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Boundary guidance network for camouflage object detection

机译:伪装对象检测的边界指导网络

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Camouflage object detection (COD) aims to detect camouflaged objects hidden in the background region in an image. The difficulty of COD lies in the fact that camouflaged objects are often accompanied with weak bound-aries, low contrast, and similar patterns to the background. Although various methods have been proposed to ad -dress these challenges, they still suffer from coarse object boundaries. In this work, we design a novel boundary guidance network for COD, which follows a two-step framework: localization and refinement. Firstly, an Initial Localization Decoder is proposed to capture multi-scale cues by embedding a Hierarchical-Split Convolution block. After obtained the coarse localization of the camouflaged object, we further propose a Residual Refinement Decoder to fix the missing object parts and boundary details progressively. Each of the proposed decoder consists of a region branch and a boundary branch for object detection and boundary detection respectively. To suffi-ciently leverage their complementary features, we design a novel Boundary-Guide-Region module. Benefiting from the guidance of the boundary feature, the region branch can focus on the inside parts of the boundary for residual learning, thus leads to more accurate detection. Extensive experimental results on four benchmark datasets demonstrate that our method outperforms existing state-of-the-art algorithms in both object accuracy and boundary accuracy with real-time speed. (c) 2021 Elsevier B.V. All rights reserved.
机译:伪装对象检测(COD)旨在检测隐藏在图像中的背景区域中的伪装对象。 COD的难度在于伪装的物体通常伴随着疲软的界限,低对比度和背景的类似模式。虽然已经提出了各种方法来广告这些挑战,但它们仍然遭受粗糙的物体边界。在这项工作中,我们设计了一种用于COD的新建边界指导网络,其遵循两步框架:本地化和精致。首先,提出初始定位解码器来捕获多尺度提示来捕获分层分割卷积块。在获得伪装对象的粗糙定位之后,我们进一步提出了一种残留的细化解码器,以逐渐地固定缺失的物体部分和边界细节。每个提议的解码器分别由区域分支和用于对象检测和边界检测的边界分支组成。为了利用他们的互补特征,我们设计了一种新颖的边界区域模块。受益于边界特征的指导,区域分支可以专注于残余学习边界的内部部分,从而导致更准确的检测。四个基准数据集上的广泛实验结果表明,我们的方法以实时速度为目标精度和边界精度优于现有的现有最先进的算法。 (c)2021 elestvier b.v.保留所有权利。

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