Sign to Speech Convolutional Neural Network-Based Filipino Sign Language Hand Gesture Recognition System

Mark Benedict D. Jarabese, Charlie S. Marzan, Jenelyn Q. Boado, Rushaine Rica Mae F. Lopez, Lady Grace B. Ofiana, Kenneth John P. Pilarca
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引用次数: 5

Abstract

Sign Language Recognition is a breakthrough for helping deaf-mute people and has been studied for many years. Unfortunately, every research has its own limitation and are still unable to be used commercially. In this study, we developed a real-time Filipino sign language hand gesture recognition system based on Convolutional Neural Network. A manually gathered dataset consists of 237 video clips with 20 different gestures. This dataset underwent data cleaning and augmentation using image pre-processing techniques. The Inflated 3D convolutional neural network was used to train the Filipino sign language recognition model. The experiments considered retraining the pretrained model with top layers and all layers. As a result, the model retrained with all layers using imbalanced dataset was shown to be more effective and achieving accuracy up to 95% over the model retrained with top layers to classify different signs or hand gestures. Using the Rapid Application Development model, the Filipino sign language recognition application was developed and assessed its usability by the target users. With different parameters used in the evaluation, the application found to be effective and efficient.
基于卷积神经网络的菲律宾手语手势识别系统
手语识别是帮助聋哑人的一个突破,已经研究了很多年。不幸的是,每一项研究都有自己的局限性,仍然无法用于商业。在这项研究中,我们开发了一个基于卷积神经网络的实时菲律宾手语手势识别系统。手动收集的数据集由237个视频片段组成,其中包含20种不同的手势。该数据集使用图像预处理技术进行了数据清洗和增强。利用膨胀三维卷积神经网络训练菲律宾语手语识别模型。实验考虑对预训练模型进行顶层和全层再训练。结果,使用不平衡数据集的所有层重新训练的模型比使用顶层重新训练的模型更有效,准确率高达95%,可以对不同的手势或手势进行分类。使用快速应用开发模型,开发菲律宾语手语识别应用程序,并由目标用户评估其可用性。采用不同的参数进行评价,发现该应用程序是有效和高效的。
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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