Chinese Finger Sign Language Recognition Method with ResNet Transfer Learning

Varin Chouvatut, Benjamas Panyangam, Jiayu Huang
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Abstract

Sign language is one of the most effective ways to help hearing-impaired people to communicate with other people. Although deep learning methods have been used in recognition, there are still problems with finger sign language recognition. The major issue is that the gradient approach usually fails, or the obtained recognition accuracy is not high when the depth is increasing. We thus propose a Chinese finger sign language recognition method based on ResNet and Adam optimizer together with additional image processing techniques to gain higher accuracy. We then compare our recognition results to other convolutional neural network models which are widely used deep learning techniques for recognition. Even though we have a small size of the dataset, our proposed deep learning method for finger sign recognition still gives a higher recognition rate. Also, our prototypical method provides the capability to be applied to other recognition tasks of different gestures or objects from image datasets.
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基于ResNet迁移学习的中文手语识别方法
手语是帮助听障人士与其他人交流的最有效方式之一。虽然深度学习方法已经在识别中得到了应用,但在手语识别中仍然存在一些问题。主要问题是梯度法在深度增加时往往会失败,或者得到的识别精度不高。为此,我们提出了一种基于ResNet和Adam优化器的中文手语识别方法,并结合其他图像处理技术来提高识别精度。然后,我们将我们的识别结果与广泛用于识别的深度学习技术的其他卷积神经网络模型进行比较。尽管我们的数据集很小,但我们提出的深度学习方法仍然可以提供更高的识别率。此外,我们的原型方法提供了应用于图像数据集中不同手势或物体的其他识别任务的能力。
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