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Rethinking Background And Foreground In Deep Neural Network-Based Background Subtraction

机译:基于深度神经网络的背景减法的背景与前景反思

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Recently, deep neural networks have demonstrated excellent performance in foreground segmentation tasks such as moving object detection and change detection tasks. Various types of neural networks have been proposed, however, the previous works mainly discuss the accuracy. Analytics of the neural networks is important to utilize them effectively and improve their performance. In this paper, we investigate a foreground segmentation network and background subtraction network. In our analysis, we discuss differences of behaviors of the two networks in specific scenes and feature distributions in each layer of a background subtraction network to investigate feature learning. In addition, we provide suggestions about the comparison with these networks.
机译:近年来,深度神经网络已在前景分割任务(例如运动对象检测和变化检测任务)中表现出出色的性能。已经提出了各种类型的神经网络,但是,先前的工作主要讨论准确性。神经网络的分析对于有效利用它们并改善其性能非常重要。在本文中,我们研究了前景分割网络和背景扣除网络。在我们的分析中,我们讨论了两个网络在特定场景下的行为差异以及背景减法网络每一层中的特征分布,以研究特征学习。此外,我们提供了与这些网络进行比较的建议。

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