Publication | Closed Access
CamoFormer: Masked Separable Attention for Camouflaged Object Detection
88
Citations
66
References
2024
Year
Scene AnalysisMachine VisionImage AnalysisEngineeringPattern RecognitionObject DetectionObject RecognitionEye TrackingComputational ImagingComputer ScienceSeparable AttentionDeep LearningVideo TransformerVision RecognitionObject Detection BenchmarksComputer Vision
How to identify and segment camouflaged objects from the background is challenging. Inspired by the multi-head self-attention in Transformers, we present a simple masked separable attention (MSA) for camouflaged object detection. We first separate the multi-head self-attention into three parts, which are responsible for distinguishing the camouflaged objects from the background using different mask strategies. Furthermore, we propose to capture high-resolution semantic representations progressively based on a simple top-down decoder with the proposed MSA to attain precise segmentation results. These structures plus a backbone encoder form a new model, dubbed CamoFormer. Extensive experiments show that CamoFormer achieves new state-of-the-art performance on three widely-used camouflaged object detection benchmarks. To better evaluate the performance of the proposed CamoFormer around the border regions, we propose to use two new metrics, i.e., BR-M and BR-F. There are on average ∼ 5% relative improvements over previous methods in terms of S-measure and weighted F-measure.
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