Gesture Recognition of Filipino Sign Language Using Convolutional and Long Short-Term Memory Deep Neural Networks

Knowledge Pub Date : 2024-07-08 DOI:10.3390/knowledge4030020
Karl Jensen Cayme, Vince Andrei Retutal, Miguel Edwin Salubre, P. Astillo, Luis Gerardo Cañete, Gaurav Choudhary
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Abstract

In response to the recent formalization of Filipino Sign Language (FSL) and the lack of comprehensive studies, this paper introduces a real-time FSL gesture recognition system. Unlike existing systems, which are often limited to static signs and asynchronous recognition, it offers dynamic gesture capturing and recognition of 10 common expressions and five transactional inquiries. To this end, the system sequentially employs cropping, contrast adjustment, grayscale conversion, resizing, and normalization of input image streams. These steps serve to extract the region of interest, reduce the computational load, ensure uniform input size, and maintain consistent pixel value distribution. Subsequently, a Convolutional Neural Network and Long-Short Term Memory (CNN-LSTM) model was employed to recognize nuances of real-time FSL gestures. The results demonstrate the superiority of the proposed technique over existing FSL recognition systems, achieving an impressive average accuracy, recall, and precision rate of 98%, marking an 11.3% improvement in accuracy. Furthermore, this article also explores lightweight conversion methods, including post-quantization and quantization-aware training, to facilitate the deployment of the model on resource-constrained platforms. The lightweight models show a significant reduction in model size and memory utilization with respect to the base model when executed in a Raspberry Pi minicomputer. Lastly, the lightweight model trained with the quantization-aware technique (99%) outperforms the post-quantization approach (97%), showing a notable 2% improvement in accuracy.
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使用卷积和长短期记忆深度神经网络识别菲律宾手语的手势
针对菲律宾手语(FSL)最近的正式化和缺乏全面研究的问题,本文介绍了一种菲律宾手语实时手势识别系统。现有系统往往局限于静态手势和异步识别,而该系统则不同,它提供动态手势捕捉,并可识别 10 种常见表达方式和 5 种事务性询问。为此,系统依次对输入图像流进行裁剪、对比度调整、灰度转换、大小调整和归一化处理。这些步骤的目的是提取感兴趣的区域,减少计算负荷,确保输入大小一致,并保持一致的像素值分布。随后,采用卷积神经网络和长短期记忆(CNN-LSTM)模型来识别实时 FSL 手势的细微差别。结果表明,与现有的 FSL 识别系统相比,所提出的技术更胜一筹,其平均准确率、召回率和精确率均达到了令人印象深刻的 98%,准确率提高了 11.3%。此外,本文还探讨了轻量级转换方法,包括后量化和量化感知训练,以方便在资源有限的平台上部署模型。与基础模型相比,轻量级模型在 Raspberry Pi 微型计算机上执行时,模型大小和内存利用率都有显著降低。最后,使用量化感知技术训练的轻量级模型(99%)优于后量化方法(97%),准确率显著提高了 2%。
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