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PhD
Justus Liebig University Giessen
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Schedule
Wednesday, October 27, 2021
2:00 PM Europe/London
Seminar location
No geocoded details are available for this content yet.
Format
Past Seminar
Recording
Not available
Host
CompCogSci Darmstadt
Duration
70.00 minutes
Seminar location
No geocoded details are available for this content yet.
Materials with complex appearances, like textiles and foodstuffs, pose challenges for conventional theories of vision. How does the brain learn to see properties of the world—like the glossiness of a surface—that cannot be measured by any other senses? Recent advances in unsupervised deep learning may help shed light on material perception. I will show how an unsupervised deep neural network trained on an artificial environment of surfaces that have different shapes, materials and lighting, spontaneously comes to encode those factors in its internal representations. Most strikingly, the model makes patterns of errors in its perception of material that follow, on an image-by-image basis, the patterns of errors made by human observers. Unsupervised deep learning may provide a coherent framework for how many perceptual dimensions form, in material perception and beyond.
Kate Storrs
PhD
Justus Liebig University Giessen
Contact & Resources
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