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Methodology for Mammal Classification in Camera Trap Images

机译:相机陷印图像中的哺乳动物分类方法

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Using camera traps in animal ecology studies has increased because it facilitates the work of biologists and allows them to obtain information that otherwise would be impossible. A large number of photographs are capturing with this wildlife photography technique making difficult their posterior analysis. This paper presents a method to automatically identify the images with at least one animal and to classify them between birds and mammals. In this work a fuzzy classifier and a matched filter were used to identify the image with animals and to segment the images. An artificial neural network was employed to classify the segments between birds and mammals. We obtained a classification accuracy of 73.1% validating the model over real camera trap sessions. The database includes several difficulties, as the constant changes in the scene by climatic factors or animals partially occluded by the environment. This method was implemented in a software that is currently using in the Alexander von Humboldt Biological Resources Research Institute for studies of biodiversity in Colombia.
机译:在动物生态学研究中使用相机陷阱的方法有所增加,因为它可以促进生物学家的工作,并使他们获得原本不可能的信息。这种野生动植物摄影技术正在捕获大量照片,因此很难进行后验分析。本文提出了一种方法,可以自动识别至少一只动物的图像并将它们分类为鸟类和哺乳动物。在这项工作中,使用模糊分类器和匹配的过滤器来识别带有动物的图像并分割图像。使用人工神经网络对鸟类和哺乳动物之间的片段进行分类。在真实的相机陷阱会话中验证模型,我们获得了73.1%的分类精度。该数据库包括一些困难,因为场景由于气候因素或部分被环境遮挡的动物而不断变化。该方法已在亚历山大·冯·洪堡生物资源研究所目前正在使用的软件中实现,该软件用于哥伦比亚的生物多样性研究。

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