Klasifikasi Anjing dan Kucing menggunakan Algoritma Linear Discriminant Analysis dan Support Vector Machine

Alethea Suryadibrata, Suryadi Darmawan Salim
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引用次数: 2

Abstract

One of the factors driving technological development is the increase in computers ability to complete various jobs. One of them is doing image processing, which is widely used in our daily life, such as the use of fingerprints, face/iris recognition barcodes, medical needs, and various other uses. Classification is one of the applications of image processing that is used the most. One algorithm that can be used for the development of image classification systems is Linear Discriminant Analysis (LDA) and Support Vector Machine (SVM). LDA is a feature extraction algorithm to find a subspace that separates classes well. SVM is a classification algorithm, based on the idea of finding a hyperplane that best divides a dataset into classes. In this study, LDA and SVM algorithms were tested on the dog and cat classification system, with the highest F- score calculation results being 0.69 with 200 training data and 50 testing data for cats and 0.64 with 200 training data and 30 testing data for dogs.
推动技术发展的因素之一是计算机完成各种工作的能力的提高。其中之一是做图像处理,它在我们的日常生活中被广泛使用,比如使用指纹,人脸/虹膜识别条形码,医疗需求,以及其他各种用途。分类是图像处理中使用最多的应用之一。一种可用于开发图像分类系统的算法是线性判别分析(LDA)和支持向量机(SVM)。LDA是一种特征提取算法,用于寻找能很好地分离类的子空间。支持向量机是一种分类算法,基于寻找一个最能将数据集划分为类的超平面的思想。在本研究中,LDA和SVM算法在狗猫分类系统上进行了测试,猫200个训练数据和50个测试数据的F- score计算结果最高为0.69,狗200个训练数据和30个测试数据的F- score计算结果最高为0.64。
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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