Implementasi Metode K-Nearest Neighbor dalam Mengklasifikasikan Kesegaran Ikan Kuro Menggunakan Citra

M. Alamsyah, M. Nadjib
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引用次数: 0

Abstract

Kurofish (Eleutheronematetradactylum) is a type of fish that spreads throughout Indonesian waters, with different local names in each region. On the east coast of Sumatra it is known by the name of sukain fish while on the north coast of Java it is known as kuro fish. Freshness of fish is one of the benchmarks for consumers in choosing quality or good fish for consumption, because fresh fish is rich in protein and nutrients. Fish is also known to contain omega 3 fatty acids which are beneficial for brain growth, as well as calcium, vitamin D and phosphorus which are good for bones. However, the nutritional content contained in the fish may not be optimal anymore if it is consumed in a condition that is not fresh. Not only that, consumption of fish that is not fresh which leads to rotten conditions can make someone poisoned. Fish freshness checks can be done through microbiological and chemical analysis, but this method is less effective because it requires a lot of manpower, is quite expensive, and takes longer. For traders, the level of freshness of fish is determined in the traditional way, namely by observing, holding and smelling the smell of fish, sometimes there is also something that escapes observation so that there are still fish that are not fresh. To reduce these problems, the authors apply the K-Nearest Neighbor method in classifying the freshness of fish using images based on the color of the fish. By using the Kuro Fish type, using Matlab tools and in the results of the study using the K-Nearest Neighbor method with 40 training data and producing an accuracy of 100% and 16 test data with 7 correct data resulting in poor accuracy, which is 43 ,75%.
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用图像对库洛鱼进行分类的最接近的方法实施
黑鱼(Eleutheronematetradactylum)是一种分布在印度尼西亚水域的鱼,在每个地区都有不同的当地名称。在苏门答腊岛的东海岸,它被称为sukain鱼,而在爪哇的北部海岸,它被称为kuro鱼。鱼类的新鲜度是消费者选择优质或优质鱼类消费的基准之一,因为新鲜鱼类含有丰富的蛋白质和营养素。众所周知,鱼还含有有益于大脑发育的omega - 3脂肪酸,以及对骨骼有益的钙、维生素D和磷。然而,如果在不新鲜的情况下食用,鱼所含的营养成分可能不再是最佳的。不仅如此,食用不新鲜的鱼会导致腐烂,可能会使人中毒。虽然可以通过微生物学和化学分析来检验鱼的新鲜度,但这种方法需要大量的人力,而且价格昂贵,而且耗时较长,因此效果较差。对于贸易商来说,鱼的新鲜程度是用传统的方法来确定的,即通过观察、拿着和闻鱼的气味,有时也会有一些东西没有被观察到,所以仍然有不新鲜的鱼。为了减少这些问题,作者利用基于鱼的颜色的图像应用k -最近邻方法对鱼的新鲜度进行分类。通过使用Kuro Fish类型,使用Matlab工具,并在研究结果中使用k -最近邻方法,使用40个训练数据,产生100%的准确率,16个测试数据,7个正确数据,导致准确率较差,为43,75%。
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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期刊最新文献
RANCANG BANGUN APLIKASI PENGADAAN BARANG DISTRIBUSI PADA PT FAMOUS CHICKEN DENGAN MENGGUNAKAN METODE DISTRIBUTOR REQUIREMENT PLANNING (DRP) IMPELEMTASI TEKNOLOGI 3D AUGMENTED REALITY UNTUK PEMETAAN GEDUNG SMK YADIKA BANGIL SISTEM PENDUKUNG KEPUTUSAN CALON PENERIMA DANA BANTUAN SISWA MISKIN (BSM) MENGGUNAKAN METODE MULTI-OBJECTIVE OPTIMAZION ON THE BASIS OF RATIO ANALYSIS Implementasi Metode K-Nearest Neighbor dalam Mengklasifikasikan Kesegaran Ikan Kuro Menggunakan Citra PENGEMBANGAN DATA RECORD PASIEN DENGAN METODE JOINT APPLICATION DEVELOPMENT (Studi kasus KLINIK ALFIZA MEDIKA UTAMA)
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