Human activity recognition based on morphological dilation followed by watershed transformation method

Muhammad Hameed Siddiqi, Muhammad Fahim, Sungyoung Lee, Young-Koo Lee
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引用次数: 12

Abstract

Efficiency and accuracy are the most important terms for human activity recognition. Most of the existing works have the problem of speed. This paper proposed an efficient algorithm to recognize the activities of the human. There are three stages of this paper, segmentation, feature extraction and recognition. In this paper our contribution is in segmentation stage (based on morphological dilation) and in feature extraction stage (using watershed transformation). The proposed algorithm has been tested on six different types of activities (containing 420 frames). The recognition performance of our method has been compared with the existing method using Principle Component Analysis (PCA) to derive activity features. The results of our proposed method are comparable with the existing work. But in-term of efficiency, our algorithm was much faster than the existing work. The average accuracy and efficiency of the proposed algorithm for recognition was 80.83 % and 302.2 ms respectively.
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基于形态扩张的分水岭变换人类活动识别方法
效率和准确性是人类活动识别最重要的两个方面。现有的大部分作品都存在速度问题。本文提出了一种高效的人体活动识别算法。本文分为三个阶段:图像分割、特征提取和识别。在本文中,我们的贡献是在分割阶段(基于形态扩张)和特征提取阶段(使用分水岭变换)。提出的算法已经在六种不同类型的活动(包含420帧)上进行了测试。将该方法的识别性能与现有的主成分分析(PCA)方法进行了比较。本文提出的方法与已有的研究结果具有可比性。但就效率而言,我们的算法比现有的工作快得多。该算法的平均识别准确率和效率分别为80.83%和302.2 ms。
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