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Action recognition using Randomised Ferns

机译:使用随机蕨类的动​​作识别

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摘要

This paper presents a generic method for recognising and localising human actions in video based solely on the distribution of interest points. The use of local interest points has shown promising results in both object and action recognition. While previous methods classify actions based on the appearance and/or motion of these points, we hypothesise that the distribution of interest points alone contains the majority of the discriminatory information. Motivated by its recent success in rapidly detecting 2D interest points, the semi-naive Bayesian classification method of Randomised Ferns is employed. Given a set of interest points within the boundaries of an action, the generic classifier learns the spatial and temporal distributions of those interest points. This is done efficiently by comparing sums of responses of interest points detected within randomly positioned spatio-temporal blocks within the action boundaries. We present results on the largest and most popular human action dataset using a number of interest point detectors, and demostrate that the distribution of interest points alone can perform as well as approaches that rely upon the appearance of the interest points.
机译:本文提出了一种仅基于兴趣点分布来识别和定位视频中人类动作的通用方法。在对象和动作识别方面,使用本地兴趣点已显示出可喜的结果。虽然先前的方法基于这些点的出现和/或运动对动作进行分类,但我们假设兴趣点的分布仅包含大多数歧视性信息。由于其最近在快速检测二维兴趣点方面的成功,采用了随机蕨类植物的半朴素贝叶斯分类方法。给定动作边界内的一组兴趣点,通用分类器将学习这些兴趣点的时空分布。通过比较动作边界内随机放置的时空块中检测到的兴趣点的响应总和,可以有效地完成此操作。我们使用大量的兴趣点检测器在最大和最受欢迎的人类动作数据集上展示结果,并演示仅兴趣点的分布就可以执行以及依赖于兴趣点外观的方法。

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