Application of improved K-Nearest Neighbor algorithm gesture recognition system in air conditioning control

Changzhi Li, Xi Yang, Hang Zhang, Linyuan Wang, Jiayi Wan
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Abstract

Given the inconvenience of air conditioning control methods based on control panels or remote controls, the application of an improved K-Nearest Neighbor (KNN) algorithm gesture recognition system based on the entropy weight method in air conditioning control is carried out. First, establish the correspondence between the ten commonly used gestures from 1 to 10 and the air conditioning control commands, then collect the gesture images from 1 to 10 through the camera, and then perform image preprocessing, gesture contour extraction, and feature calculation. In the Euclidean distance calculation process, the weight coefficient determined by the entropy weight method is added, and the trained improved KNN model is used to recognize the gesture, thereby improving the accuracy of the gesture recognition process. Simulation studies show that the accuracy of the gesture recognition system based on the improved KNN model is over 95%. This result is 9.7%-11.6% higher than that of the conventional KNN model before improvement and 11.8%-12.9% higher than the accuracy of the support vector machine algorithm (SVM) model. The experimental results show that the accuracy of the gesture recognition system based on the improved KNN algorithm is between 77.5% and 87.5%. Therefore, the method proposed in this paper has a good application prospect in air-conditioning control.
改进k近邻算法手势识别系统在空调控制中的应用
针对基于控制板或遥控器的空调控制方法的不便,提出了一种基于熵权法的改进k -最近邻(KNN)算法手势识别系统在空调控制中的应用。首先建立1 ~ 10的10个常用手势与空调控制命令的对应关系,然后通过摄像头采集1 ~ 10的手势图像,然后进行图像预处理、手势轮廓提取、特征计算。在欧几里得距离计算过程中,加入由熵权法确定的权系数,利用训练好的改进KNN模型对手势进行识别,从而提高手势识别过程的准确率。仿真研究表明,基于改进KNN模型的手势识别系统准确率在95%以上。该结果比改进前的传统KNN模型精度提高9.7% ~ 11.6%,比支持向量机算法(SVM)模型精度提高11.8% ~ 12.9%。实验结果表明,基于改进KNN算法的手势识别系统准确率在77.5% ~ 87.5%之间。因此,本文提出的方法在空调控制中具有良好的应用前景。
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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