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An algorithm on sign words extraction and recognition of continuous Persian sign language based on motion and shape features of hands

机译:基于手的运动和形态特征的连续波斯手语手势词提取与识别算法

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摘要

Sign language is the most important means of communication for deaf people. Given the lack of familiarity of non-deaf people with the language of deaf people, designing a translator system which facilitates the communication of deaf people with the surrounding environment seems to be necessary. The system of translating the sign language into spoken languages should be able to identify the gestures in sign language videos. Consequently, this study provides a system based on machine vision to recognize the signs in continuous Persian sign language video. This system generally consists of two main phases of sign words extraction and their classification. Several stages, including tracking and separating the sign words, are conducted in the sign word extraction phase. The most challenging part of this process is separation of sign words from video sequences. To do this, a new algorithm is presented which is capable of detecting accurate boundaries of words in the Persian sign language video. This algorithm decomposes sign language video into the sign words using motion and hand shape features, leading to more favorable results compared to the other methods presented in the literature. In the classification phase, separated words are classified and recognized using hidden Markov model and hybrid KNN-DTW algorithm, respectively. Due to the lack of proper database on Persian sign language, the authors prepared a database including several sentences and words performed by three signers. Simulation of proposed words boundary detection and classification algorithms on the above database led to the promising results. The results indicated an average rate of 93.73 % for accurate words boundary detection algorithm and the average rate of 92.4 and 92.3 % for words recognition using hands motion and shape features, respectively.
机译:手语是聋人最重要的交流手段。鉴于非聋人对聋人的语言不熟悉,因此有必要设计一种有助于聋人与周围环境交流的翻译系统。将手语翻译成口语的系统应该能够识别手语视频中的手势。因此,本研究提供了一种基于机器视觉的系统来识别连续波斯手语视频中的手语。该系统通常包括符号词提取及其分类的两个主要阶段。在符号词提取阶段中执行几个阶段,包括跟踪和分离符号词。此过程中最具挑战性的部分是将符号词与视频序列分离。为此,提出了一种新算法,该算法能够检测波斯手语视频中单词的准确边界。该算法利用运动和手形特征将手语视频分解为手语,与文献中介绍的其他方法相比,可获得更好的结果。在分类阶段,分别使用隐马尔可夫模型和混合KNN-DTW算法对分离的单词进行分类和识别。由于缺乏有关波斯手语的适当数据库,作者准备了一个数据库,其中包含由三个签署者执行的几个句子和单词。在上述数据库上对提出的单词边界检测和分类算法进行了仿真,结果令人鼓舞。结果表明,准确的单词边界检测算法的平均比率为93.73%,使用手部运动和形状特征的单词识别的平均比率分别为92.4%和92.3%。

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