Sign Language Digit Detection with MediaPipe and Machine Learning Algorithm

Safyzan Salim, M. M. A. Jamil, R. Ambar, R. Roslan, M. G. Kamardan
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引用次数: 1

Abstract

A major challenge when developing Machine Learning (ML) sign language recognition using wearable is how to efficiently translate the gestures based on the acquired sensors data. Conventional method utilizes data fusion based on the obtained sensors' information by producing mapping/lookup table for creating classification model of gestures corresponding sensor value. Although this method is effective, it increases programming complexity. Therefore, emerging technology that can improve the simplicity and provide accuracy of gestures' data processing is needed. This work experiments the artificial intelligence approach of the development of American Sign Language (ASL) detection using MediaPipe, a ready-to-use cross-platform machine learning framework for computer vision works and Google Teachable Machine a free web tool of machine learning model creation.
基于MediaPipe和机器学习算法的手语数字检测
在使用可穿戴设备开发机器学习(ML)手语识别时,一个主要挑战是如何根据获取的传感器数据有效地翻译手势。传统的方法是在获取传感器信息的基础上进行数据融合,通过生成映射/查找表来建立相应传感器值的手势分类模型。虽然这种方法是有效的,但它增加了编程的复杂性。因此,需要新兴技术来提高手势数据处理的简洁性和准确性。这项工作使用MediaPipe(一个现成的跨平台机器学习框架,用于计算机视觉作品)和Google teeable machine(一个免费的机器学习模型创建网络工具)来实验开发美国手语(ASL)检测的人工智能方法。
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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