Abstract Towards automatic wild animal monitoring: Identification of animal species in camera-trap images using very deep convolutional neural networks
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Towards automatic wild animal monitoring: Identification of animal species in camera-trap images using very deep convolutional neural networks

机译:朝向自动野生动物监测:使用非常深的卷积神经网络识别相机 - 陷阱图像中的动物物种

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Abstract Non-intrusive monitoring of animals in the wild is possible using camera trapping networks. The cameras are triggered by sensors in order to disturb the animals as little as possible. This approach produces a high volume of data (in the order of thousands or millions of images) that demands laborious work to analyze both useless (incorrect detections, which are the most) and useful (images with presence of animals). In this work, we show that as soon as some obstacles are overcome, deep neural networks can cope with the problem of the automated species classification appropriately. As case of study, the most common 26 of 48 species from the Snapshot Serengeti (SSe) dataset were selected and the potential of the Very Deep Convolutional neural networks framework for the species identification task was analyzed. In the worst-case scenario (unbalanced training dataset containing empty images) the method reached 35.4% Top-1 and 60.4% Top-5 accuracy. For the best scenario (balanced dataset, images containing foreground animals only, and manually segmented) the accuracy reached a 88.9% Top-1 and 98.1% Top-5, respectively. To the best of our knowledge, this is the first published attempt on solving the automatic species recognition on the SSe dataset. In addition, a comparison with other approaches on a different dataset was carried out, showing that the architectures used in this work outperformed previous approaches. The limitations of the method, drawbacks, as well as new challenges in automatic camera-trap species classification are widely discussed.
机译:<![cdata [ Abstract 使用相机捕获网络可以在野外的动物中的非侵入性监测。摄像机由传感器触发,以便尽可能少地扰乱动物。这种方法产生大量数据(数千次或数百万图像),要求艰苦的工作来分析无用的(不正确的检测,最多)和有用(具有动物的存在)。在这项工作中,我们表明,一旦克服了一些障碍,深神经网络就可以适当地应对自动化物种分类的问题。视具体情况作为研究的情况下,选择了来自快照Serengeti(SSE)数据集的最常见的48种物种,并分析了物种识别任务的非常深卷积神经网络框架的潜力。在最坏情况下(包含空图像的不平衡训练数据集)该方法达到35.4 top-1和60.4 top-5准确性。对于最佳场景(平衡数据集,仅包含前台动物的图像,并且手动分段)的准确性达到了88.9 top-1和98.1 分别为前5个。据我们所知,这是第一次出版的SSE数据集解决自动物种识别的首次出版尝试。此外,还执行与不同数据集上的其他方法的比较,显示本工作中使用的架构优于先前的方法。讨论了方法,缺点,以及自动摄像机陷阱物种分类中的新挑战的局限性。

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