IMPLEMENTASI DENSITY-BASED CLUSTERING PADA SEGMENTASI CITRA Betta Fish

Yunda Heningtyas, Fathur Rahmi, Kurnia Muludi
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Abstract

During the COVID-19 pandemic, the number of ornamental fish enthusiasts has increased, especially those of the Betta Fish species. Betta Fish is a type of ornamental Fish with various species with beautiful colors and morphology, especially the shape of the tail. The more diverse the color patterns of the Fish and the unique shape, the more expensive the selling price of this type of ornamental Fish. The market demand for Betta Fish is getting higher, causing the selling price of Betta Fish also to increase. However, not all ornamental fish lovers recognize the species name of the Betta Fish. For this reason, a pattern recognition-based system is needed that can recognize Betta Fish species. Pattern recognition has several stages, namely segmentation, extraction, and classification. This study aims to separate the object from the background on a digital image. The dataset used is 160 images consisting of 40 images of each species, namely Halfmoon, Double Tail, Serit, and Plakat. The first step is to convert the image into a saturation and intensity color model. The method used in the segmentation process is Density-Based Clustering. Density-Based Clustering is a segmentation method by forming clusters based on the density level of the object area. The segmentation process using the DensityBased Clustering method achieves an accuracy rate of 92.82%. Keyword: Betta Fish, Density-Based Clustering, HSI, Image Recognition, Image Segmentation
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实现基于密度的聚类PADA分割
在2019冠状病毒病大流行期间,观赏鱼爱好者的数量有所增加,尤其是斗鱼品种的爱好者。斗鱼是一种观赏鱼,种类繁多,颜色和形态都很漂亮,尤其是尾巴的形状。鱼的颜色图案越多样,形状越独特,这类观赏鱼的售价就越昂贵。市场对斗鱼的需求越来越大,导致斗鱼的销售价格也在上涨。然而,并不是所有观赏鱼爱好者都知道斗鱼的物种名称。因此,需要一种基于模式识别的系统来识别斗鱼。模式识别有几个阶段,即分割、提取和分类。本研究旨在将数字图像上的物体从背景中分离出来。使用的数据集是160张图片,包括每个物种的40张图片,分别是半月,双尾,Serit和Plakat。第一步是将图像转换为饱和度和强度颜色模型。在分割过程中使用的方法是基于密度的聚类。基于密度的聚类是一种基于目标区域的密度水平形成聚类的分割方法。采用基于密度的聚类方法进行分割,准确率达到92.82%。关键词:斗鱼,基于密度的聚类,HSI,图像识别,图像分割
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