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Iconic and multi-stroke gesture recognition

机译:标志性和多冲程手势识别

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摘要

Many handwritten gestures, characters, and symbols comprise multiple pendown strokes separated by penup strokes. In this paper, a large number of features known from the literature are explored for the recognition of such multi-stroke gestures. Features are computed from a global gesture shape. From its constituent strokes, the mean and standard deviation of each feature are computed. We show that using these new stroke-based features, significant improvements in classification accuracy can be obtained between 10% and 50% compared to global feature representations. These results are consistent over four different databases, containing iconic pen gestures, handwritten symbols, and upper-case characters. Compared to two other multi-stroke recognition techniques, improvements between 25% and 39% are achieved, averaged over all four databases.
机译:许多手写手势,字符和符号包括多个笔下笔画,笔下笔画分开。在本文中,探索了从文献中得知的大量特征,以识别这种多冲程手势。根据全局手势形状计算特征。根据其组成笔划,计算每个特征的平均值和标准偏差。我们显示,使用这些新的基于笔触的功能,与全局功能表示相比,可以在10%到50%之间获得显着的分类精度改善。这些结果在四个不同的数据库(包括标志性笔手势,手写符号和大写字符)上是一致的。与其他两种多冲程识别技术相比,在所有四个数据库中平均可提高25%至39%。

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