{"title":"Koi fish classification based on HSV color space","authors":"Dhian Satria Yudha Kartika, D. Herumurti","doi":"10.1109/ICTS.2016.7910280","DOIUrl":null,"url":null,"abstract":"Digital image processing is still a great demand for research. Research related to digital image processing can be components of color, texture and pattern. This study focuses on the segmentation process of the body pattern of koi. Koi fish is a fish species originating from the country of Japan are much in demand by the people of Indonesia as diverse shades of color and a unique pattern. This study focuses on 9 koi fish that will be grouped into classes. From 9 of koi fish are 281 datasets were later processed into training data and data testing. The segmentation process becomes important to obtain high accuracy before the classification process. The proposed segmentation method using the K-Means as pre-processing. K-Means method used for the separation of the object and the background with two color features are worth 0 and 1. Results of pre-processing will be displayed on color feature is worth 1; object fish that has a value of Red, Green, Blue (RGB). The value in the subsequent feature extraction RGB colors into Hue Saturation Value (HSV). The process of using the HSV color feature extraction is proposed to obtain classification results with high accuracy values. The testing process using tools Weka 3.8.0 Classification with Naive Bayes method compared with Support Vector Machine (SVM) which both use the K-Fold Cross Validation. The test results showed the Naive Bayes without K-Fold Cross Validation and SVM using K-Fold Cross Validation together have a value of high accuracy of 97%. It can be concluded that the segmentation method using the K-Means and HSV capable of providing high accuracy impact on the testing process by 97%.","PeriodicalId":177275,"journal":{"name":"2016 International Conference on Information & Communication Technology and Systems (ICTS)","volume":"5 1","pages":"0"},"PeriodicalIF":0.0000,"publicationDate":"1900-01-01","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"35","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"2016 International Conference on Information & Communication Technology and Systems (ICTS)","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.1109/ICTS.2016.7910280","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"","JCRName":"","Score":null,"Total":0}
引用次数: 35
Abstract
Digital image processing is still a great demand for research. Research related to digital image processing can be components of color, texture and pattern. This study focuses on the segmentation process of the body pattern of koi. Koi fish is a fish species originating from the country of Japan are much in demand by the people of Indonesia as diverse shades of color and a unique pattern. This study focuses on 9 koi fish that will be grouped into classes. From 9 of koi fish are 281 datasets were later processed into training data and data testing. The segmentation process becomes important to obtain high accuracy before the classification process. The proposed segmentation method using the K-Means as pre-processing. K-Means method used for the separation of the object and the background with two color features are worth 0 and 1. Results of pre-processing will be displayed on color feature is worth 1; object fish that has a value of Red, Green, Blue (RGB). The value in the subsequent feature extraction RGB colors into Hue Saturation Value (HSV). The process of using the HSV color feature extraction is proposed to obtain classification results with high accuracy values. The testing process using tools Weka 3.8.0 Classification with Naive Bayes method compared with Support Vector Machine (SVM) which both use the K-Fold Cross Validation. The test results showed the Naive Bayes without K-Fold Cross Validation and SVM using K-Fold Cross Validation together have a value of high accuracy of 97%. It can be concluded that the segmentation method using the K-Means and HSV capable of providing high accuracy impact on the testing process by 97%.
数字图像处理仍然是一个很大的研究需求。研究与数字图像处理相关的成分可以是颜色、纹理和图案。本研究主要研究锦鲤体纹的分割过程。锦鲤是一种原产于日本的鱼类,由于颜色深浅不一,图案独特,深受印度尼西亚人民的欢迎。这项研究的重点是9种锦鲤,它们将被分类。从9种锦鲤中提取281个数据集,然后将其处理成训练数据和数据测试。为了在分类过程之前获得较高的准确率,分割过程变得非常重要。本文提出的分割方法采用k均值作为预处理。K-Means方法用于分离物体和背景,两个颜色特征值分别为0和1。预处理结果将显示颜色特征值为1;对象fish的值为Red, Green, Blue (RGB)。在随后的特征中提取RGB颜色的值为色相饱和度值(HSV)。提出了利用HSV颜色特征提取的方法,以获得具有较高准确率值的分类结果。测试过程中使用Weka 3.8.0分类工具用朴素贝叶斯方法与支持向量机(SVM)进行比较,两者都使用K-Fold交叉验证。测试结果表明,不使用K-Fold交叉验证的朴素贝叶斯和使用K-Fold交叉验证的支持向量机的准确率高达97%。可以得出结论,使用K-Means和HSV的分割方法能够在测试过程中提供97%的高精度影响。