Implementing Gesture Recognition in a Sign Language Learning Application

D. Tan, Kevin Meehan
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引用次数: 1

Abstract

Artificial Intelligence (AI) has become increasingly prevalent in contemporary times. It has a wide variety of application areas which can almost replicate tasks that humans would normally perform. Many companies that are using this form of technology are making efficiencies by replacing humans with AI agents. However, researchers are still making efforts to find ways to enhance artificial intelligence to be more ‘human-like’. Gesture recognition is a form of human computer interaction in which AI has the potential to improve. Similar to humans, AI has the ability to ‘see’ and recognise gestures. Sign language is a language that a small proportion of the human population know and use. However, it is slowly gaining popularity and more resources are being provided in order to learn the language. Some people tend to go for in-person classes whereas others tend to go online or use applications to self-learn. This research discovers the success of technology such as gesture recognition to assist in learning sign language. The main research aim is to determine whether gesture recognition can assist self-learners in learning the language. The research has explored the use of Convolutional Neural Networks (CNN) to detect shapes that represent sign language form. The research demonstrated different accuracies based on a small sample size of 10 participants using three different types of datasets: non pre-processed, skin mask, and Sobel filtered images. The CNN model trained with the skin mask dataset was overall the most suitable model in identifying gestures from images; however, the CNN model trained with the non pre-processed dataset was slightly more accurate in recognising the American Sign Language (ASL) gestures in realtime. All CNN models demonstrated accuracy levels above 70% proving that the CNN has the ability to recognise sign language gestures.
在手语学习应用中实现手势识别
人工智能(AI)在当代变得越来越普遍。它具有广泛的应用领域,几乎可以复制人类通常执行的任务。许多使用这种技术的公司正在通过用人工智能代替人类来提高效率。然而,研究人员仍在努力寻找增强人工智能的方法,使其更“像人”。手势识别是人机交互的一种形式,人工智能在这方面有改进的潜力。与人类类似,人工智能也有“看到”和识别手势的能力。手语是一种只有一小部分人知道和使用的语言。然而,它正在慢慢流行起来,并且提供了更多的资源来学习这门语言。有些人倾向于参加面对面的课程,而另一些人则倾向于上网或使用应用程序自学。这项研究发现了手势识别等技术在帮助学习手语方面的成功。主要的研究目的是确定手势识别是否可以帮助自学者学习语言。这项研究探索了使用卷积神经网络(CNN)来检测代表手语形式的形状。该研究基于10名参与者的小样本,使用三种不同类型的数据集证明了不同的准确性:非预处理,皮肤面罩和索贝尔过滤图像。使用皮肤面具数据集训练的CNN模型总体上是最适合从图像中识别手势的模型;然而,使用未经预处理的数据集训练的CNN模型在实时识别美国手语(ASL)手势方面稍微准确一些。所有CNN模型的准确率都在70%以上,证明CNN有能力识别手语手势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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