基于轨迹的视频人类活动识别

B. Boufama, Pejman Habashi, Imran Ahmad
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引用次数: 19

摘要

稀疏表示被广泛应用于各种人体活动识别方法中。虽然文献中提出了许多稀疏特征提取算法,但大多数算法都集中在底层特征上。本文提出了一种利用轨迹作为中级特征进行人体活动识别的新方法。虽然使用轨迹在这一领域并不新鲜,但其潜力尚未充分发挥。本文在前人工作的启发下,提出了新的轨迹提取方法,该方法非常灵活。然后,我们强调了轨迹与传统描述符的区别,并展示了使用轨迹进行人类活动识别的优势。通过提出的基于轨迹的方法论证了轨迹的优点和缺点。我们使用了一个简单的形状描述符和标准的词袋算法来进行人类活动分类。对不同算法的结果进行了比较。我们还将我们的结果与基于低级特征提取的其他流行的现有方法进行了比较。特别是,我们已经表明,使用提出的稀疏轨迹可以产生类似或更好的结果,而不是使用密集轨迹。此外,由于我们处理的数据更少,计算时间也减少了。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Trajectory-based human activity recognition from videos
Sparse representation is widely used by different human activity recognition methods. Although many sparse feature extraction algorithms have been proposed in the literature, most of them focused on low-level features. This paper proposes a new method using trajectories, as mid-level features, for human activity recognition. Even though the use of trajectories is not new in this field, their potential is yet to be fully attained. In this paper, inspired by previous works, we have proposed new trajectory extraction methods, which are very flexible. Then we have emphasized the difference between trajectories and traditional descriptors, and have shown the advantages of using trajectories for human activity recognition. The pros and cons of trajectories are demonstrated through proposed trajectory-based methods. We have used a simple shape descriptor and the standard bag of word algorithm for human activity classification. The results of these different algorithms have been compared. We have also compared our results with other popular existing methods based on low level extracted features. In particular, we have shown that using proposed sparse trajectories can produce similar or better results than using dense trajectories. Furthermore, the computational time has been reduced as we are dealing with fewer data.
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