面向梯度直方图法在皮肤癌患者图像分类中的修正

Arif Ridho Lubis, S. Prayudani, Y. Fatmi, Y. Y. Lase, Al-Khowarizmi
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引用次数: 1

摘要

数据挖掘中的分类是一种识别所有类型数据的技术。其中数据可以是文本、数字、图像和其他形式。KNN算法是一种较好的分类技术。KNN算法是一种基于欧氏距离的距离搜索算法。需要使用HOG过程进行图像数据分类来修改KNN。本文的目的是使用KNN方法对皮肤癌患者进行分类,其中使用直方图的定向梯度(HOG)过程辅助提取皮肤癌患者的数据,皮肤癌患者分为良性和恶性癌症。然而,在本文中,这篇文章中包含的图像是皮肤癌患者的图片,分为恶性和良性。获得的数据为660个数据集,其中630个作为训练数据,30个作为测试数据。培训和测试进展顺利,MAPE为0.06705477 %。使得该分类过程具有较小的效度,可以被接受。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
In Image Classification of Skin Cancer Sufferers: Modification of K-Nearest Neighbor with Histogram of Oriented Gradients Approach
Classification in data mining is one technique in recognizing all types of data. Where data can be in the form of text, numeric, images and others. One of the superior classification techniques is the KNN algorithm. The KNN algorithm is a distance search using Euclidean distance. image data classification using the HOG process is needed to modify the KNN. The purpose of this paper is to classify patients with classifying skin cancer patients using the KNN method where the Histogram of Oriented Gradients (HOG) process is used to assist in extracting data for skin cancer patients, which consists of benign and malignant cancers. However, in this paper, the images included in this article are pictures of skin cancer sufferers, which consist of malignant and benign. The data obtained were 660 datasets of which 630 were used as training data and 30 were used as test data. The training and testing went well, this was shown by getting a MAPE of O.06705477%. So that the classification process can be accepted because it shows a small validity.
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