Camouflaged object detection (COD) is a challenging task due to the low boundary contrast between the object and its surroundings. In addition, the appearance of camouflaged objects varies significantly, e.g., object size and shape, aggravating the difficulties of accurate COD. In this paper, we propose a novel Context-aware Cross-level Fusion Network (C2F-Net) to address the challenging COD task. Specifically, we propose an Attention-induced Cross-level Fusion Module (ACFM) to integrate the multi-level features with informative attention coefficients. The fused features are then fed to the proposed Dual-branch Global Context Module (DGCM), which yields multi-scale feature representations for exploiting rich global context information. In C2F-Net, the two modules are conducted on high-level features using a cascaded manner. Extensive experiments on three widely used benchmark datasets demonstrate that our C2F-Net is an effective COD model and outperforms state-of-the-art models remarkably. Our code is publicly available at: https://github.com/thograce/C2FNet.
翻译:由于物体与周围环境之间的边界差异较低,探测悬浮物体是一项具有挑战性的任务。此外,伪装物体的外观差异很大,例如物体大小和形状,使准确的COD更加困难。在本文件中,我们提议建立一个新的环境觉悟跨层融合网络(C2F-Net),以处理具有挑战性的COD任务。具体地说,我们提议建立一个关注引发的跨层次融合模块(ACFM),将多层次特征与信息关注系数相结合。然后,将引信特性输入拟议的双管全球背景模块(DGCM),该模块产生利用丰富的全球背景信息的多尺度特征表示。在C2F-Net中,两个模块是用累进式方式对高层次特征进行的。对三种广泛使用的基准数据集的广泛实验表明,我们的C2F-Net是一种有效的COD模型,并且超越了艺术的状态模型。我们的代码在https://github.com/thocrace/C2FNet上可以公开查阅。