Unlocking Feature Visualization for Deep Network with MAgnitude Constrained Optimization
–Neural Information Processing Systems
Feature visualization has gained significant popularity as an explainability method, particularly after the influential work by Olah et al. in 2017. Despite its success, its widespread adoption has been limited due to issues in scaling to deeper neural networks and the reliance on tricks to generate interpretable images. Here, we describe MACO, a simple approach to address these shortcomings. It consists in optimizing solely an image's phase spectrum while keeping its magnitude constant to ensure that the generated explanations lie in the space of natural images.
Neural Information Processing Systems
Dec-26-2025, 03:46:15 GMT
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