Camouflaged object detection (COD) aims to identify the objects that conceal themselves in natural scenes. Accurate COD suffers from a number of challenges associated with low boundary contrast and the large variation of object appearances, e.g., object size and shape. To address these challenges, we propose a novel Context-aware Cross-level Fusion Network (C2F-Net), which fuses context-aware cross-level features for accurately identifying camouflaged objects. Specifically, we compute informative attention coefficients from multi-level features with our Attention-induced Cross-level Fusion Module (ACFM), which further integrates the features under the guidance of attention coefficients. We then propose a Dual-branch Global Context Module (DGCM) to refine the fused features for informative feature representations by exploiting rich global context information. Multiple ACFMs and DGCMs are integrated in a cascaded manner for generating a coarse prediction from high-level features. The coarse prediction acts as an attention map to refine the low-level features before passing them to our Camouflage Inference Module (CIM) to generate the final prediction. We perform extensive experiments on three widely used benchmark datasets and compare C2F-Net with state-of-the-art (SOTA) models. The results show that C2F-Net is an effective COD model and outperforms SOTA models remarkably. Further, an evaluation on polyp segmentation datasets demonstrates the promising potentials of our C2F-Net in COD downstream applications. Our code is publicly available at: https://github.com/Ben57882/C2FNet-TSCVT.
翻译:为应对这些挑战,我们提议建立一个全新的环境觉悟跨层熔化网络(C2F-Net),将环境觉悟跨层的跨层特性结合起来,以便准确识别伪装的物体。具体地说,我们计算出多层次特征的注意系数,与我们关注的跨层熔化模块(ACFM)相匹配,该模块进一步整合了在关注值系数指导下的功能。然后我们提议一个双层全球背景模块(DGCM),以便通过利用丰富的全球背景信息来完善信息化特征表达的连接特征。多级ACFM和DGCMs以连锁方式结合,以便从高层次特征中得出粗微的预测。 粗度预测模型作为关注度图,在将低层次的多层次的多层次复合模块(CFM)传送到我们的CUD2 在线应用系数(CIM) 指导下的功能。我们随后提议了一个双层全球背景环境模块(DGCCCC-F) 来改进信息化特征表达功能化特征的组合特征。我们在C-C-FSO-C-C-C-C-C-C-SODF 上进行三州数据测试。