Camouflaged object detection (COD) aims to detect/segment camouflaged objects embedded in the environment, which has attracted increasing attention over the past decades. Although several COD methods have been developed, they still suffer from unsatisfactory performance due to the intrinsic similarities between the foreground objects and background surroundings. In this paper, we propose a novel Feature Aggregation and Propagation Network (FAP-Net) for camouflaged object detection. Specifically, we propose a Boundary Guidance Module (BGM) to explicitly model the boundary characteristic, which can provide boundary-enhanced features to boost the COD performance. To capture the scale variations of the camouflaged objects, we propose a Multi-scale Feature Aggregation Module (MFAM) to characterize the multi-scale information from each layer and obtain the aggregated feature representations. Furthermore, we propose a Cross-level Fusion and Propagation Module (CFPM). In the CFPM, the feature fusion part can effectively integrate the features from adjacent layers to exploit the cross-level correlations, and the feature propagation part can transmit valuable context information from the encoder to the decoder network via a gate unit. Finally, we formulate a unified and end-to-end trainable framework where cross-level features can be effectively fused and propagated for capturing rich context information. Extensive experiments on three benchmark camouflaged datasets demonstrate that our FAP-Net outperforms other state-of-the-art COD models. Moreover, our model can be extended to the polyp segmentation task, and the comparison results further validate the effectiveness of the proposed model in segmenting polyps. The source code and results will be released at https://github.com/taozh2017/FAPNet.
翻译:COD 虽然已经开发了几种COD方法,但由于地表天体和背景周围的内在相似性,它们的表现仍然不尽如人意。在本文件中,我们提议建立一个新的地貌聚合和推进网络(FAP-Net)以进行伪装的物体探测。具体地说,我们提议一个边界指导模块(BGM)以明确模拟边界特征,该模块可以提供边界强化功能,以提升COD的性能。为了捕捉伪装天体的大小变异,我们提议了一个多级地貌聚合模块(MFAM),以描述每个层的多级资料和背景周围的背景。此外,我们提议建立一个跨级的FAP和推进模型(FAP-Net)。在CFPM中,特征组合模型可以有效地整合相邻层的特征,以便利用跨级的多级相交点关系,而特性传播部分则可以传输从编码的网络的大小变异性格信息。我们提出的COFA-ROD Serveyal 模型可以通过门级数据库有效地显示我们Cal decodel 和Flational IMal 数据级的模型。我们提出的Cal-deal-degradustrational degradudustrational drodustrational drodustrational rodustrational rodustral exal lautal lautal lautal lautaldaldaldal lad ladal ladaldald thesaldaldaldaldaldaldaldaldaldaldaldald thes lad ladald lad lad lax lad lad lad lad lad ladaldaldaldaldaldaldaldaldaldald ladaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldaldal