CVJan 20, 2025

Generating visual explanations from deep networks using implicit neural representations

arXiv:2501.11784v12 citationsh-index: 2WACV
Originality Incremental advance
AI Analysis

This work addresses the need for interpretable AI in responsible applications, though it is incremental as it builds on existing attribution techniques like extremal perturbations.

The authors tackled the problem of explaining deep learning models by using implicit neural representations (INRs) to generate visual attribution masks, showing that their method produces well-behaved masks with respect to area constraints and can identify multiple non-overlapping relevant areas in images.

Explaining deep learning models in a way that humans can easily understand is essential for responsible artificial intelligence applications. Attribution methods constitute an important area of explainable deep learning. The attribution problem involves finding parts of the network's input that are the most responsible for the model's output. In this work, we demonstrate that implicit neural representations (INRs) constitute a good framework for generating visual explanations. Firstly, we utilize coordinate-based implicit networks to reformulate and extend the extremal perturbations technique and generate attribution masks. Experimental results confirm the usefulness of our method. For instance, by proper conditioning of the implicit network, we obtain attribution masks that are well-behaved with respect to the imposed area constraints. Secondly, we present an iterative INR-based method that can be used to generate multiple non-overlapping attribution masks for the same image. We depict that a deep learning model may associate the image label with both the appearance of the object of interest as well as with areas and textures usually accompanying the object. Our study demonstrates that implicit networks are well-suited for the generation of attribution masks and can provide interesting insights about the performance of deep learning models.

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