利用卷积神经网络和不同图像处理技术的迁移学习模型对印度手语字符进行分类

Atharva Dumbre, Shrenik Jangada, Shreyas Gosavi, Jaya Gupta
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引用次数: 1

摘要

在视觉空间形态方面,手语被认为是一种自然的语言,也是一种成熟的语言。它具有口语的所有语言特征(从音韵到句法)。手语是一种用手代替语言的交流形式。它用各种各样的符号来传达思想和概念。对于ISL静态字符识别,本文提出了一种卷积神经网络(CNN)架构。本文比较了在CNN架构上测试的不同特征提取技术。我们手工制作了用于训练CNN模型的数据集,以便尽可能接近现实场景,在现实场景中评估模型的可行性。该方法成功实现,准确率达99.90%,优于现有的大多数方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification Of Indian Sign Language Characters Utilizing Convolutional Neural Networks And Transfer Learning Models With Different Image Processing Techniques
In terms of visual-spatial modality, the sign language is considered to be a natural as well as a full-fledged language. It has all of the linguistic characteristics of spoken language (from phonology to syntax). Sign language is a form of communication in which the hands are used instead of words. It uses a variety of signs to convey thoughts and concepts. For ISL static character recognition, we propose a Convolutional Neural Network (CNN) architecture in this paper. Comparison of different feature extraction techniques tested on CNN architecture is done in this particular paper. We hand-crafted the dataset used to train the CNN model in order to come as near to the real-life scenario in which the model’s viability would be assessed as possible. The proposed method was successfully implemented with a 99.90 percent accuracy, which is better than the majority of currently available methods.
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