分割,放大和重申:检测伪装对象的艰难方式

Qi Jia, Shuilian Yao, Yu Liu, Xin Fan, Risheng Liu, Zhongxuan Luo
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引用次数: 45

摘要

从高度相似的环境中准确地发现伪装的物体是一项挑战。现有方法主要利用单阶段检测方式,忽略具有低分辨率精细边缘的小物体比大物体需要更多的操作。为了解决伪装对象检测(COD)问题,我们受到人类注意力和粗到精的检测策略的启发,提出了一个迭代的改进框架,称为分段,放大和重申,它以多阶段检测的方式集成了分段,放大和重申。具体来说,我们设计了一种新的判别掩模,使模型同时关注固定区域和边缘区域。此外,我们利用基于注意力的采样器在不需要放大图像尺寸的情况下逐步放大目标区域。大量的实验表明,我们的分段法比其他最先进的方法取得了显著和持续的改进。特别是在小型伪装物体的平均超标准评价指标上,我们比两种竞争方法分别高出7.4%和20.0%。其他的研究为Seg-MaR提供了更多有希望的见解,包括它在判别掩码上的有效性以及它在其他网络架构上的推广。代码可从https://github.com/dlut-dimt/SegMaR获得。
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Segment, Magnify and Reiterate: Detecting Camouflaged Objects the Hard Way
It is challenging to accurately detect camouflaged objects from their highly similar surroundings. Existing methods mainly leverage a single-stage detection fashion, while neglecting small objects with low-resolution fine edges requires more operations than the larger ones. To tackle camouflaged object detection (COD), we are inspired by humans attention coupled with the coarse-to-fine detection strategy, and thereby propose an iterative refinement framework, coined SegMaR, which integrates Segment, Magnify and Reiterate in a multi-stage detection fashion. Specifically, we design a new discriminative mask which makes the model attend on the fixation and edge regions. In addition, we leverage an attention-based sampler to magnify the object region progressively with no need of enlarging the image size. Extensive experiments show our SegMaR achieves remarkable and consistent improvements over other state-of-the-art methods. Especially, we surpass two competitive methods 7.4% and 20.0% respectively in average over standard evaluation metrics on small camouflaged objects. Additional studies provide more promising insights into Seg-MaR, including its effectiveness on the discriminative mask and its generalization to other network architectures. Code is available at https://github.com/dlut-dimt/SegMaR.
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