Improved Recognition of Kurdish Sign Language Using Modified CNN

Comput. Pub Date : 2024-01-28 DOI:10.3390/computers13020037
Karwan M. Hama Rawf, A. O. Abdulrahman, A. Mohammed
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Abstract

The deaf society supports Sign Language Recognition (SLR) since it is used to educate individuals in communication, education, and socialization. In this study, the results of using the modified Convolutional Neural Network (CNN) technique to develop a model for real-time Kurdish sign recognition are presented. Recognizing the Kurdish alphabet is the primary focus of this investigation. Using a variety of activation functions over several iterations, the model was trained and then used to make predictions on the KuSL2023 dataset. There are a total of 71,400 pictures in the dataset, drawn from two separate sources, representing the 34 sign languages and alphabets used by the Kurds. A large collection of real user images is used to evaluate the accuracy of the suggested strategy. A novel Kurdish Sign Language (KuSL) model for classification is presented in this research. Furthermore, the hand region must be identified in a picture with a complex backdrop, including lighting, ambience, and image color changes of varying intensities. Using a genuine public dataset, real-time classification, and personal independence while maintaining high classification accuracy, the proposed technique is an improvement over previous research on KuSL detection. The collected findings demonstrate that the performance of the proposed system offers improvements, with an average training accuracy of 99.05% for both classification and prediction models. Compared to earlier research on KuSL, these outcomes indicate very strong performance.
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使用改进型 CNN 提高库尔德手语识别率
聋人社会支持手语识别(SLR),因为它可用于个人交流、教育和社交教育。本研究介绍了使用改进的卷积神经网络(CNN)技术开发库尔德手语实时识别模型的结果。识别库尔德字母是本研究的主要重点。通过多次迭代使用各种激活函数对模型进行了训练,然后用于对 KuSL2023 数据集进行预测。该数据集中共有 7.14 万张图片,分别来自两个不同的来源,代表了库尔德人使用的 34 种手语和字母。大量真实用户图片被用来评估所建议策略的准确性。本研究提出了一种用于分类的新型库尔德手语(KuSL)模型。此外,手部区域必须在背景复杂的图片中进行识别,包括光线、环境和不同强度的图片颜色变化。通过使用真实的公共数据集、实时分类和个人独立性,同时保持较高的分类准确性,所提出的技术比以往的 KuSL 检测研究有所改进。收集到的研究结果表明,拟议系统的性能有所提高,分类和预测模型的平均训练准确率达到 99.05%。与之前对 KuSL 的研究相比,这些结果表明系统性能非常强大。
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