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Towards Automatic Detection of Animals in Camera-Trap Images

机译:致力于自动检测摄像头图像中的动物

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In recent years the world's biodiversity is declining on an unprecedented scale. Many species are endangered and remaining populations need to be protected. To overcome this agitating issue, biologist started to use remote camera devices for wildlife monitoring and estimation of remaining population sizes. Unfortunately, the huge amount of data makes the necessary manual analysis extremely tedious and highly cost intensive. In this paper we re-train and apply two state-of-the-art deep-learning based object detectors to localize and classify Serengeti animals in camera-trap images. Furthermore, we thoroughly evaluate both algorithms on a self-established dataset and show that the combination of the results of both detectors can enhance overall mean average precision. In contrast to previous work our approach is not only capable of classifying the main species in images but can also detect them and therefore count the number of individuals which is in fact an important information for biologists, ecologists, and wildlife epidemiologists.
机译:近年来,世界生物多样性正在以前所未有的规模下降。许多物种濒临灭绝,剩余种群需要得到保护。为了克服这个令人烦恼的问题,生物学家开始使用远程摄像头设备监视野生生物并估计剩余种群数量。不幸的是,海量数据使必要的手动分析变得非常乏味且成本​​很高。在本文中,我们重新训练并应用了两个基于深度学习的最新对象检测器,以对相机捕获图像中的塞伦盖蒂动物进行定位和分类。此外,我们在一个自建立的数据集上对这两种算法进行了全面评估,并表明两种检测器结果的组合可以提高总体平均平均精度。与以前的工作相比,我们的方法不仅能够对图像中的主要物种进行分类,而且还可以对其进行检测,从而对个体数量进行计数,这实际上对于生物学家,生态学家和野生动物流行病学家而言是重要的信息。

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