基于速度和轨迹的视频运动项目分类

Seba Susan, Samdisha Chaurawat, Vinay Nishad, Mayank Sharma, Sonali Sahay
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引用次数: 5

摘要

提出了一种通过跟踪运动物体质心在连续帧之间的位置和角位移来对视频中的体育事件进行分类的新技术。视频中包含的各种运动项目要么是根据运动速度来区分的,比如走路、慢跑和跑步,要么是根据人体运动时的运动轨迹来区分的,比如跳水、踢球、弯腰、举重、跳跃和打高尔夫球。运动速度由位置矢量大小的随机性来度量,角位移的时间序列表示运动轨迹。我们的方法采用最少的训练,只有一个训练视频作为每个体育活动的参考。在KTH, UCF和Weizmann数据集上的实验以及与现有方法的比较验证了该方法的有效性,该方法简单且易于实现。通过使用隐马尔可夫模型从我们提取的特征中生成后验状态概率序列,然后将其用于分类,进一步提高了精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Speed and trajectory based sports event categorization from videos
A novel technique is proposed for categorizing sports events in videos by tracking the positional and angular displacements of the centroid of the moving object in between successive frames. The various sporting events contained in videos are distinguished either by the speed of motion, for instance walking, jogging and running, or by the trajectory made by the human body while in motion, for instance diving, kicking, bending, lifting weights, jumping and playing golf. The speed of motion is measured by the randomness in the position vector magnitude, and the time-series of angular displacements represents the trajectory. Our method employs minimal training with only a single training video used as the reference for each sporting activity. Experimentation on the KTH, UCF and Weizmann datasets and comparisons with existing methods validate the efficiency of our approach which is simple and easy to implement. The accuracies are further improved by using the Hidden Markov Model to generate posterior state probability sequences from our extracted features which is then used for classification.
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