STUDY ON THE INFLUENCE OF PCA PRE-TREATMENT ON PIG FACE IDENTIFICATION WITH SUPPORT VECTOR MACHINE (SVM)

IF 0.6 Q4 AGRICULTURAL ENGINEERING
Hong-Ping Yan, Zhiwei Hu, Qingliang Cui
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引用次数: 0

Abstract

To explore the application of traditional machine learning model in the intelligent management of pigs, in this paper, the influence of Principal Components Analysis (this method is simply referred to as PCA) pre-treatment on pig face identification with Support Vector Machine (this method is simply referred to as SVM) is studied. By testing method, the kernel functions of two testing schemes, one adopting SVM alone and the other adopting PCA+SVM, were determined to be poly and Radial Basis Function, whose coefficients were 0.03 and 0.01, respectively. With individual identification tests carried out on 10 pigs respectively, the identification accuracy was increased to 88.85% from 83.66% by the improved scheme, also the training time as well as testing time were reduced to 30.1% and 20.97% of the original value in the earlier scheme, respectively. It indicates that PCA pre-treatment had a positive effect on improving the efficiency of individual pig identification with SVM. It provides experimental support for the mobile terminals and embedded application of SVM classifiers.
pca预处理对支持向量机猪人脸识别的影响研究
为了探索传统机器学习模型在生猪智能管理中的应用,本文研究了主成分分析(该方法简称PCA)预处理对支持向量机(该方法缩写SVM)人脸识别的影响。通过测试方法,确定两种测试方案(一种单独采用SVM,另一种采用PCA+SVM)的核函数为多项式和径向基函数,其系数分别为0.03和0.01。通过对10头猪分别进行个体鉴定试验,改进方案的鉴定准确率从83.66%提高到88.85%,训练时间和试验时间分别减少到早期方案的30.1%和20.97%。结果表明,主成分分析预处理对提高支持向量机识别个体猪的效率有积极作用。它为支持向量机分类器的移动终端和嵌入式应用提供了实验支持。
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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来源期刊
INMATEH-Agricultural Engineering
INMATEH-Agricultural Engineering AGRICULTURAL ENGINEERING-
CiteScore
1.30
自引率
57.10%
发文量
98
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