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CNN based feature extraction and classification for sign language

机译:基于CNN的特征提取与分类手语

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摘要

Hand gesture is one of the most prominent ways of communication since the beginning of the human era. Hand gesture recognition extends human-computer interaction (HCI) more convenient and flexible. Therefore, it is important to identify each character correctly for calm and error-free HCI. Literature survey reveals that most of the existing hand gesture recognition (HGR) systems have considered only a few simple discriminating gestures for recognition performance. This paper applies deep learning-based convolutional neural networks (CNNs) for robust modeling of static signs in the context of sign language recognition. In this work, CNN is employed for HGR where both alphabets and numerals of ASL are considered simultaneously. The pros and cons of CNNs used for HGR are also highlighted. The CNN architecture is based on modified AlexNet and modified VGG16 models for classification. Modified pre-trained AlexNet and modified pre-trained VGG16 based architectures are used for feature extraction followed by a multiclass support vector machine (SVM) classifier. The results are evaluated based on different layer features for best recognition performance. To examine the accuracy of the HGR schemes, both the leave-one-subject-out and a random 70-30 form of cross-validation approach were adopted. This work also highlights the recognition accuracy of each character, and their similarities with identical gestures. The experiments are performed in a simple CPU system instead of high-end GPU systems to demonstrate the cost-effectiveness of this work. The proposed system has achieved a recognition accuracy of 99.82%, which is better than some of the state-of-art methods.
机译:手势是人类时代开始以来最突出的沟通方式之一。手势识别延伸人机交互(HCI)更方便灵活。因此,重要的是要正确地识别每个角色,以便保持冷静和无差错的HCI。文献调查显示,大多数现有的手势识别(HGR)系统仅考虑了一些用于识别性能的简单辨别手势。本文应用深入的学习卷积神经网络(CNNS),用于在手语识别的背景下的静态符号的鲁棒建模。在这项工作中,CNN用于HGR,其中同时考虑ASL的字母和数字。用于HGR的CNN的优缺点也突出显示。 CNN架构基于修改的AlexNet和修改的VGG16模型进行分类。修改的预训练验镜验镜和修改的预训练的VGG16基于VGG16的体系结构用于特征提取,然后是多字符支持向量机(SVM)分类器。结果基于不同的层特征来评估以获得最佳识别性能。为了检查HGR计划的准确性,采用休假和随机70-30形式的交叉验证方法。这项工作还突出了每个角色的识别准确性,以及它们与相同手势的相似性。实验在简单的CPU系统中进行,而不是高端GPU系统,以展示这项工作的成本效益。所提出的系统实现了99.82%的识别准确性,这比一些最先进的方法更好。

著录项

  • 来源
    《Multimedia Tools and Applications》 |2021年第2期|3051-3069|共19页
  • 作者单位

    Speech and Image Processing Group Electronics and Communication Engineering Department National Institute of Technology Silchar Assam 788010 India;

    Speech and Image Processing Group Electronics and Communication Engineering Department National Institute of Technology Silchar Assam 788010 India;

    Speech and Image Processing Group Electronics and Communication Engineering Department National Institute of Technology Silchar Assam 788010 India;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Hand gesture; CNN; American sign language (ASL); Human-computer interface (HCI);

    机译:手势;CNN;美国手语(ASL);人机界面(HCI);

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