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Saliency Suppressed, Semantics Surfaced: Visual Transformations in Neural Networks and the Brain

Authors :
Opiełka, Gustaw
Loke, Jessica
Scholte, Steven
Publication Year :
2024

Abstract

Deep learning algorithms lack human-interpretable accounts of how they transform raw visual input into a robust semantic understanding, which impedes comparisons between different architectures, training objectives, and the human brain. In this work, we take inspiration from neuroscience and employ representational approaches to shed light on how neural networks encode information at low (visual saliency) and high (semantic similarity) levels of abstraction. Moreover, we introduce a custom image dataset where we systematically manipulate salient and semantic information. We find that ResNets are more sensitive to saliency information than ViTs, when trained with object classification objectives. We uncover that networks suppress saliency in early layers, a process enhanced by natural language supervision (CLIP) in ResNets. CLIP also enhances semantic encoding in both architectures. Finally, we show that semantic encoding is a key factor in aligning AI with human visual perception, while saliency suppression is a non-brain-like strategy.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2404.18772
Document Type :
Working Paper