Background subtraction with neighbor-based intensity correction algorithm

Thien Huynh-The, O. Baños, Ba-Vui Le, Dinh-Mao Bui, Sungyoung Lee, Yongik Yoon, T. Le-Tien
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引用次数: 1

Abstract

An efficient foreground detection algorithm is presented in this work to be robust against consecutively illuminance changes and noise, and adaptive with dynamic speeds of motion in the background. The scene background is firstly modeled by a novel algorithm, namely Neighbor-based Intensity Correction, which identifies and modifies motion pixels extracted from the difference of the background and the current frame. Concretely the first frame is assumed as an initial background to be updated at each new coming frame based on the mechanism of the standard deviation value comparison. Two pixel windows used for standard deviation calculation are generated surrounding a corresponding motion pixel from the background and the current frame. The steadiness of the current background at the pixel-level is measured by a constantly updating factor to decide the usage of the algorithm or not. In the next stage, the foreground of the current frame are detected by the background subtraction scheme with an optimal Otsu threshold. This method is evaluated on various well-known datasets in the object detection and tracking area and then compared with recent approaches via some common quantitative measurements. From experimental results, the proposed method achieves the better results (approximately 5-20%) in term of the foreground detection accuracy.
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基于邻域强度校正算法的背景减法
本文提出了一种有效的前景检测算法,该算法对连续的照度变化和噪声具有鲁棒性,并能自适应背景中的动态运动速度。首先采用基于邻域的强度校正算法对场景背景进行建模,该算法对从背景和当前帧的差中提取的运动像素进行识别和修正。具体地说,假设第一帧作为初始背景,在每一帧到来时,基于标准差值比较的机制进行更新。围绕来自背景和当前帧的相应运动像素生成两个用于标准差计算的像素窗口。当前背景在像素级的稳定性通过一个不断更新的因子来衡量,以决定是否使用该算法。下一阶段,采用最优Otsu阈值的背景相减方案检测当前帧的前景。该方法在目标检测和跟踪领域的各种已知数据集上进行了评估,然后通过一些常见的定量测量与最近的方法进行了比较。实验结果表明,该方法在前景检测精度方面达到了较好的效果(约为5-20%)。
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