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首页> 外文期刊>Human-Machine Systems, IEEE Transactions on >Glove-Based Continuous Arabic Sign Language Recognition in User-Dependent Mode
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Glove-Based Continuous Arabic Sign Language Recognition in User-Dependent Mode

机译:用户依赖模式下基于手套的连续阿拉伯手语识别

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摘要

In this paper, we propose a glove-based Arabic sign language recognition system using a novel technique for sequential data classification. We compile a sensor-based dataset of 40 sentences using an 80-word lexicon. In the dataset, hand movements are captured using two DG5-VHand data gloves. Data labeling is performed using a camera to synchronize hand movements with their corresponding sign language words. Low-complexity preprocessing and feature extraction techniques are applied to capture and emphasize the temporal dependence of the data. Subsequently, a Modified k-Nearest Neighbor (MKNN) approach is used for classification. The proposed MKNN makes use of the context of feature vectors for the purpose of accurate classification. The proposed solution achieved a sentence recognition rate of 98.9%. The results are compared against an existing vision-based approach that uses the same set of sentences. The proposed solution is superior in terms of classification rates while eliminating restrictions of vision-based systems.
机译:在本文中,我们提出了一种基于手套的阿拉伯手语识别系统,该系统使用一种新颖的技术进行顺序数据分类。我们使用80个单词的词典来编译基于传感器的40个句子的数据集。在数据集中,使用两个DG5-VHand数据手套捕获手部动作。使用相机执行数据标记,以使手部动作与其相应的手语单词同步。低复杂度预处理和特征提取技术被应用于捕获和强调数据的时间依赖性。随后,将改进的k最近邻(MKNN)方法用于分类。所提出的MKNN利用特征向量的上下文来进行精确分类。提出的解决方案实现了98.9%的句子识别率。将结果与使用相同句子的现有基于视觉的方法进行比较。所提出的解决方案在分类率方面优越,同时消除了基于视觉的系统的限制。

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