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Prediction of Gender and Age from Inertial Sensor-based Gait Dataset

机译:从基于惯性传感器的步态数据集预测性别和年龄

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The technology pertaining to gait generation, recognition and analysis is getting more sophisticated each day. The global demand for a gait-based dataset and its subsequent recognition, leading to extraction of valuable information is now higher than ever. However, inertial sensor-based gait dataset is a comparatively new addition to the field of gait analysis. Consequently, most of the research works incorporating machine learning algorithms into gait dataset are image based. In addition to that, most of the gait-based datasets have been analyzed for gait recognition. There remains very little research work on personal authentication from inertial sensor-based gait dataset. Personal authentication is of several types out of which, predicting gender and age is quite challenging. In this paper, we have tried to face these challenges and have manifested the process of predicting gender and age from the inertial sensor-based gait dataset which is a part of the vast Osaka University-ISIR Gait Database. Finally, we have found that the models, Support Vector Machine shows the highest accuracy for the problem of classifying gender and Decision Trees shows the highest variance score (R2value) for the problem of predicting age.
机译:与步态生成,认可和分析有关的技术正在越来越复杂。全球对基于步态的数据集及其随后的认可的需求,导致提取有价值的信息现在高于以往任何时候都高。然而,基于惯性传感器的步态数据集是步态分析领域的比较新的补充。因此,大多数研究工作将机器学习算法结合到步态数据集是基于图像。除此之外,已经分析了大多数基于步态的数据集以进行步态识别。从惯性传感器的步态数据集仍然有关个人身份验证的几乎没有研究工作。个人身份验证是几种类型的类型,其中预测性别和年龄是非常具有挑战性的。在本文中,我们试图面临这些挑战,并表现出从思想的基于惯性传感器的步态数据集预测性别和年龄的过程,这是庞大的大阪大学 - isir步态数据库的一部分。最后,我们发现模型,支持向量机显示了分类性别和决策树的问题的最高准确性,显示了最高的方差分数(r 2 价值)关于预测年龄的问题。

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