Improved moving object detection algorithm based on adaptive background subtraction

Dina M. Rashed, M. Sayed, M. Abdalla
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引用次数: 3

Abstract

Moving object detection is the first step in video-surveillance that aims to detect the moving objects to be classified and tracked. There are many challenges in moving object detection such as lighting changes, dynamic backgrounds, occlusions, and shadows. Many complicated algorithms were proposed in the literature to face these challenges at the cost of increasing the processing time that may deteriorate the performance of the whole surveillance system. SOBS is an efficient algorithm using self-organization approach that was presented in [1] and improved in [2]. In this paper, we introduce a new algorithm based on adaptive background subtraction that has reduced computation complexity, hence, lower processing time while maintaining a competitive performance in terms of the recall and precision parameters. The proposed algorithm construct background model and compares its pixels with the current images to identify foreground/background pixels and minimizes the number of updated pixels in background model to reduce the processing time. The processing time is decreased by 74% compared to the SOBS algorithm. In addition, the proposed algorithm has competitive performance with respect to state-of-the-art algorithms in moving object detection.
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基于自适应背景减法的改进运动目标检测算法
运动目标检测是视频监控的第一步,目的是检测出需要分类和跟踪的运动目标。在运动目标检测中存在许多挑战,如光照变化、动态背景、遮挡和阴影。为了应对这些挑战,文献中提出了许多复杂的算法,但代价是增加了处理时间,这可能会降低整个监控系统的性能。SOBS是一种使用自组织方法的高效算法,在[1]中提出,在[2]中得到改进。在本文中,我们引入了一种基于自适应背景减法的新算法,该算法降低了计算复杂度,从而降低了处理时间,同时在召回率和精度参数方面保持了竞争力。该算法通过构建背景模型,并将其像素与当前图像进行比较来识别前景/背景像素,并最大限度地减少背景模型中更新像素的数量,从而减少处理时间。与SOBS算法相比,处理时间减少了74%。此外,该算法在运动目标检测方面具有较好的性能。
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