Reducing Texture Bias of Deep Neural Networks via Edge Enhancing Diffusion
CoRR(2024)
摘要
Convolutional neural networks (CNNs) for image processing tend to focus on
localized texture patterns, commonly referred to as texture bias. While most of
the previous works in the literature focus on the task of image classification,
we go beyond this and study the texture bias of CNNs in semantic segmentation.
In this work, we propose to train CNNs on pre-processed images with less
texture to reduce the texture bias. Therein, the challenge is to suppress image
texture while preserving shape information. To this end, we utilize edge
enhancing diffusion (EED), an anisotropic image diffusion method initially
introduced for image compression, to create texture reduced duplicates of
existing datasets. Extensive numerical studies are performed with both CNNs and
vision transformer models trained on original data and EED-processed data from
the Cityscapes dataset and the CARLA driving simulator. We observe strong
texture-dependence of CNNs and moderate texture-dependence of transformers.
Training CNNs on EED-processed images enables the models to become completely
ignorant with respect to texture, demonstrating resilience with respect to
texture re-introduction to any degree. Additionally we analyze the performance
reduction in depth on a level of connected components in the semantic
segmentation and study the influence of EED pre-processing on domain
generalization as well as adversarial robustness.
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