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LBPV for Recognition of Sign Language at Sentence Level: An Approach Based on Symbolic Representation

机译:LBPV在句子级别识别手语:一种基于符号表示的方法

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Recognition of signs made by deaf people to produce equivalent textual description for normal people to communicate with deaf people is an essential and challenging task for the pattern recognition and image processing research community. Many researchers have made an attempt to standardize and to propose a sign language recognition system. To the best our knowledge, according to the literature survey, most of the work reported has concentrated at the fingerspelling level or at the word level, and less work at the sentence level has been reported. As sign languages are very abstract, fingerspelling or word level interpretation of signs seems to be a tedious and cumbersome task. Although existing research in sign language recognition is active and extensive, it still remains a challenge to achieve accurate recognition and interpretation of signs at the sentence level. In this paper, we made an attempt to address this problem by proposing an approach that exploits the texture description technique and symbolic data analysis concept to characterize and effectively represent a sign, taking into account the intra-class variations due to different signers or the same signers at different instances of time. In order to study the efficacy of the proposed approach, extensive experiments were carried out on a considerably large database of Indian sign language created by us. The experimental results demonstrated that the proposed method has shown good recognition performance in terms of F-measure rates.
机译:聋人签署的迹象表产生与聋人沟通的正常人员的等效文本描述是模式识别和图像处理研究界的必要和具有挑战性的任务。许多研究人员试图标准化和提出标志语言识别系统。根据我们的知识,根据文献调查,报告的大多数工作都集中在手指水平或在字样,并报告了句子级的工作较少。由于标志语言非常摘要,指数或字级别的迹象似乎是一个乏味和繁琐的任务。虽然现有的手语识别研究是有效和广泛的,但它仍然是实现准确识别和对句子水平的迹象的挑战。在本文中,我们尝试通过提出利用纹理描述技术和符号数据分析概念来表征和有效代表标志的方法来解决这个问题,考虑到由于不同的签名者或相同的阶级内变化签名者在不同的时间实例。为了研究所提出的方法的功效,在我们创建的大量印度手语上进行了广泛的实验。实验结果表明,该方法在F测量率方面表现出良好的识别性能。

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