Litcius/Paper detail

Initialization Noise in Image Gradients and Saliency Maps

Ann-Christin Woerl, Jan Disselhoff, Michael Wand

202310 citationsDOI

Abstract

In this paper, we examine gradients of logits of image classification CNNs by input pixel values. We observe that these fluctuate considerably with training randomness, such as the random initialization of the networks. We extend our study to gradients of intermediate layers, obtained via GradCAM, as well as popular network saliency estimators such as DeepLIFT, SHAP, LIME, Integrated Gradients, and SmoothGrad. While empirical noise levels vary, qualitatively different attributions to image features are still possible with all of these, which comes with implications for interpreting such attributions, in particular when seeking data-driven explanations of the phenomenon generating the data. Finally, we demonstrate that the observed artefacts can be removed by marginalization over the initialization distribution by simple stochastic integration.

Topics & Concepts

InitializationRandomnessNoise (video)Computer sciencePixelImage (mathematics)EstimatorArtificial intelligencePattern recognition (psychology)AlgorithmComputer visionMathematicsStatisticsProgramming languageExplainable Artificial Intelligence (XAI)Cell Image Analysis TechniquesVisual Attention and Saliency Detection