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Refinement of Background-Subtraction Methods Based on Convolutional Neural Network Features for Dynamic Background

机译:基于卷积神经网络特征的背景减法方法的改进

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摘要

Advancing the background-subtraction method in dynamic scenes is an ongoing timely goal for many researchers. Recently, background subtraction methods have been developed with deep convolutional features, which have improved their performance. However, most of these deep methods are supervised, only available for a certain scene, and have high computational cost. In contrast, the traditional background subtraction methods have low computational costs and can be applied to general scenes. Therefore, in this paper, we propose an unsupervised and concise method based on the features learned from a deep convolutional neural network to refine the traditional background subtraction methods. For the proposed method, the low-level features of an input image are extracted from the lower layer of a pretrained convolutional neural network, and the main features are retained to further establish the dynamic background model. The evaluation of the experiments on dynamic scenes demonstrates that the proposed method significantly improves the performance of traditional background subtraction methods.
机译:在动态场景中推进背景减法方法是许多研究人员的持续及时的目标。最近,已经开发了背景减法方法,具有深度卷积特征,其提高了它们的性能。但是,大多数这些深度方法都是监督,仅适用于某些场景,并具有高计算成本。相比之下,传统的背景减法方法具有低的计算成本,并且可以应用于一般场景。因此,在本文中,我们提出了一种无监督和简洁的方法,基于从深度卷积神经网络中学到的特征来优化传统的背景减法方法。对于所提出的方法,输入图像的低级特征是从掠夺卷积神经网络的下层提取的,并且保留主要特征以进一步建立动态背景模型。对动态场景的实验的评估表明,该方法显着提高了传统背景减法方法的性能。

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