Real Time Human Gesture Recognition: Methods, Datasets and Strategies

Rameez Shamalik, S. Koli
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引用次数: 3

Abstract

Gestures are universal means of communication without any language barrier. Detecting gestures and recognition of its meaning are key steps for researchers in computer vision. Majority of the work is done in sign language already. Sign language datasets are compared with respect to their usability and diversity in terms of various signs. This paper highlights the available datasets from three dimensional body scans to hand action gestures. Their usability and strategies used to achieve the desired results are also discussed. Major neural networks are evaluated in terms of varied parameters and feutures. A Methodology for effective gesture recognition in real is proposed. Lastly Results achieved through an Open CV in combination with Sci-kit learn library based technique for gesture recognition are presented and analyzed in terms of efficacy and efficiency.
实时人类手势识别:方法、数据集和策略
手势是通用的交流方式,没有任何语言障碍。手势检测及其意义的识别是计算机视觉研究的关键步骤。大部分工作已经用手语完成了。手语数据集在各种符号方面的可用性和多样性进行了比较。本文重点介绍了从三维身体扫描到手势动作的可用数据集。还讨论了它们的可用性和实现预期结果的策略。主要的神经网络是根据不同的参数和特征来评估的。提出了一种现实中有效的手势识别方法。最后,介绍了基于Open CV和Sci-kit learn库技术的手势识别结果,并对其有效性和效率进行了分析。
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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