一种用于移动和嵌入式设备的手部姿势识别系统设计

Houssem Lahiani, M. Neji
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引用次数: 2

摘要

如今,智能手表和智能手机等智能设备在影响现代人生活质量的各个领域中无处不在。这些车载系统彻底改变了人类的行为,尤其是他们的交流方式。在这种情况下,为了改善使用这些设备的体验,我们的目标是开发一个系统,通过智能设备识别空中的手的姿势。在这项工作中,系统是基于直方图的定向梯度(HOG)特征和支持向量机(SVM)分类器。研究了HOG和SVM对移动设备的影响。为了进行这项研究,我们使用了“NUS I”数据集的改进版本,并获得了约94%的识别率。此外,我们在各种移动设备上进行了运行速度实验,以研究该任务对该嵌入式平台的影响。这项工作的主要贡献是测试了在低端智能手机上使用HOG描述符和SVM分类器在识别率和执行时间方面的影响。如今,智能手表和智能手机等智能设备在影响现代人生活质量的各个领域中无处不在。这些车载系统彻底改变了人类的行为,尤其是他们的交流方式。在这种情况下,为了改善使用这些设备的体验,我们的目标是开发一个系统,通过智能设备识别空中的手的姿势。在这项工作中,系统是基于直方图的定向梯度(HOG)特征和支持向量机(SVM)分类器。研究了HOG和SVM对移动设备的影响。为了进行这项研究,我们使用了“NUS I”数据集的改进版本,并获得了约94%的识别率。此外,我们在各种移动设备上进行了运行速度实验,以研究该任务对该嵌入式平台的影响。这项工作的主要贡献是测试了在低端智能手机上使用HOG描述符和SVM分类器在识别率和执行时间方面的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design of a Hand Pose Recognition System for Mobile and Embedded Devices
Today, smart devices such smart watches and smart cell phones are becoming ever-present in all fields that influence the quality of life of the modern people. These on-board systems have revolutionized the behavior of human beings and especially their way of communicating. In this context and to improve the experience of using these devices, we aim to develop a system that recognizes hand poses in the air by a smart device.  In this work, the system is based on Histogram of Oriented Gradient (HOG) features and Support Vector Machine (SVM) classifier. The impact of using HOG and SVM on mobile devices is studied. To carry out this study, we used an improved version of the "NUS I" dataset and obtained a recognition rate of approximately 94%. In addition, we conducted run speed experiments on various mobile devices to study the impact of this task on this embedded platform. The main contribution of this work is to test the impact of using the HOG descriptor and the SVM classifier in terms of recognition rate and execution time on low-end smartphones.Today, smart devices such smart watches and smart cell phones are becoming ever-present in all fields that influence the quality of life of the modern people. These on-board systems have revolutionized the behavior of human beings and especially their way of communicating. In this context and to improve the experience of using these devices, we aim to develop a system that recognizes hand poses in the air by a smart device.  In this work, the system is based on Histogram of Oriented Gradient (HOG) features and Support Vector Machine (SVM) classifier. The impact of using HOG and SVM on mobile devices is studied. To carry out this study, we used an improved version of the "NUS I" dataset and obtained a recognition rate of approximately 94%. In addition, we conducted run speed experiments on various mobile devices to study the impact of this task on this embedded platform. The main contribution of this work is to test the impact of using the HOG descriptor and the SVM classifier in terms of recognition rate and execution time on low-end smartphones.
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