Abstract
This paper introduces deep gradient network (DGNet), a novel deep framework that exploits object gradient supervision for camouflaged object detection (COD). It decouples the task into two connected branches, i.e., a context and a texture encoder. The essential connection is the gradient-induced transition, representing a soft grouping between context and texture features. Benefiting from the simple but efficient framework, DGNet outperforms existing state-of-the-art COD models by a large margin. Notably, our efficient version, DGNet-S, runs in real-time (80 fps) and achieves comparable results to the cutting-edge model JCSOD-CVPR21 with only 6.82% parameters. The application results also show that the proposed DGNet performs well in the polyp segmentation, defect detection, and transparent object segmentation tasks. The code will be made available at https://github.com/GewelsJI/DGNet.
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CITATION STYLE
Ji, G. P., Fan, D. P., Chou, Y. C., Dai, D., Liniger, A., & Van Gool, L. (2023). Deep Gradient Learning for Efficient Camouflaged Object Detection. Machine Intelligence Research, 20(1), 92–108. https://doi.org/10.1007/s11633-022-1365-9
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