Camouflaged objects attempt to conceal their texture into the background and discriminating them from the background is hard even for human beings. The main objective of this paper is to explore the camouflaged object segmentation problem, namely, segmenting the camouflaged object(s) for a given image. This problem has not been well studied in spite of a wide range of potential applications including the preservation of wild animals and the discovery of new species, surveillance systems, search-and-rescue missions in the event of natural disasters such as earthquakes, floods or hurricanes. This paper addresses a new challenging problem of camouflaged object segmentation. To address this problem, we provide a new image dataset of camouflaged objects for benchmarking purposes. In addition, we propose a general end-to-end network, called the Anabranch Network, that leverages both classification and segmentation tasks. Different from existing networks for segmentation, our proposed network possesses the second branch for classification to predict the probability of containing camouflaged object(s) in an image, which is then fused into the main branch for segmentation to boost up the segmentation accuracy. Extensive experiments conducted on the newly built dataset demonstrate the effectiveness of our network using various fully convolutional networks. \url{https://sites.google.com/view/ltnghia/research/camo}
翻译:隐藏的物体试图将其纹理隐藏在背景中,并将它们从背景中区别开来,即使对人类来说也是很困难的。本文件的主要目的是探索伪装的物体分割问题,即对某一图像的伪装对象分割。尽管有各种各样的潜在应用,包括保护野生动物和发现新的物种、监视系统、在发生地震、洪水或飓风等自然灾害时搜索和救援任务,但这一问题没有得到很好地研究。本文述及隐蔽物体分割的新挑战问题。为了解决这一问题,我们为设定基准目的提供了伪装对象分割的新图像数据集。此外,我们提议建立一个一般端到端网络,称为阿纳布朗奇网络,利用分类和分解任务。与现有的分解网络不同,我们提议的网络拥有第二个分类分支,以预测在图像中包含伪装的物体的可能性,然后将其结合到分解的主要分支,以提升分解的准确性。在新建立的数据网络上进行广泛的实验,称为阿纳布朗奇网络。充分展示了各种变压网络的效能。