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ONLINE WHOLE-WORD AND STROKE-BASED MODELING FOR HAND-WRITTEN LETTER RECOGNITION IN IN-CAR ENVIRONMENTS

机译:基于在线的全文和中风型在汽车上的手写字母识别建模

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摘要

A finger-written, camera-based, hand gesture recognition framework for English letters in an in-vehicle environment based on Hidden Markov models is proposed. Due to the nature of the constrained hand-movement situations on the steering column, we are confronted with at least two challenging research issues, namely varying illumination conditions and noisy hand gestures. The first difficulty is alleviated by utilizing the contrast for background-foreground separation and skin model adaptation. We also adopt sub-letter stroke modeling to reduce the noisy frames of the beginning and ending parts of the letter gestures followed by the trajectory re-normalization. Moreover, the geometric relationship between letter pairs is also utilized to distinguish highly confusable letters. Finally, score fusion between whole-letter and sub-stroke models can be used to further improve the performance. When compared with the baseline system with simple features, our experimental results show that an overall relative error reduction of 66.03% can be achieved by integrating the above four new pieces of information.
机译:提出了一种手指编写的相机,手势识别基于隐藏的马尔可夫模型的车载环境中的英语字母的手势识别框架。由于指导柱上受限制的手动情况的性质,我们面临至少两个具有挑战性的研究问题,即不同的照明条件和嘈杂的手势。利用背景前景分离和皮肤模型适应的对比度,可以缓解第一个困难。我们还采用子字母笔划建模,以减少字母手势的开头和结束部分的嘈杂帧,然后是轨迹重新标准化。此外,字母对之间的几何关系也用于区分高度可变的字母。最后,全字母和子行程模型之间的分数融合可用于进一步提高性能。与具有简单特征的基线系统相比,我们的实验结果表明,通过集成上述四条新信息,可以实现66.03%的总体相对误差减少。

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