从图像序列中提取三维手部形状和姿势用于手语识别

H. Fillbrandt, Suat Akyol, K. Kraiss
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引用次数: 60

摘要

提出了一种从单目图像序列中提取自然手参数的新方法。目的是通过提供有关手指星座和3D手部姿势的详细信息来改进基于视觉的手语识别系统。因此,手是由一组2D外观模型来建模的,每个模型代表了三维手的形状和姿势的有限变化范围。单个模型根据相应手状态的自然邻域相互连接。在图像序列期间,对当前相邻模型之一执行必要的模型转换。利用线性回归估计的关系,从当前模型的形状和纹理参数计算自然手参数。该方法对后续帧之间的较大差异和较差的图像质量具有鲁棒性。它可以实时实现,并且具有良好的处理遮挡和部分缺失图像信息的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Extraction of 3D hand shape and posture from image sequences for sign language recognition
We propose a novel method for extracting natural hand parameters from monocular image sequences. The purpose is to improve a vision-based sign language recognition system by providing detail information about the finger constellation and the 3D hand posture. Therefore, the hand is modelled by a set of 2D appearance models, each representing a limited variation range of 3D hand shape and posture. The single models are linked to each other according to the natural neighbourhood of the corresponding hand status. During an image sequence, necessary model transitions are executed towards one of the current neighbour models. The natural hand parameters are calculated from the shape and texture parameters of the current model, using a relation estimated by linear regression. The method is robust against large differences between subsequent frames and also against poor image quality. It can be implemented in real-time and offers good properties to handle occlusion and partly missing image information.
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