基金项目

基于神经网络CNN的三层提取且防过拟合的手势识别算法模型

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  • 南京理工大学紫金学院

网络出版日期: 2023-08-08

Research on a Three-layer Extraction and Anti-overfitting Gesture Recognition Algorithm
Based on Neural Network CNN

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  • Nanjing University of Science and Technology Zijin College

Online published: 2023-08-08

摘要

在CNN模型的基础上,提出一种名为Add_Layer_CNN的模型(简称A_L_CNN),是基于神经网络CNN的三层
提取且防过拟合的手势识别算法。A_L_CNN在结构上将传统CNN模型中的单层卷积池化改为三层卷积三次池化,并且加
入Dropout(随机失活)层防止过拟合。将A_L_CNN与传统CNN以及SVM进行比较。在多个测试集中的实验结果表明,提
出的A_L_CNN模型的平均准确率约为98.56%,传统CNN模型约为96.11%,SVM模型约为87.25%,因此提出的A_L_CNN模
型准确率更高。

本文引用格式

沈雅婷 张炜俊 白郁馨 .

基于神经网络CNN的三层提取且防过拟合的手势识别算法模型
[J]. 电脑与电信, 2023 , 1(3) : 49 -54 . DOI: 10.15966/j.cnki.dnydx.2023.03.007

Abstract

Based on the CNN model, a gesture recognition algorithm named Add_Layer_CNN (A_L_CNN for short) is proposed,
which is a three-layer extraction and anti-overfitting gesture recognition algorithm based on neural network CNN. A_L_CNN changes the single-layer convolution pooling in the traditional CNN model to three-layer convolution cubic pooling structurally, and adds the Dropout (random deactivation) layer to prevent overfitting. A_L_CNN is compared with traditional CNN and SVM. Experimental results in multiple test sets show that the average accuracy of the proposed A_L_CNN model is about 98.56%, that of the traditional CNN model is about 96.11%, and that of the SVM model is about 87.25%. Therefore, the accuracy of the proposed A_L_CNN model is higher.

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