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Trajectory-based recognition of dynamic Persian sign language using hidden Markov model

机译:使用隐马尔可夫模型的基于轨迹的动态波斯手语识别

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Sign Language Recognition (SLR) is an important step in facilitating the communication among deaf people and the rest of society. Existing Persian sign language recognition systems are mainly restricted to static signs which are not very useful in everyday communications. In this study, a dynamic Persian sign language recognition system is presented. A collection of 1200 videos were captured from 12 individuals performing 20 dynamic signs with a simple white glove. The trajectory of the hands, along with hand shape information were extracted from each video using a simple region-growing technique. These time-varying trajectories were then modeled using Hidden Markov Model (HMM) with Gaussian probability density functions as observations. The performance of the system was evaluated in different experimental strategies. Signer-independent and signer-dependent experiments were performed on the proposed system and the average accuracy of 97.48% was obtained. The experimental results demonstrated that the performance of the system is independent of the subject and it can also perform excellently even with a limited number of training data.
机译:手语识别(SLR)是促进聋人与社会其他成员之间交流的重要一步。现有的波斯手语识别系统主要限于静态符号,这在日常通信中不是很有用。在这项研究中,提出了一种动态的波斯手语识别系统。用一个简单的白手套从12个人身上捕获了1200个视频,收集了20个动态信号。使用简单的区域生长技术从每个视频中提取出手的轨迹以及手的形状信息。然后使用高斯概率密度函数作为观测值的隐马尔可夫模型(HMM)对这些时变轨迹进行建模。在不同的实验策略中评估了系统的性能。在该系统上进行了独立于签名者和依赖签名者的实验,平均准确率为97.48%。实验结果表明,该系统的性能与主题无关,即使在训练数据数量有限的情况下,它也可以表现出色。

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