Basic investigation of sign language motion classification by feature extraction using pre-trained network models

Kaito Kawaguchi, Hiromitsu Nishimura, Zhizhong Wang, Hiroshi Tanaka, Eiji Ohta
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引用次数: 2

Abstract

This paper presents a method of classifying sign language motion using the feature elements extracted by using pre-trained networks. Good results for the image recognition were obtained using this approach. Sign language motions are diverse and complex, so it is difficult to manually extract appropriate feature elements from them. Furthermore, it is not realistic to collect a lot of sign language motion data for applying to deep learning. Therefore, it is thought that the possibility of sign language recognition system will be greatly enhanced if a pre-trained network model can be used. Feature elements of 25 types of sign language motions were extracted using the pre-trained network models including AlexNet. Trained models of sign language motions were created by Long Short Time Memory (LSTM) using feature element data, and the classification performance was evaluated. The results confirmed that an average classification rate 70.6% can be obtained with feature elements using the VGG-16 network model and the trained model created by LSTM.
基于预训练网络模型特征提取的手语动作分类研究
提出了一种利用预训练网络提取的特征元素对手语动作进行分类的方法。该方法在图像识别中取得了良好的效果。手语动作多样、复杂,很难人工提取出合适的特征元素。此外,收集大量的手语运动数据用于深度学习是不现实的。因此,我们认为,如果可以使用预训练的网络模型,手语识别系统的可能性将大大提高。利用AlexNet等预先训练好的网络模型提取了25种手语动作的特征元素。利用长短时记忆(LSTM)方法,利用特征元素数据建立训练好的手语动作模型,并对其分类性能进行评价。结果证实,使用VGG-16网络模型和LSTM创建的训练模型对特征元素的平均分类率为70.6%。
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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