DooDLeNet: Double DeepLab Enhanced Feature Fusion for Thermal-color Semantic Segmentation

IEEE Conference on Computer Vision and Pattern Recognition(2022)

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摘要
In this paper we present a new approach for feature fusion between RGB and LWIR Thermal images for the task of semantic segmentation for driving perception. We propose DooDLeNet, a double DeepLab architecture with specialized encoder-decoders for thermal and color modalities and a shared decoder for final segmentation. We combine two strategies for feature fusion: confidence weighting and correlation weighting. We report state-of-the-art mean IoU results on the MF dataset [1].
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关键词
correlation weighting,DooDLeNet,double DeepLab enhanced feature fusion,driving perception,double DeepLab architecture,specialized encoder-decoders,thermal color modalities,confidence weighting,shared decoding,thermal-color semantic segmentation,RGB,LWIR thermal imaging,MF dataset,mean IoU
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