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Dynamic Hand Gesture Recognition Based on 3D Convolutional Neural Network Models

机译:基于3D卷积神经网络模型的动态手势识别。

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Hand gesture is a natural communication method which could be used to create a more convenient interface for human-robot interaction. In this study, we use the simplest laptop camera as an input sensor. We designed a 3D hand gesture recognition model. The model is trained with the Jester dataset. After being trained about one day in a MacBook Pro (i5 2.3GHz), the model reached an average accuracy of 90%. We built a web application that implements the hand gesture recognition system and provides the recognition service to users.
机译:手势是一种自然的通信方法,可用于为人机交互创建更方便的界面。在这项研究中,我们使用最简单的笔记本电脑相机作为输入传感器。我们设计了一个3D手势识别模型。该模型使用Jester数据集进行训练。在MacBook Pro(i5 2.3GHz)上接受了大约一天的培训后,该模型的平均准确率达到了90%。我们构建了一个Web应用程序,该应用程序实现了手势识别系统并向用户提供了识别服务。

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