Automatic sign categorization using visual data

Marek Hruúz
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Abstract

This paper presents a method of visual tracking in recordings of isolated signs and the usage of the tracked features for automatic sign categorization. The tracking method is based on skin color segmentation and is suitable for recordings of a sign language dictionary. The result of the tracking is the location and outer contour of head and both hands. These features are used to categorize the signs into several categories: movement of hands, contact of body parts, symmetry of trajectory, location of the sign.
使用可视数据的自动标志分类
本文提出了一种孤立符号记录的视觉跟踪方法,并利用跟踪特征对符号进行自动分类。该跟踪方法基于肤色分割,适用于手语词典的记录。跟踪的结果是头部和双手的位置和外部轮廓。这些特征被用来将标志分为几类:手的运动,身体部位的接触,轨迹的对称性,标志的位置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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