4.7 Article

But Still It Moves: Static Image Statistics Underlie How We See Motion

期刊

JOURNAL OF NEUROSCIENCE
卷 40, 期 12, 页码 2538-2552

出版社

SOC NEUROSCIENCE
DOI: 10.1523/JNEUROSCI.2760-19.2020

关键词

Bayes; direction; motion perception; natural images; neural network; speed

资金

  1. Leverhulme Trust [ECF-2017-573]
  2. Isaac Newton Trust [17.08]
  3. Wellcome Trust [095183/Z/10/Z]

向作者/读者索取更多资源

Seeing movement promotes survival. It results from an uncertain interplay between evolution and experience, making it hard to isolate the drivers of computational architectures found in brains. Here we seek insight into motion perception using a neural network (MotionNet) trained on moving images to classify velocity. The network recapitulates key properties of motion direction and speed processing in biological brains, and we use it to derive, and test, understanding of motion (mis)perception at the computational, neural, and perceptual levels. We show that diverse motion characteristics are largely explained by the statistical structure of natural images, rather than motion perse. First, we show how neural and perceptual biases for particular motion directions can result from the orientation structure of natural images. Second, we demonstrate an interrelation between speed and direction preferences in (macaque) MT neurons that can be explained by image autocorrelation. Third, we show that natural image statistics mean that speed and image contrast are related quantities. Finally, using behavioral tests (humans, both sexes), we show that it is knowledge of the speed-contrast association that accounts for motion illusions, rather than the distribution of movements in the environment (the slow world prior) as premised by Bayesian accounts. Together, this provides an exposition of motion speed and direction estimation, and produces concrete predictions for future neurophysiological experiments. More broadly, we demonstrate the conceptual value of marrying artificial systems with biological characterization, moving beyond black box reproduction of an architecture to advance understanding of complex systems, such as the brain.

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