness studies. That is, many of the phenomena that we are so quick to ascribe to high level inferential processes may actually be instantiated in some very simple circuit mechanisms of the brain that are innately available,” Sinha says. “These results are contributing to the quest for understanding how our nervous systems solve the complex challenge of perceiving and understanding the world around us.” The researchers were able to explore this hypothesis by studying blind children who had recently had their sight restored. Sinha runs an effort in India called Project Prakash, whose mission is to treat children suffering from preventable forms of blindness such as congenital cataracts. Many of the treated children go on to participate in scientific studies of visual development, although treatment is not contingent on such participation.\n\n“The prediction was that if brightness estimation is truly an innate mechanism, then right after sight is initiated in children who were congenitally blind, they should fall prey to the simultaneous contrast illusion,” Sinha says.\n\nThat is exactly what the researchers found, in a study of nine children who had cataracts surgically removed between the ages of 8 and 17. All of the children were susceptible to the illusion, in tests done just 24 to 48 hours after their surgical bandages were removed.\n\nIn a 2015 study, Sinha showed that recently sighted children are also immediately susceptible to two other visual illusions, known as the Müller-Lyer and Ponzo illusions, which involve judging the length of lines based on visual cues.\n\n“The account that emerged from that work also seems to be consistent with the account that’s emerging from the brightness studies. That is, many of the phenomena that we are so quick to ascribe to high level inferential processes may actually be instantiated in some very simple circuit mechanisms of the brain that are innately available,” Sinha says. “These results are contributing to the quest for understanding how our nervous systems solve the complex challenge of perceiving and understanding the world around us.” The researchers were able to explore this hypothesis by studying blind children who had recently had their sight restored. Sinha runs an effort in India called Project Prakash, whose mission is to treat children suffering from preventable forms of blindness such as congenital cataracts. Many of the treated children go on to participate in scientific studies of visual development, although treatment is not contingent on such participation.\n\n“The prediction was that if brightness estimation is truly an innate mechanism, then right after sight is initiated in children who were congenitally blind, they should fall prey to the simultaneous contrast illusion,” Sinha says.\n\nThat is exactly what the researchers found, in a study of nine children who had cataracts surgically removed between the ages of 8 and 17. All of the children were susceptible to the illusion, in tests done just 24 to 48 hours after their surgical bandages were removed.\n\nIn a 2015 study, Sinha showed that recently sighted children are also immediately susceptible to two other visual illusions, known as the Müller-Lyer and Ponzo illusions, which involve judging the length of lines based on visual cues.\n\n“The account that emerged from that work also seems to be consistent with the account that’s emerging from the brightness studies. That is, many of the phenomena that we are so quick to ascribe to high level inferential processes may actually be instantiated in some very simple circuit mechanisms of the brain that are innately available,” Sinha says. “These results are contributing to the quest for understanding how our nervous systems solve the complex challenge of perceiving and understanding the world around us.”\n\nIn a 2015 study, Sinha showed that recently sighted children are also immediately susceptible to two other visual illusions, known as the Müller-Lyer and Ponzo illusions, which involve judging the length of lines based on visual cues.\n\n“The account that emerged from that work also seems to be consistent with the account that’s emerging from the brightness studies. That is, many of the phenomena that we are so quick to ascribe to high level inferential processes may actually be instantiated in some very simple circuit mechanisms of the brain that are innately available,” Sinha says. “These results are contributing to the quest for understanding how our nervous systems solve the complex challenge of perceiving and understanding the world around us.” The researchers were able to explore this hypothesis by studying blind children who had recently had their sight restored. Sinha runs an effort in India called Project Prakash, whose mission is to treat children suffering from preventable forms of blindness such as congenital cataracts. Many of the treated children go on to participate in scientific studies of visual development, although treatment is not contingent on such participation.