使用跳跃运动传感器的阿拉伯手语识别

A. S. Elons, Menna Ahmed, Hwaidaa Shedid, M. Tolba
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引用次数: 82

摘要

手语识别的研究人员定制了不同的传感器来捕捉手势。手套、数码相机、深度相机和Kinect在大多数系统中交替使用。由于符号的接近性,输入精度是达到高识别精度的一个非常重要的约束。虽然以前的系统实现了很高的识别精度,但由于签名速度、照明等方面的差异,它们在现实环境中受到稳定性的影响。本文开发了一种基于新型数字传感器Leap Motion的ArSL识别系统。这种传感器解决了基于视觉的系统中的主要问题,如肤色、照明等。Leap motion以3D数字格式捕捉手和手指的运动。传感器在运动的每一帧中抛出3D数字信息。这些时空特征被输入到多层感知器神经网络(MLP)中。该系统对50种不同的动态标志(无非手动特征可区分)进行了测试,对两种不同的人的识别准确率达到88%。虽然Leap motion可以准确地跟踪双手,但不幸的是,Leap motion无法跟踪非手动功能。这个系统可以通过添加其他传感器来跟踪其他非手动特征,如面部表情和身体姿势来增强。所提出的传感器可以与跳跃运动同时工作,以捕获所有标志的特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Arabic sign language recognition using leap motion sensor
Researchers in sign language recognition customized different sensors to capture hand signs. Gloves, digital cameras, depth cameras and Kinect were used alternatively in most systems. Due to signs closeness, input accuracy is a very essential constraint to reach a high recognition accuracy. Although previous systems accomplished high recognition accuracy, they suffer from stability in realistic environment due to variance in signing speed, lighting, etc... In this paper, a recognition system for ArSL has been developed based on a new digital sensor called “Leap Motion”. This sensor tackles the major issues in vision-based systems such as skin color, lighting etc... Leap motion captures hands and fingers movements in 3D digital format. The sensor throws 3D digital information in each frame of movement. These temporal and spatial features are fed into a Multi-layer perceptron Neural Network (MLP). The system was tested on 50 different dynamic signs (distinguishable without non-manual features) and the recognition accuracy reached 88% for two different persons. Although Leap motion tracks both hands accurately, unfortunately Leap motion does not track non-manual features. This system can be enhanced by adding other sensors to track other non-manual features such as facial expressions and body poses. The proposed sensor can work simultaneously with leap motion to capture all sign's features.
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