基于Mediapipe整体模型和基于MLP架构的LSTM的实时手势识别

Maricel L. Amit, Arnel C. Fajardo, Ruji P. Medina
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引用次数: 1

摘要

本研究利用MediaPipe整体模型和具有MLP架构的LSTM,利用计算机视觉捕捉实时手势,弥合听力多数人和聋人少数人之间的沟通差距。LSTM结构由84个神经元和30,1662个输入向量组成,这些输入向量将被传输到MLP模型。它有五层,对应的节点分别为84、56、28、14和7,第一层、第二层和第三层的dropout速率值为0.4,第四层为0.5。该方法经过1000 epoch的训练和验证,在实时手势识别中达到100%的准确率。此外,研究人员还设想在未来几年将手势检测纳入人机交互的许多现实应用中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recognition of Real-Time Hand Gestures using Mediapipe Holistic Model and LSTM with MLP Architecture
This study used computer vision to capture real-time hand gestures using the MediaPipe Holistic Model and LSTM with MLP architecture to bridge the communication gap between the hearing majority and the deaf minority. The structure of LSTM architecture was consist of 84 neurons with a 30, 1662 input vector that will be transmitted to the MLP model. It has five layers with corresponding nodes of 84, 56, 28,14, and 7 and a dropout with rate values of 0.4 in the first, second, and third layers, while 0.5 in fourth layer. The proposed method was trained and validated with 1000 epoch which achieved a 100 percent accuracy rate in the recognition of real-time hand gesture. Additionally, the researchers envisioned to incorporate hand gesture detection into a number of real-world applications for human-computer interaction in the coming years.
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