基于形状矩和归一化傅立叶描述子的人类活动识别

Hanan Samir, H. Abdelmunim, G. Aly
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引用次数: 2

摘要

本文提出了一种基于视频的系统,利用单个静止摄像机实时识别不同的连续人体活动。所提出的系统具有包含形状矩的运动描述符以及归一化傅立叶描述符。该系统的主要思想是检测每一帧中的运动物体,并将检测与同一物体随时间的变化相关联。我们采用一种有效的阈值分割技术来分割感兴趣的对象。该系统的第二阶段是提取目标特征。第一个特征部分通过提取目标轮廓并估计其归一化傅里叶描述子来构造。另一部分由形状矩提取。我们结合形状矩来产生一个不受旋转、平移和缩放影响的不变特征。我们采用了多类支持向量机和朴素贝叶斯分类器。多类支持向量机的识别率高达94.46%,优于其他方法。我们对为260个不同的人录制的13种不同的人类活动(例如,走路,跑步,跳跃,挥手,弯曲以及一些可疑的活动,如踢腿,拳击,摔倒和射击等)的325个视频进行了活动识别评估。在Weizman、KTH和HMDB三个数据集上的实验结果验证了系统的可靠性和有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Human activity recognition using shape moments and normalized fourier descriptors
This paper presents a video based system for recognizing different continuous human activities in real time using a single stationary camera. The proposed system has a motion descriptor that contains shape moments as well as normalized Fourier descriptors. The main idea of this system is to detect moving objects in each frame and associate the detections to the same object over time. We employ an efficient thresholding technique to segment the objects of interest. The second stage of the proposed system is to extract the object features. The first feature part is constructed by extracting the object contour and estimate its normalized Fourier descriptors. The other part is extracted by the shape moments. We combined the shape moments to produce an invariant feature that is invariant to rotation, translation and scaling. We adopt the multi-class support vector machines (SVM) and Naive Bayes classifiers. The multi-class SVM shows better performance than the other method with a recognition rate up to 94.46%. We evaluated activity recognition on 325 videos of thirteen distinct Human activities (e.g., Walking, Running, Jumping, Hand-waving, Bending and some suspicious activities like Kicking, Punching, Fall floor and shooting gun, etc.) recorded for 260 different persons. Experimental results on three data set Weizman, KTH and HMDB validate the proposed system reliability and efficiency.
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