Artificial neural networks for real-time optical hand posture recognition using a color-coded glove

F. Malric, A. El Saddik, N. Georganas
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引用次数: 8

Abstract

Optical pose recognition of the hand is an extremely attractive method for user-computer interaction in many applications. The image of a hand in the frame of a video camera is processed and the pose it is making, its current finger configuration, is detected. Often combined with position tracking, it allows for a very natural way of giving commands. Furthermore, it alleviates the use of sometimes cumbersome pieces of hardware. Within immersive virtual reality systems, the liberty of movement of the commanding hand requires extra considerations not normally dealt with by typical optical hand posture recognition interfaces for desktop system applications. This research proposes an artificial neural network approach to the recognition of hand postures. The optical capture inside an immersive virtual reality workspace and the extraction of features of this hand are facilitated by the use of a specially coded color glove.
使用颜色编码手套进行实时光学手部姿势识别的人工神经网络
在许多应用中,手的光学姿态识别是一种极具吸引力的人机交互方法。摄像机对一只手的图像进行处理,并检测到它的姿势,即当前手指的配置。通常结合位置跟踪,它允许一个非常自然的方式发出命令。此外,它还减轻了有时笨重的硬件的使用。在沉浸式虚拟现实系统中,指挥手的自由运动需要额外的考虑,而典型的桌面系统应用的光学手部姿势识别界面通常不会处理这些问题。本研究提出一种基于人工神经网络的手势识别方法。沉浸式虚拟现实工作空间内的光学捕获和这只手的特征提取通过使用特殊编码的彩色手套来实现。
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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