AI RESEARCH

Efficient coding along the visual hierarchy

arXiv CS.CV

ArXi:2605.19155v1 Announce Type: new Biological visual systems images. What learning principles make this possible? We tested whether efficient coding, the idea that neural representations capture the statistical structure of natural inputs, can build a hierarchy of human-aligned visual features from limited data. We developed an unsupervised learning procedure in which each layer of a deep network compresses its inputs onto the dominant modes of variation in natural images, using only local statistics and no labels, tasks, or backpropagation.