Exemplary Natural Images Explain CNN Activations Better than State-of-the-Art Feature Visualization
Judy Borowski, Roland S. Zimmermann, Judith Schepers, Robert Geirhos,, Thomas S. A. Wallis, Matthias Bethge, Wieland Brendel

TL;DR
This study compares synthetic feature visualizations and natural images in explaining CNN activations, finding natural images are significantly more informative for humans to predict CNN responses, suggesting a need for improved visualization methods.
Contribution
The paper provides the first psychophysical comparison showing natural images outperform synthetic visualizations in explaining CNN activations across layers.
Findings
Natural images achieve 92% accuracy in predicting CNN activations.
Synthetic images reach only 82% accuracy, less than natural images.
Participants are faster and more confident with natural images.
Abstract
Feature visualizations such as synthetic maximally activating images are a widely used explanation method to better understand the information processing of convolutional neural networks (CNNs). At the same time, there are concerns that these visualizations might not accurately represent CNNs' inner workings. Here, we measure how much extremely activating images help humans to predict CNN activations. Using a well-controlled psychophysical paradigm, we compare the informativeness of synthetic images by Olah et al. (2017) with a simple baseline visualization, namely exemplary natural images that also strongly activate a specific feature map. Given either synthetic or natural reference images, human participants choose which of two query images leads to strong positive activation. The experiments are designed to maximize participants' performance, and are the first to probe intermediate…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Adversarial Robustness in Machine Learning · Cell Image Analysis Techniques
MethodsInterpretability
