Improving Recognition of SIBI Gesture by Combining Skeleton and Hand Shape Features

Erdefi Rakun, Noer FP Setyono
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引用次数: 2

Abstract

SIBI (Sign System for Indonesian Language) is an official sign language system used in school for hearing impairment students in Indonesia. This work uses the skeleton and hand shape features to classify SIBI gestures. In order to improve the performance of the gesture classification system, we tried to fuse the features in several different ways. The accuracy results achieved by the feature fusion methods are, in descending order of accuracy: 88.016%, when using sequence-feature-vector concatenation, 85.448% when using Conneau feature vector concatenation, 83.723% when using feature-vector concatenation, and 49.618% when using simple feature concatenation. The sequence-feature-vector concatenation techniques yield noticeably better results than those achieved using single features (82.849% with skeleton feature only, 55.530% for the hand shape feature only). The experiment results show that the combined features of the whole gesture sequence can better distinguish one gesture from another in SIBI than the combined features of each gesture frame. In addition to finding the best feature combination technique, this study also found the most suitable Recurrent Neural Network (RNN) model for recognizing SIBI. The models tested are 1-layer, 2-layer LSTM, and GRU. The experimental results show that the 2-layer bidirectional LSTM has the best performance.
结合骨架和手形特征改进SIBI手势识别
SIBI(印尼语手语系统)是印尼在学校为听障学生使用的官方手语系统。这项工作使用骨架和手部形状特征对SIBI手势进行分类。为了提高手势分类系统的性能,我们尝试了几种不同的方法来融合特征。特征融合方法的准确率由高到低依次为:序列-特征向量拼接的准确率为88.016%,Conneau特征向量拼接的准确率为85.448%,特征向量拼接的准确率为83.723%,简单特征拼接的准确率为49.618%。序列-特征-向量拼接技术的效果明显优于使用单一特征的拼接技术(仅骨骼特征为82.849%,仅手形特征为55.530%)。实验结果表明,在SIBI中,整个手势序列的组合特征比每个手势帧的组合特征能更好地区分一个手势和另一个手势。除了寻找最佳的特征组合技术外,本研究还找到了最适合用于SIBI识别的递归神经网络(RNN)模型。测试的模型有1层、2层LSTM和GRU。实验结果表明,两层双向LSTM具有最好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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