一种抖动视频的运动目标检测算法

Wei Zhang, Xiaofeng Shi, Tao Jin, Shengke Chen, Yunjiong Xu, Wei Sun, Yang Xue, Zhicheng Yu
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引用次数: 2

摘要

针对相机抖动无法准确检测自然环境下运动目标的问题,提出了一种结合灰度投影、背景差分和连续帧差分的运动目标检测算法。该算法从图像帧中去除外围边缘像素后计算灰度投影,并根据得到的灰度投影曲线计算图像之间的相互关系,完成抖动序列校正。提出了背景差分与连续三帧差分的融合策略来增强运动目标区域。采用Ostu方法对融合差分图像进行分割,检测前景运动目标。经过公开的抖动视频序列实验和不同算法的对比验证,可以得出结论,该算法可以准确地检测出摄像机抖动场景中的运动目标,并且在检测速度快、计算量小的同时保证了良好的检测效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Moving Object Detection Algorithm of Jitter Video
In view of the problem that camera shake cannot accurately detect moving target in natural environment, this paper proposes a moving target detection algorithm combining grey projection, background difference and continuous frame difference. The algorithm calculates the gray projection after removing the peripheral edge pixels from the image frame, and calculates the interrelation between the images according to the obtained gray projection curve, and completes the jitter sequence correction. The fusion strategy of background difference and continuous three frame difference method is proposed to enhance the motion target area. The fusion differential image was segmented using Ostu method to detect the foreground moving target. After the public dither video sequence experiment and comparison and verification with different algorithms, it can be concluded that this algorithm can accurately detect the moving target in camera dither scene, and ensure a good detection effect while the detection speed is fast and the calculation amount is small.
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