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An automated chimpanzee identification system using face detection and recognition

机译:使用面部检测和识别的自动黑猩猩识别系统

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Due to the ongoing biodiversity crisis, many species including great apes like chimpanzees are on the brink of extinction. Consequently, there is an urgent need to protect the remaining populations of threatened species. To overcome the catastrophic decline of biodiversity, biologists and gamekeepers recently started to use remote cameras and recording devices for wildlife monitoring in order to estimate the size of remaining populations. However, the manual analysis of the resulting image and video material is extremely tedious, time consuming, and cost intensive. To overcome the burden of time‐consuming routine work, we have recently started to develop computer vision algorithms for automated chimpanzee detection and identification of individuals. Based on the assumption that humans and great apes share similar properties of the face, we proposed to adapt and extend face detection and recognition algorithms, originally developed to recognize humans, for chimpanzee identification. In this paper we do not only summarize our earlier work in the field, we also extend our previous approaches towards a more robust system which is less prone to difficult lighting situations, various poses, and expressions as well as partial occlusion by branches, leafs, or other individuals. To overcome the limitations of our previous work, we combine holistic global features and locally extracted descriptors using a decision fusion scheme. We present an automated framework for photo identification of chimpanzees including face detection, face alignment, and face recognition. We thoroughly evaluate our proposed algorithms on two datasets of captive and free‐living chimpanzee individuals which were annotated by experts. In three experiments we show that the presented framework outperforms previous approaches in the field of great ape identification and achieves promising results. Therefore, our system can be used by biologists, researchers, and gamekeepers to estimate population sizes faster and more precisely than the current frameworks. Thus, the proposed framework for chimpanzee identification has the potential to open up new venues in efficient wildlife monitoring and can help researches to develop innovative protection schemes in the future.
机译:由于持续的生物多样性危机,包括黑猩猩等大猿在内的许多物种濒临灭绝。因此,迫切需要保护其余受威胁物种的种群。为了克服生物多样性的灾难性下降,生物学家和游戏管理员最近开始使用远程摄像头和记录设备进行野生动植物监测,以估计剩余人口的数量。然而,对所得图像和视频资料的人工分析非常繁琐,耗时且成本高昂。为了克服费时的日常工作负担,我们最近开始开发用于自动检测和识别黑猩猩的计算机视觉算法。基于人类和大猿猴具有相似面部特征的假设,我们提出了对黑猩猩识别的适应和扩展方法,该算法最初是为识别人类而开发的。在本文中,我们不仅总结了我们在该领域的早期工作,还将我们先前的方法扩展到了一个更强大的系统,该系统不易出现困难的光照情况,各种姿势和表情,以及被树枝,树叶,或其他个人。为了克服先前工作的局限性,我们使用决策融合方案将整体全局特征与本地提取的描述符结合在一起。我们为黑猩猩的照片识别提供了一个自动框架,包括面部检测,面部对齐和面部识别。我们在专家圈注的圈养和自由生活的黑猩猩个体的两个数据集上彻底评估了我们提出的算法。在三个实验中,我们证明了所提出的框架优于大猿猴鉴定领域的先前方法,并取得了可喜的结果。因此,生物学家,研究人员和游戏管理员可以使用我们的系统,以比当前框架更快,更准确地估算种群数量。因此,拟议中的黑猩猩识别框架有可能为有效的野生动植物监测开辟新的场所,并有助于未来研究开发创新的保护计划。

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