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Background subtraction based on deep convolutional neural networks features

机译:基于深度卷积神经网络的背景减法

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摘要

Background modeling and subtraction, the task to detect moving objects in a scene, is a fundamental and critical step for many high level computer vision tasks. However, background subtraction modeling is still an open and challenge problem particularly in practical scenarios with drastic illumination changes and dynamic backgrounds. In this paper, we propose a novel foreground detection method based on CNNs(Convolutional Neural Networks) to deal with challenges confronted with background subtraction. Firstly, given a cleaned background image without moving objects, constructing adjustable neighborhood of each pixel in the background image to form windows; CNN features are extracted with a pre-trained CNN model for each window to form a features based background model. Secondly, for the current frame of a video scene, extracting features with the same operation as the background model. Euclidean distance is adopted to build distance map for current frame and background image with CNN features. Thirdly, the distance map is fed into graph cut algorithm to obtain foreground mask. In order to deal with background changes, the background model is updated with a certain rate. Experimental results verify that the proposed approach is effective to detect foreground objects from complex background environments, and outperforms some state-of-the-art methods.
机译:背景建模和减法是检测场景中移动物体的任务,是许多高级计算机视觉任务的基本且至关重要的步骤。然而,背景扣除建模仍然是一个开放和挑战性的问题,尤其是在照明变化剧烈和动态背景的实际情况下。在本文中,我们提出了一种基于卷积神经网络的新型前景检测方法,以应对背景减法所面临的挑战。首先,给定一个干净的背景图像而没有移动物体,在背景图像中每个像素的可调整邻域形成窗口;使用针对每个窗口的预训练CNN模型提取CNN特征,以形成基于特征的背景模型。其次,对于视频场景的当前帧,以与背景模型相同的操作提取特征。采用欧氏距离建立具有CNN特征的当前帧和背景图像的距离图。第三,将距离图输入到图割算法中以获得前景蒙版。为了处理背景变化,以一定的速率更新背景模型。实验结果证明,该方法可有效检测复杂背景环境中的前景物体,并且性能优于某些最新技术。

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