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Fast human-animal detection from highly cluttered camera-trap images using joint background modeling and deep learning classification

机译:使用联合背景建模和深度学习分类,从高度杂乱的相机 - 陷阱图像中快速的人动物检测

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In this paper, we couple effective dynamic background modeling with deep learning classification to develop a fast and accurate scheme for human-animal detection from highly cluttered camera-trap images using joint background modeling and deep learning classification. Specifically, first, we develop an effective background modeling and subtraction scheme to generate region proposals for the foreground objects. We then develop a cross-frame image patch verification to reduce the number of foreground object proposals. Finally, we perform complexity-accuracy analysis of deep convolutional neural networks (DCNN) to develop a fast deep learning classification scheme to classify these region proposals into three categories: human, animals, and background patches. The optimized DCNN is able to maintain high level of accuracy while reducing the computational complexity by 14 times. Our experimental results demonstrate that the proposed method outperforms existing methods on the camera-trap dataset.
机译:在本文中,我们将有效的动态背景建模与深度学习分类,利用联合背景建模和深度学习分类开发了一种从高度杂乱的相机 - 陷阱图像中的人动物检测方案。具体地,首先,我们开发有效的背景建模和减法方案,以生成前景对象的区域提案。然后,我们开发一个跨框架图像补丁验证以减少前景对象提案的数量。最后,我们对深度卷积神经网络(DCNN)进行复杂性 - 准确性分析,以开发快速深入学习分类方案,将这些地区提案分为三类:人,动物和背景补丁。优化的DCNN能够保持高水平的精度,同时将计算复杂度降低14次。我们的实验结果表明,所提出的方法优于相机陷阱数据集上的现有方法。

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