Personal authentication and recognition of aerial input Hiragana using deep neural network

H. Mimura, Momoyo Ito, S. Ito, M. Fukumi
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Abstract

We use Leap Motion and a deep neural network to perform personal authentication and character recognition of all hiragana characters entered in the air. We use Leap Motion to detect the index finger and store its trajectory as time series data. The input data was pre-processed to unify the data length by linear interpolation. For identification, the accuracy of Long Short Term Memory (LSTM) was compared with Support Vector Machine (SVM). As a result, SVM and LSTM achieved 97.25% and 98.18% F-measure in character recognition, respectively. In personal authentication, SVM has an accuracy of 92.45%, False Acceptance Rate (FAR) was 0.73%, and False Rejection Rate (FRR) was 41.59%. On the other hand, LSTM had an accuracy of 96.13%, FAR of 1.73% and FRR of 14.55%. Overall, the LSTM performed better than the SVM.
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基于深度神经网络的航拍输入平假名的个人认证与识别
我们使用Leap Motion和深度神经网络对所有进入空中的平假名字符进行个人认证和字符识别。我们使用Leap Motion来检测食指并将其轨迹存储为时间序列数据。对输入数据进行预处理,采用线性插值法统一数据长度。在识别方面,将长短期记忆(LSTM)与支持向量机(SVM)的准确率进行了比较。结果表明,SVM和LSTM在字符识别中的F-measure分别达到97.25%和98.18%。在个人身份验证中,SVM准确率为92.45%,错误接受率(FAR)为0.73%,错误拒绝率(FRR)为41.59%。LSTM的准确率为96.13%,FAR为1.73%,FRR为14.55%。总体而言,LSTM优于SVM。
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