A Comparison of Deep Saliency Map Generators on Multispectral Data in Object Detection
Jens Bayer, David M\"unch, Michael Arens

TL;DR
This paper compares deep saliency map generators on multispectral data for object detection, revealing differences across spectra and demonstrating improved detection and interpretability with combined infrared and visual data.
Contribution
It systematically evaluates saliency map methods on multispectral object detection and explores how combined spectra enhance model focus and explainability.
Findings
Differences observed between infrared and visual activation maps.
Combined infrared and visual data improve detection accuracy.
Saliency maps become more focused with multispectral training.
Abstract
Deep neural networks, especially convolutional deep neural networks, are state-of-the-art methods to classify, segment or even generate images, movies, or sounds. However, these methods lack of a good semantic understanding of what happens internally. The question, why a COVID-19 detector has classified a stack of lung-ct images as positive, is sometimes more interesting than the overall specificity and sensitivity. Especially when human domain expert knowledge disagrees with the given output. This way, human domain experts could also be advised to reconsider their choice, regarding the information pointed out by the system. In addition, the deep learning model can be controlled, and a present dataset bias can be found. Currently, most explainable AI methods in the computer vision domain are purely used on image classification, where the images are ordinary images in the visible…
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