Abstract:
Camouflaged Object Detection (COD) aims to detect objects well hidden in the environment. The main challenges of COD come from the high degree of texture and color overla...Show MoreMetadata
Abstract:
Camouflaged Object Detection (COD) aims to detect objects well hidden in the environment. The main challenges of COD come from the high degree of texture and color overlapping between the objects and their surroundings. Inspired by that humans tend to go closer to the object and magnify it to recognize ambiguous objects more clearly, we propose a novel three-stage architecture called Search-Amplify-Recognize and design a network SARNet to address the challenges. Specifically, In the Search part, we utilize an attention-based backbone to locate the object. In the Amplify part, to obtain rich searched features and fine segmentation, we design Object Area Amplification modules (OAA) to perform cross-level and adjacent-level feature fusion and amplifying operations on feature maps. Besides, the OAA can be regarded as a simple and effective plug-in module to integrate and amplify the feature maps. The main components of the Recognize part are the Figure-Ground Conversion modules (FGC). The FGC modules alternately pay attention to the foreground and background to precisely separate the highly similar foreground and background. Extensive experiments on benchmark datasets show that our model outperforms other SOTA methods not only on COD tasks but also in COD downstream tasks, such as polyp segmentation and video camouflaged object detection. Source codes will be available at https://github.com/Haozhe-Xing/SARNet.
Published in: IEEE Transactions on Circuits and Systems for Video Technology ( Volume: 33, Issue: 10, October 2023)
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- IEEE Keywords
- Index Terms
- Object Detection ,
- Camouflaged Object ,
- Camouflaged Object Detection ,
- Feature Maps ,
- Extensive Experiments ,
- Final Segmentation ,
- Simple Modules ,
- SOTA Methods ,
- Image Resolution ,
- Convolutional Layers ,
- Input Image ,
- Mean Absolute Error ,
- Batch Normalization ,
- Large Margin ,
- Segmentation Task ,
- Largest Dataset ,
- Bilinear Interpolation ,
- ReLU Activation Function ,
- Salient Object Detection ,
- Up-sampling Operation ,
- Great Application Value ,
- Results In Row ,
- Salient Object ,
- Edge Area ,
- Normalization Activation ,
- Rough Location ,
- Bicubic Interpolation ,
- Deep Learning
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Object Detection ,
- Camouflaged Object ,
- Camouflaged Object Detection ,
- Feature Maps ,
- Extensive Experiments ,
- Final Segmentation ,
- Simple Modules ,
- SOTA Methods ,
- Image Resolution ,
- Convolutional Layers ,
- Input Image ,
- Mean Absolute Error ,
- Batch Normalization ,
- Large Margin ,
- Segmentation Task ,
- Largest Dataset ,
- Bilinear Interpolation ,
- ReLU Activation Function ,
- Salient Object Detection ,
- Up-sampling Operation ,
- Great Application Value ,
- Results In Row ,
- Salient Object ,
- Edge Area ,
- Normalization Activation ,
- Rough Location ,
- Bicubic Interpolation ,
- Deep Learning
- Author Keywords