基于视觉人机交互的手指尖书写字母数字字符识别

Chien-Cheng Lee, Cheng-Yuan Shih, Bor-Shenn Jeng
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引用次数: 7

摘要

本文提出了一种基于视觉的手指尖手写字母数字字符识别系统,为人机交互提供了另一种选择。传统的手写识别系统是有限的,因为它们需要一个特定的或昂贵的输入设备,如笔、平板电脑或触摸板。最近,摄像头已经逐渐成为许多基于计算机的产品的标准组件。因此,指尖和摄像头的结合提供了一种灵活方便的输入设备。该系统结合了指尖检测、轨迹特征提取和字符识别。首先,对指尖运动轨迹进行跟踪和编码。然后,从轨迹中提取循环链码直方图作为特征。最后,采用s型径向基函数神经网络生长与修剪算法(SRBF-GAP)对手写字符进行识别。实验结果表明,该输入系统是可行和有效的。本研究还提出了相机输入设备的可能应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fingertip-Writing Alphanumeric Character Recognition for Vision-Based Human Computer Interaction
This paper proposes a vision-based fingertip handwriting alphanumeric character recognition system to provide an alternative for human computer interaction. Traditional handwriting recognition systems are limited because they require a specific or expensive input device, such as pen, tablet, or touch panel. Recently, cameras have gradually become standard components in many computer-based products. Therefore, a fingertip and camera combination provides a flexible and convenient input device. This proposed system combines fingertip detection, trajectory feature extraction, and character recognition. First, fingertip moving trajectories are tracked and recoded. Then, the proposed cyclic chain code histograms are extracted from the trajectories as features. Finally, the proposed system adopts the sigmoid radial basis function neural networks with growing and pruning algorithm (SRBF-GAP) to recognize handwritten characters. Experimental results show that the proposed novel input system is feasible and effective. This study also presents possible applications for camera input devices.
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