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Papers/Fast Camouflaged Object Detection via Edge-based Reversibl...

Fast Camouflaged Object Detection via Edge-based Reversible Re-calibration Network

Ge-Peng Ji, Lei Zhu, Mingchen Zhuge, Keren Fu

2021-11-05Camouflaged Object SegmentationSemantic SegmentationMedical Image Segmentationobject-detectionObject DetectionImage Segmentation
PaperPDFCode(official)

Abstract

Camouflaged Object Detection (COD) aims to detect objects with similar patterns (e.g., texture, intensity, colour, etc) to their surroundings, and recently has attracted growing research interest. As camouflaged objects often present very ambiguous boundaries, how to determine object locations as well as their weak boundaries is challenging and also the key to this task. Inspired by the biological visual perception process when a human observer discovers camouflaged objects, this paper proposes a novel edge-based reversible re-calibration network called ERRNet. Our model is characterized by two innovative designs, namely Selective Edge Aggregation (SEA) and Reversible Re-calibration Unit (RRU), which aim to model the visual perception behaviour and achieve effective edge prior and cross-comparison between potential camouflaged regions and background. More importantly, RRU incorporates diverse priors with more comprehensive information comparing to existing COD models. Experimental results show that ERRNet outperforms existing cutting-edge baselines on three COD datasets and five medical image segmentation datasets. Especially, compared with the existing top-1 model SINet, ERRNet significantly improves the performance by $\sim$6% (mean E-measure) with notably high speed (79.3 FPS), showing that ERRNet could be a general and robust solution for the COD task.

Results

TaskDatasetMetricValueModel
Object DetectionPCOD_1200S-Measure0.833ERRNet
3DPCOD_1200S-Measure0.833ERRNet
Camouflaged Object SegmentationPCOD_1200S-Measure0.833ERRNet
Object SegmentationPCOD_1200S-Measure0.833ERRNet
2D ClassificationPCOD_1200S-Measure0.833ERRNet
2D Object DetectionPCOD_1200S-Measure0.833ERRNet
16kPCOD_1200S-Measure0.833ERRNet

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