TransCODNet: Underwater Transparently Camouflaged Object Detection via RGB and Event Frames Collaboration

IEEE ROBOTICS AND AUTOMATION LETTERS(2024)

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摘要
Underwater transparently camouflaged organisms can be perfectly "invisible" in the ocean to avoid the capture of predators. Due to the blurry contour boundaries of their bodies, obtaining their boundary features and determining their specific positions are challenging for detection tasks. To address this issue, first, we propose a large-scale underwater transparently camouflaged object dataset, termed Aqua-Eye, which is obtained from event data and contains five types of underwater transparent organisms, with a total of 6497 annotated images. Second, to evaluate the effectiveness of this dataset, we propose a simple and effective detection network termed underwater Transparently Camouflaged Object Detection Network (TransCODNet), which can obtain local features and specific locations of targets, providing a better detection method for underwater transparently camouflaged organisms. In this letter, we performed ablation study and nine representative deep learning algorithms were evaluated based on the dataset. Finally, experiments show that the detection accuracy of this algorithm is 84.7%, which is superior to mainstream object detection algorithms, proving the effectiveness of the proposed method.
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关键词
Organisms,Object detection,Feature extraction,Cameras,Lighting,Visualization,Jellyfish,Deep learning methods,data sets for robotic vision,object detection,event camera
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