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A Robust Approach for the Background Subtraction Based on Multi-Layered Self-Organizing Maps

机译:基于多层自组织映射的鲁棒背景扣除方法

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摘要

Motion detection in video streams is a challenging task for several computer vision applications. Indeed, segmentation of moving and static elements in the scene allows to increase the efficiency of several challenging tasks, such as human-computer interface, robot visions, and intelligent surveillance systems. In this paper, we approach motion detection through a multi-layered artificial neural network, which is able to build for each background pixel a multi-modal color distribution evolving over time through self-organization. According to the winner-take-all rule, each layer of the network models an independent state of the background scene, in response to external disturbing conditions, such as illumination variations, moving backgrounds, and jittering. As a result, our background subtraction method exhibits high generalization capabilities that in combination with a post-processing filtering schema allow to produce accurate motion segmentation. Moreover, we propose an approach to detect anomalous events (such as camera motion) that require background model re-initialization. We describe our method in full details and we compare it against the most recent background subtraction approaches. Experimental results for video sequences from the 2012 and 2014 CVPR Change Detection data sets demonstrate how our methodology outperforms many state-of-the-art methods in terms of detection rate.
机译:对于多种计算机视觉应用而言,视频流中的运动检测是一项艰巨的任务。的确,场景中移动和静态元素的分割允许提高某些挑战性任务的效率,例如人机界面,机器人视觉和智能监控系统。在本文中,我们通过多层人工神经网络进行运动检测,该网络能够为每个背景像素建立通过自组织随时间变化的多模式颜色分布。根据赢家通吃的规则,网络的每一层都将根据外部干扰条件(例如光照变化,运动背景和抖动)对背景场景的独立状态进行建模。结果,我们的背景减法方法具有很高的泛化能力,结合后处理过滤方案可以产生精确的运动分割。此外,我们提出了一种检测异常事件(例如摄像机运动)的方法,该事件需要背景模型重新初始化。我们将详细描述我们的方法,并将其与最新的背景减法进行比较。来自2012年和2014年CVPR变更检测数据集的视频序列的实验结果证明,在检测率方面,我们的方法优于传统方法。

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