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Combining background subtraction algorithms with convolutional neural network

机译:将背景扣除算法与卷积神经网络相结合

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Accurate and fast extraction of foreground objects is a key prerequisite for a wide range of computer vision applications, such as object tracking and recognition. Thus, many background subtraction (BGS) methods for foreground object detection have been proposed in recent decades. However, this is still regarded as a tough problem due to a variety of challenges, such as illumination variations, camera jitter, dynamic backgrounds, and shadows. Currently, there is no single method that can handle all the challenges in a robust way. We try to solve this problem from a perspective of combining different state-of-the-art BGS algorithms to create a more robust and more advanced foreground detection algorithm. More specifically, an encoder-decoder fully convolutional neural network architecture is adapted and trained to automatically learn how to leverage the characteristics of different algorithms to fuse the results produced by different BGS algorithms and produce a more precise result. Comprehensive experiments evaluated on the CDnet 2014 dataset demonstrate that the proposed method outperforms all the considered single BGS algorithms. We show that our solution is more efficient than other BGS combination strategies. (C) 2019 SPIE and IS&T
机译:准确,快速地提取前景物体是广泛的计算机视觉应用(例如物体跟踪和识别)的关键前提。因此,近几十年来已经提出了许多用于前景物体检测的背景减法(BGS)方法。然而,由于各种挑战,例如照明变化,相机抖动,动态背景和阴影,这仍然被认为是一个棘手的问题。当前,没有任何一种方法可以可靠地应对所有挑战。我们尝试从结合不同的最新BGS算法以创建更健壮和更高级的前景检测算法的角度来解决此问题。更具体地说,对编解码器全卷积神经网络体系结构进行了调整和培训,以自动学习如何利用不同算法的特性来融合由不同BGS算法产生的结果并产生更精确的结果。在CDnet 2014数据集上评估的综合实验表明,所提出的方法优于所有已考虑的单个BGS算法。我们证明了我们的解决方案比其他BGS组合策略更有效。 (C)2019 SPIE和IS&T

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