关键帧提取使用AdaBoost

Jing Yuan, Wei Wang, Wei Yang, Maojun Zhang
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引用次数: 6

摘要

提出了一种基于前景检测的AdaBoost关键帧提取方法。该方法的目的是从车道车辆监控视频的特定车辆图像序列中提取关键帧。该方法利用积分通道特征和区域特征作为图像特征描述符,结合AdaBoost分类器的训练。在真实道路测试视频上的实验结果表明,本文算法能够有效地从运动车辆进入监控区域开始计数到离开监控区域结束计数的一系列车辆图像中选出最清晰、最清晰的图像。与其他方法相比,提高了车道车辆监控视频关键帧提取的有效性和精度,实现了车道车辆监控视频分析数据更有效的压缩。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Keyframe extraction using AdaBoost
An approach for keyframe extraction using AdaBoost is proposed which is based on foreground detection. The aim of this approach is to extract keyframes from sequences of specific vehicle images of lane vehicle surveillance video. This method utilizes integral channel features and the area feature as the image feature descriptor, combined with training an AdaBoost classifier. The experimental results on real-road test video show that the algorithm presented in this paper effectively selects the most distinct and clearest image for a sequence of vehicle images which begins counting when a motional vehicle enters into the surveillance area and ends when it leaves. Compared with other methods, it has increased the effectiveness and precision for keyframe extraction of lane vehicle surveillance video and achieves more effective compression of video analytical data for lane vehicle surveillance.
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