基于步态参数的步态能量图像投影模型的人类年龄分类

M. Hema, Suhitha Pitta
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引用次数: 4

摘要

随着年龄分类的日益重要,研究者们正在研究不同的年龄分类方法。基于面部和基于步态是两种主要的年龄分类方法。实际上,如果人离相机很远,基于面部的方法就不那么准确了。然而,步态是一种较好的解决方案,因为它对年龄参数的响应很快。本文提出的步态能量图像投影模型(GPM)是将时空步态能量图像纵向投影(GLP)和步态能量图像横向投影(GTP)相结合的年龄分类方法。该方法主要关注头部运动、身体大小、手臂运动和步幅四个参数。在年龄分类方面,考虑OU-ISIR数据集,选择SVM作为分类器。并将得到的实验结果与现有的FED、GEI和SM等进行了比较。进一步的描述符被融合以检查它们是否提供更好的结果。
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Human age classification based on gait parameters using a Gait Energy Image projection model
With the increasing significance of age classification in present days, researchers are working on different methods to classify a persons' age. Facial based and Gait based are the major trail methods for age classification. Actually, the facial based approach is not so accurate if the person is far from the camera. Whereas, gait is a preferable solution because it is quick to respond to age parameters. In this paper, Gait energy image Projection model (GPM) is the proposed method for age classification, which combines both spatiotemporal Gait energy image Longitudinal projection (GLP) and Gait energy image Transverse Projection (GTP). The proposed method mainly focuses on four parameters namely head movement, body size, arm movement and Stride length. Regarding classification of age, OU-ISIR dataset is considered and the SVM is selected as the classifier. Moreover, obtained experimental results are compared with the existing ones like FED, GEI and SM. Further Descriptors are fused to check whether they give better results or not.
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