论文标题

深入了解伪装的对象检测

Towards Deeper Understanding of Camouflaged Object Detection

论文作者

Lv, Yunqiu, Zhang, Jing, Dai, Yuchao, Li, Aixuan, Barnes, Nick, Fan, Deng-Ping

论文摘要

野生中的猎物演变为伪装,以避免被掠食者识别。这样,伪装起着对生存至关重要的物种的关键防御机制。为了检测和分段伪装对象的整个范围,将伪装的对象检测(COD)作为二进制分割任务引入,二进制地面真相伪装图表示伪装对象的确切区域。在本文中,我们重新审视了这项任务,并认为二进制分割设置无法完全理解伪装的概念。我们发现,对伪装物体在其特定背景上的显着建模不仅可以使人们对伪装有更好的了解,而且还为设计更复杂的伪装技术提供了指导。此外,我们观察到,伪装物体的某些特定部分使它们可以被掠食者检测到。有了上述对伪装对象的理解,我们提出了第一个同时定位,段和等级的伪装对象的三任任务学习框架,表明伪装的显着性水平。由于本地化模型或排名模型都不存在相应的数据集,因此我们使用眼睛跟踪器生成本地化图,然后根据实例级别标签对其进行处理,以生成基于排名的培训和测试数据集。我们还为最大的COD测试集提供了全面分析COD模型的性能。实验结果表明,我们的三任任务学习框架实现了新的最先进,从而导致了更容易解释的COD网络。我们的代码,数据和结果可在:\ url {https://github.com/jingzhang617/cod-rank-lank-localize-and-pragement}中获得。

Preys in the wild evolve to be camouflaged to avoid being recognized by predators. In this way, camouflage acts as a key defence mechanism across species that is critical to survival. To detect and segment the whole scope of a camouflaged object, camouflaged object detection (COD) is introduced as a binary segmentation task, with the binary ground truth camouflage map indicating the exact regions of the camouflaged objects. In this paper, we revisit this task and argue that the binary segmentation setting fails to fully understand the concept of camouflage. We find that explicitly modeling the conspicuousness of camouflaged objects against their particular backgrounds can not only lead to a better understanding about camouflage, but also provide guidance to designing more sophisticated camouflage techniques. Furthermore, we observe that it is some specific parts of camouflaged objects that make them detectable by predators. With the above understanding about camouflaged objects, we present the first triple-task learning framework to simultaneously localize, segment, and rank camouflaged objects, indicating the conspicuousness level of camouflage. As no corresponding datasets exist for either the localization model or the ranking model, we generate localization maps with an eye tracker, which are then processed according to the instance level labels to generate our ranking-based training and testing dataset. We also contribute the largest COD testing set to comprehensively analyse performance of the COD models. Experimental results show that our triple-task learning framework achieves new state-of-the-art, leading to a more explainable COD network. Our code, data, and results are available at: \url{https://github.com/JingZhang617/COD-Rank-Localize-and-Segment}.

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