Conditional Polarization Guidance for Camouflaged Object Detection
QIfan Zhang, Hao Wang, Xiangrong Qin, Ruijie Li

TL;DR
This paper introduces CPGNet, a novel RGB-polarization framework with conditional guidance and frequency refinement, significantly improving camouflaged object detection by explicitly leveraging polarization cues.
Contribution
The paper proposes a lightweight polarization interaction module and a conditional guidance mechanism to better utilize polarization cues for camouflaged object detection.
Findings
CPGNet outperforms state-of-the-art methods on polarization datasets.
The polarization edge-guided frequency refinement enhances high-frequency details.
The iterative feedback decoder improves coarse-to-fine camouflage prediction.
Abstract
Camouflaged object detection (COD) aims to identify targets that are highly blended with their backgrounds. Recent works have shown that the optical characteristics of polarization cues play a significant role in improving camouflaged object detection. However, most existing polarization-based approaches depend on complex visual encoders and fusion mechanisms, leading to increased model complexity and computational overhead, while failing to fully explore how polarization can explicitly guide hierarchical RGB representation learning. To address these limitations, we propose CPGNet, an asymmetric RGB-polarization framework that introduces a conditional polarization guidance mechanism to explicitly regulate RGB feature learning for camouflaged object detection. Specifically, we design a lightweight polarization interaction module that jointly models these complementary cues and generates…
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