基于CNN-LSTM网络的动态双手势识别

Vaidehi Sharma, Mohita Jaiswal, Abhishek Sharma, Sandeep Saini, Raghuvir Tomar
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引用次数: 2

摘要

数以百万计的言语听障人士经常使用各种手势,如手势、手的动作、嘴唇和面部表情来进行交流。印度手语(ISL)是一种词汇量很大的语言,因地区而异。一般来说,没有关于ISL顺序手势的公开数据集。因此,作者提出了包含33个类别的动态手势数据集,包括一年中的几个月、一周中的几天以及日常生活中使用的手势。这个数据集是用一种叫做连拍的技术收集的。为了实现快速评估,使用数据集的较小子集,其中12个类代表一年中的月份。由于它的符号,它非常复杂,每个类别平均包含5到6个手势。该模型设计用于低功耗嵌入式硬件,并讨论了在嵌入式硬件上部署特定神经网络的工作流程。此外,将所提出的模型与不同的顺序结构进行比较,以找到最适合动态手势识别的模型。
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Dynamic Two Hand Gesture Recognition using CNN-LSTM based networks
Millions of speech-hearing disabled persons routinely use various signs like hand shapes, movement of hands, lip, and facial expressions to communicate. Indian Sign Language(ISL) is a language that has a large vocabulary of words, which changes from region to region. Generally, there is no dataset publicly available on sequential gestures for ISL. Therefore, the authors have presented the dynamic hand gesture dataset having 33 categories, including months of the year, days of the week, and those used in day-today life. This dataset is collected with a technique called burst shots. To enable speedy evaluation, a smaller subset of the dataset is used with 12 classes represents the months of the year. It is pretty complex because of its signs, and each category contains an average of 5 to 6 gestures per class. The proposed model is designed to work on low-power embedded hardware and this paper also discusses the workflow for the deployment of the particular neural network on embedded hardware. Furthermore, the proposed model is compared with different sequential architectures to find the most suited model for dynamic hand gesture recognition.
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