Acta Photonica Sinica, Volume. 53, Issue 8, 0810002(2024)
Camouflage Object Detection Based on Feature Fusion and Edge Detection
Camouflaged Object Detection (COD) holds significant research and application value in various fields. The ability of deep learning is pushing the performance of target detection algorithms to new heights. Designing a network that effectively integrates features of different layer sizes and eliminates background noise while preserving detailed information presents the main challenges in this field. We propose Feature Fusion and Edge Detection Net (F2-EDNet), a camouflaged object segmentation model based on feature fusion and edge detection.ConvNeXt is used as the backbone to extract multi-scale contextual features. The extensiveness and diversity of features are then enhanced through two approaches. The first approach involves using the Feature Enhancement Module (FEM) to refine and downsize the multi-scale contextual features. The second approach introduces an auxiliary task to fuse cross-layer features through the Cross-layer Guided Edge prediction Branch (CGEB). The process extracts edge features and predicts edge information to increase feature diversity. Additionally, the Multiscale Feature Aggregation Module (MFAM) improves feature fusion by capturing and fusing information about interlayer differences between edge features and contextual features through multiscale attention and feature cascading. The model's prediction results are subjected to deep supervision to obtain the final target detection results. To validate the performance of the proposed model, it is compared qualitatively and quantitatively with eight camouflage object models from the past three years on three publicly available datasets. This comparison aims to observe its detection accuracy. Additionally, a model efficiency analysis is conducted by comparing it with five open-source models. Finally, the module's effectiveness is verified through ablation experiments to determine the optimal structure.The results of a quantitative experiment indicate that on the CAMO dataset, the S-measure, F-measure, E-measure correlation and mean absolute error metrics for F2-EDNet are optimal. On the COD10K dataset, the structural similarity metric indicates that the proposed algorithm is optimal, while the mean precision and recall, E-measure and
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Cheng DING, Xueqiong BAI, Yong LV, Yang LIU, Chunhui NIU, Xin LIU. Camouflage Object Detection Based on Feature Fusion and Edge Detection[J]. Acta Photonica Sinica, 2024, 53(8): 0810002
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Received: Jan. 18, 2024
Accepted: Mar. 27, 2024
Published Online: Oct. 15, 2024
The Author Email: BAI Xueqiong (bxq@bistu.edu.cn), LV Yong (lvyong@bistu.edu.cn)