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首页> 外文期刊>International Journal of Image, Graphics and Signal Processing >Human Identification On the basis of Gaits Using Time Efficient Feature Extraction and Temporal Median Background Subtraction
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Human Identification On the basis of Gaits Using Time Efficient Feature Extraction and Temporal Median Background Subtraction

机译:基于步态的人类识别(使用高效时间特征提取和时域中值背景减法)

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Gait analysis is basically referred to study of human locomotion. From the surveillance point of view behavioral biometrics and recognition at a distance are becoming more popular in researchers rather than interactive and Physiological biometrics. In this paper, a time efficient Human gait identification system is proposed. Initially Human silhouettes are extracted by using temporal median background subtraction on video frames, which successfully removes shadows and models even complex background, proposed gait algorithm extracts contours from foreground silhouettes images and then three bounding boxes are drawn around contoured human image 1) upper part for arms movement 2) middle part for thigh and knee angles 3) Lower part for legs movement, knee and ankle angles. Gait cycles are extracted to find gait period and to take final decision for gait features selection, which is used for training. Thigh, Knee, Ankle angles and bounding boxes' widths are used as gait signatures but middle portion of human contains less variations of width in gait cycle hence computing efficiency can be achieved by ignoring width factor of middle part. SVM based training and identification is performed on extracted gait features. The proposed system is assessed using publicly available gait datasets and some indoor experimental videos created for this research work. The results reveal that the proposed algorithm is able to achieve an outstanding recognition rate.
机译:步态分析基本上是指对人类运动的研究。从监视的角度来看,远距离的行为生物识别和识别在研究人员中越来越流行,而不是交互式生物生理识别。本文提出了一种高效的步态识别系统。最初,通过在视频帧上使用时间中值背景减法来提取人的轮廓,从而成功去除阴影并建模甚至复杂的背景,提出的步态算法从前景轮廓图像中提取轮廓,然后围绕轮廓化的人图像绘制三个边界框1)上部手臂运动2)大腿和膝盖角度的中间部分3)腿部运动,膝盖和脚踝角度的下部。提取步态周期以找到步态周期并为步态特征选择做出最终决定,用于训练。大腿,膝盖,脚踝的角度和边界框的宽度用作步态标记,但是人的中部步态周期的宽度变化较小,因此可以通过忽略中部的宽度因子来实现计算效率。基于SVM的训练和识别在提取的步态特征上执行。使用公开的步态数据集和为此研究工作创建的一些室内实验视频对提议的系统进行评估。结果表明,该算法能够达到较高的识别率。

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