基于网格的定向光流直方图用于视频数据的运动分析

Achmad Solichin, A. Harjoko, A. E. Putra
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引用次数: 8

摘要

视频中物体运动的检测与识别是当今研究热点之一。为了分析视频中物体的运动,运动方向是一个重要的特征。在本研究中,我们提出了一种利用定向光流直方图(HOOF)确定运动方向的新方法。我们在每个n乘n的网格中提取它,而不是整个帧。根据每个网格上的HOOF值确定方向运动。我们将每个网格中的运动方向分为12个方向。我们使用来自UMN数据集的视频来测试所提出的方法。实验结果表明,每个网格的假阳性(FPPG)为28.32%,每个网格的假阴性(FNPG)为4.08%。实验证明,利用基于网格的HOOF对视频数据进行运动分析是足够好的,并且可以在未来的研究中得到改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Grid-based Histogram of Oriented Optical Flow for analyzing movements on video data
Detection and recognition of object movements in a video is one of the research topics that are popular today. For the purposes of the analysis of the object movements in the video, the direction of movement is the important feature. In this study, we proposed a new method for determining the direction of movement using Histogram of Oriented Optical Flow (HOOF). We extract it locally at every N-by-N grid, not the entire frame. Direction movement is determined based on the value of HOOF on every grid. We classify the direction of movement in each grid into 12 directions. We use a video from UMN datasets for testing the proposed method. The experiment results show the value of False Positive Per Grid (FPPG) is 28.32%, and False Negative Per Grid (FNPG) is 4.08%. It proved that the use of Grid-based HOOF for analyzing movements on video data is good enough and can be improved in the future studies.
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