Enhanced Thermal-RGB Fusion for Robust Object Detection

CVPR Workshops(2023)

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摘要
Thermal imaging has seen rapid development in the last few years due to its robustness in different weather and lighting conditions and its reduced production cost. In this paper, we study the performance of different RGB-Thermal fusion methods in the task of object detection, and introduce a new RGB-Thermal fusion approach that enhances the performance by up to 9% using a sigmoid-activated gating mechanism for early fusion. We conduct our experiments on an enhanced version of the City Scene RGB-Thermal MOT Dataset where we register the RGB and corresponding thermal images in order to conduct fusion experiments. Finally, we benchmark the speed of our proposed fusion method and show that it adds negligible overhead to the model processing time. Our work would be useful for autonomous systems and any multi-model machine vision system. The improved version of the dataset, our trained models, and source code are available at https://github.com/wassimea/rgb-thermalfusion.
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关键词
city scene RGB-thermal MOT dataset,early fusion,enhanced thermal-RGB fusion,fusion experiments,fusion method,lighting conditions,reduced production cost,RGB-thermal fusion approach,RGB-thermal fusion methods,robust object detection,sigmoid-activated gating mechanism,thermal images,thermal imaging,weather conditions
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