FMNet: Frequency-Assisted Mamba-Like Linear Attention Network for Camouflaged Object Detection
This addresses the problem of detecting camouflaged objects in images for computer vision applications, representing an incremental advance by integrating frequency and spatial features.
The paper tackles camouflaged object detection by proposing FMNet, which uses frequency-domain learning to capture global features efficiently, outperforming existing methods on multiple datasets with improved performance and reduced computational costs.
Camouflaged Object Detection (COD) is challenging due to the strong similarity between camouflaged objects and their surroundings, which complicates identification. Existing methods mainly rely on spatial local features, failing to capture global information, while Transformers increase computational costs. To address this, the Frequency-Assisted Mamba-Like Linear Attention Network (FMNet) is proposed, which leverages frequency-domain learning to efficiently capture global features and mitigate ambiguity between objects and the background. FMNet introduces the Multi-Scale Frequency-Assisted Mamba-Like Linear Attention (MFM) module, integrating frequency and spatial features through a multi-scale structure to handle scale variations while reducing computational complexity. Additionally, the Pyramidal Frequency Attention Extraction (PFAE) module and the Frequency Reverse Decoder (FRD) enhance semantics and reconstruct features. Experimental results demonstrate that FMNet outperforms existing methods on multiple COD datasets, showcasing its advantages in both performance and efficiency. Code available at https://github.com/Chranos/FMNet.