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Application of ANN in Gait Features of Children for Gender Classification

机译:人工神经网络在儿童步态特征中的性别分类应用

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This paper presents the application of ANN in gender classification for children in Malaysia. The study involved kinematic data from 31 healthy children aged between 6 to 12 years old. The joint angles of hip, knee, ankle and pelvic were obtained using Vicon Nexus motion system at Human Motion and Gait Analysis Laboratory, UiTM Shah Alam. From 36 gait features, only 8 gait features that significantly differentiate between boys and girls. The 8 gait features data were then fed into the ANN models to classify the gender of children. An addition of synthetic data was used to improve the network. From performance of ANN gender classification models, the best model for this study is ANN-SCG model with 9 hidden neurons. The result shows that the performances of the ANN classification model for original gait features data were increased by 86.42% of accuracy when the synthetic data were added. The study showed that ANN application required a large number of sample size in order to produce good classification model.
机译:本文介绍了人工神经网络在马来西亚儿童性别分类中的应用。该研究涉及来自31名6至12岁健康儿童的运动学数据。使用UiTM Shah Alam人体运动和步态分析实验室的Vicon Nexus运动系统获得髋,膝,踝和骨盆的关节角度。从36个步态特征中,只有8个步态特征显着区分男孩和女孩。然后将8个步态特征数据输入到ANN模型中,对儿童的性别进行分类。添加了综合数据以改善网络。从ANN性别分类模型的性能来看,本研究的最佳模型是具有9个隐藏神经元的ANN-SCG模型。结果表明,当添加综合数据后,原始步态特征数据的神经网络分类模型的准确率提高了86.42%。研究表明,人工神经网络的应用需要大量的样本量才能产生良好的分类模型。

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