Reliable Explainability of Deep Learning Spatial-Spectral Classifiers for Improved Semantic Segmentation in Autonomous Driving
Journal:
arXiv
Published Date:
Feb 20, 2025
Abstract
Integrating hyperspectral imagery (HSI) with deep neural networks (DNNs) can
strengthen the accuracy of intelligent vision systems by combining spectral and
spatial information, which is useful for tasks like semantic segmentation in
autonomous driving. To advance research in such safety-critical systems,
determining the precise contribution of spectral information to complex DNNs'
output is needed. To address this, several saliency methods, such as class
activation maps (CAM), have been proposed primarily for image classification.
However, recent studies have raised concerns regarding their reliability. In
this paper, we address their limitations and propose an alternative approach by
leveraging the data provided by activations and weights from relevant DNN
layers to better capture the relationship between input features and
predictions. The study aims to assess the superior performance of HSI compared
to 3-channel and single-channel DNNs. We also address the influence of spectral
signature normalization for enhancing DNN robustness in real-world driving
conditions.