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首页> 外文期刊>International Journal of Neural Systems >Fusing Self-Organized Neural Network and Keypoint Clustering for Localized Real-Time Background Subtraction
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Fusing Self-Organized Neural Network and Keypoint Clustering for Localized Real-Time Background Subtraction

机译:融合自组织的神经网络和关键点聚类,用于本地化实时背景减法

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摘要

Moving object detection in video streams plays a key role in many computer vision applications. In particular, separation between background and foreground items represents a main prerequisite to carry out more complex tasks, such as object classification, vehicle tracking, and person re-identification. Despite the progress made in recent years, a main challenge of moving object detection still regards the management of dynamic aspects, including bootstrapping and illumination changes. In addition, the recent widespread of Pan-Tilt-Zoom (PTZ) cameras has made the management of these aspects even more complex in terms of performance due to their mixed movements (i.e. pan, tilt, and zoom). In this paper, a combined keypoint clustering and neural background subtraction method, based on SelfOrganized Neural Network (SONN), for real-time moving object detection in video sequences acquired by PTZ cameras is proposed. Initially, the method performs a spatio-temporal tracking of the sets of moving keypoints to recognize the foreground areas and to establish the background. Then, it adopts a neural background subtraction, localized in these areas, to accomplish a foreground detection able to manage bootstrapping and gradual illumination changes. Experimental results on three well-known public datasets, and comparisons with different key works of the current literature, show the efficiency of the proposed method in terms of modeling and background subtraction.
机译:在视频流中移动对象检测在许多计算机视觉应用程序中起着关键作用。特别地,背景和前景项目之间的分离代表了执行更复杂的任务,例如对象分类,车辆跟踪和人重新识别的主要先决条件。尽管近年来取得了进展,但移动物体检测的主要挑战仍然涉及动态方面的管理,包括自动启动和照明变化。此外,由于其混合运动(即PAN,倾斜和变焦),近期泛倾斜变焦(PTZ)相机的管理在性能方面使这些方面更加复杂。在本文中,提出了一种基于自动化神经网络(SONN)的组合的关键点聚类和神经背景减法方法,用于通过PTZ相机获取的视频序列中的实时移动对象检测。最初,该方法执行用于识别前景区域并建立背景的移动关键点的时空跟踪。然后,它采用在这些区域中定位的神经背景减法,以实现能够管理自动启动和逐渐照明变化的前景检测。在三个众所周知的公共数据集中的实验结果以及当前文献的不同关键作品的比较,在建模和背景减法方面显示了所提出的方法的效率。

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