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Wild Animal Detection from Highly Cluttered Forest Images Using Deep Residual Networks

机译:使用深度残差网络从高度混乱的森林图像中检测野生动物

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Wild animal detection is a dynamic research field since last decades. The videos acquired from camera-trap comprises of scenes that are cluttered that poses a challenge for detection of the wild animal. In this paper, we proposed a deep learning based system to detect wild animal from highly cluttered natural forest images. We have utilized Deep Residual Network (ResNet) for features extraction from cluttered forest images. These features are feed to classification through some of the best in class machine learning techniques, to be specific Support Vector Machine, K-Nearest Neighbor and Ensemble Tree. Our outcomes demonstrate that our detection system through ResNet outperforms compare to existing systems reported in the literature.
机译:自最近几十年来,野生动物检测一直是一个动态的研究领域。从相机陷阱获取的视频包含混乱的场景,这对检测野生动物构成了挑战。在本文中,我们提出了一种基于深度学习的系统,该系统可从高度混乱的天然森林图像中检测野生动物。我们利用深度残差网络(ResNet)从混乱的森林图像中提取特征。这些功能通过一些一流的机器学习技术(例如特定的支持向量机,K最近邻和合奏树)提供给分类。我们的结果表明,通过ResNet的检测系统的性能优于文献中报道的现有系统。

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