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基于改进的帧间差分运动目标提取算法 被引量:9

Motion Detection Based on Improved Frame Difference
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摘要 针对帧间差分法容易产生的空洞效应,本文提出一种基于改进帧间差分的运动目标检测算法。首先利用原始帧差分提取潜在的运动目标区域,继而提取的区域内进行vibe(visual background extractor)算法的前景匹配,再次提取运动目标,以弥补空洞现象,实验结果表明本文算法能完整的提取运动目标。 To solve the hole effect caused by frame'difference algorithm, an improved frame difference algorithm has been provided. Firstly, potential moving object area is extracted by original frame difference, then moving object is detected by vibe algorithm in the potential area again to make up for the hole effect. Experiment results show that complex moving objects can be accurately extracted.
作者 赵婷 郑紫微
出处 《无线通信技术》 2016年第2期46-49,53,共5页 Wireless Communication Technology
基金 国家自然科学基金(No.60972063) 国家科技重大专项(2011ZX03002-004-02) 宁波市科技创新团队(2011B81002) 浙江省信息与通信工程重中之重学科开放基金项目(XKX11410)
关键词 帧间差分法 运动检测 vibe算法 前景匹配 frame difference motion detection vibe algorithm foreground match
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