\n\n“The prediction was that if brightness estimation is truly an innate mechanism, then right after sight is initiated in children who were congenitally blind, they should fall prey to the simultaneous contrast illusion,” Sinha says.\n\nThat is exactly what the researchers found, in a study of nine children who had cataracts surgically removed between the ages of 8 and 17. All of the children were susceptible to the illusion, in tests done just 24 to 48 hours after their surgical bandages were removed.\n\nIn a 2015 study, Sinha showed that recently sighted children are also immediately susceptible to two other visual illusions, known as the Müller-Lyer and Ponzo illusions, which involve judging the length of lines based on visual cues.",{"credits":12204,"designers":12207,"description":12210},{"text":12205,"title":12206},"\u003Cp>Designed by Aurèle Sack, released by Lineto in 2018/2021. Cyrillic produced in collaboration with Viktoriya Grabowska, Greek with Panos Haratzopoulos. Font engineering and mastering by Alphabet, Berlin.\u003C/p>","Credits",{"text":12208,"title":12209},"\u003Cp>Upon graduating from ECAL/University of Art and Design Lausanne, in 2004, Aurèle Sack (*1977) went to work in Zurich. At NORM, where he had already interned during his studies, he contributed to the elaboration of a corporate typeface for Swiss watchmaker Omega, as well as to developing LL Purple (2006).\u003C/p>\u003Cp>After returning to ECAL in 2010 to teach type design and editorial design, Aurèle became a typographic household name with the publication of his LL Brown (2011), a highly successful and versatile geometric Sans Serif family. He served as a consultant for the redesign of \u003Cem>Vogue Homme International,\u003C/em> bringing in LL Brown and a new custom development, called Turquoise. He followed up with his third typeface named after a colour, LL Grey (released in 2018).\u003C/p>\u003Cp>His type designs won Aurèle the maximum number of three Swiss Design Awards. Focussing on further developing his LL Brown super family, he expanded it to Cyrillic, Greek, Vietnamese, Hebrew and Arabic scripts, and added Narrow, Condensed, and decorative styles. Aurèle has also created many bespoke typefaces, such as for Swissquote, the successful fintech startup, or for Globus, the luxury department stores.\u003C/p>\u003Cp>More recently, he returned to LL Brown to develop it into variable fonts, in the course bringing back the reclining italics which had been part of the inital offering of LL Brown back in 2011. He is currently finalising two typefaces for Lineto, LL Cyan and LL Magenta, very soon to be shared with the public.\u003C/p>","Aurèle Sack",{"text":12211,"title":12212},"\u003Cp>LL Grey is a sans serif born of a French grotesque, with all the rude, cabaret-like stroke endings of the genre. First called AS Gold, the typeface made its debut as part of Aurèle Sack’s diploma project at ECAL in 2004.\u003C/p>\u003Cp>Now distilled and extended into a playful yet highly readable text font, LL Grey has a contemporary, screen-friendly appearance. As with his previous efforts LL Purple and LL Brown, Aurèle used a historic predecessor for formal cues, but brought his signature surgical precision to its rendering. The result is a pleasant widening of the idiosyncratic proportions of 19th century grotesques.\u003C/p>\u003Cp>\u003C/p>","LL Grey",{"387":12203},{"103":12002},{"81":12169},{"allowRouteUpdates":10,"customRouteHash":41,"consideredRouteHash":41},{"octoSubMenu":41,"isOctoOpen":7,"isOctoHidden":7,"isOctoBlurred":7,"isOctoScrolling":7,"isOctoMenuHidden":7,"isOctoBarOpen":7,"isOctoBarHidden":10,"isOctoBuddyOpen":10,"isOctoPadOpen":7,"isOctoGuiHidden":7,"hasOctoTabs":7,"hasOctoSounds":10,"menuLinks":41,"preventClose":7,"menuDirection":12218,"menuBackRouteName":41,"itemSpacing":41,"fontRatio":41,"animationCounter":41,"hasVisibleItems":7,"visibleSubMenuLines":101,"maxSubMenuLines":101,"scrollableLines":101,"scrollableOffset":101,"currentSubMenuComponent":41,"nextSubMenuComponent":41,"currentBuddyComponent":41,"nextBuddyComponent":41,"octoTabsComponent":41,"octoPadComponent":41,"currentBuddyItems":41,"octoBarGroup":41,"octoBarGroupCount":101,"activeSection":41,"activeSectionLock":101,"searchTerm":41,"searchResults":12219,"isSearchActive":7},"vertical",[]]