Publication | Closed Access
Channel Augmented Joint Learning for Visible-Infrared Recognition
319
Citations
54
References
2021
Year
EngineeringMachine LearningPowerful ChannelImage ClassificationImage AnalysisData SciencePattern RecognitionFusion LearningVideo TransformerVision RecognitionData AugmentationMachine VisionFeature LearningComputer ScienceDeep LearningOptical Image RecognitionComputer VisionAugmentation OperationsJoint Learning
This paper introduces a powerful channel augmented joint learning strategy for the visible-infrared recognition problem. For data augmentation, most existing methods directly adopt the standard operations designed for single-modality visible images, and thus do not fully consider the imagery properties in visible to infrared matching. Our basic idea is to homogenously generate color-irrelevant images by randomly exchanging the color channels. It can be seamlessly integrated into existing augmentation operations without modifying the network, consistently improving the robustness against color variations. Incorporated with a random erasing strategy, it further greatly enriches the diversity by simulating random occlusions. For cross-modality metric learning, we design an enhanced channel-mixed learning strategy to simultaneously handle the intra-and cross-modality variations with squared difference for stronger discriminability. Besides, a channel-augmented joint learning strategy is further developed to explicitly optimize the outputs of augmented images. Extensive experiments with insightful analysis on two visible-infrared recognition tasks show that the proposed strategies consistently improve the accuracy. Without auxiliary information, it improves the state-of-the-art Rank-1/mAP by 14.59%/13.00% on the large-scale SYSU-MM01 dataset.
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