2022
DOI: 10.22219/kinetik.v7i3.1486
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KNN Algorithm for Identification of Tomato Disease Based on Image Segmentation Using Enhanced K-Means Clustering

Abstract: Image segmentation is an important process in identifying tomato diseases. The technique that is often used in this segmentation is k-means clustering. One of the main problems in this technique is the case of local minima, where the cluster that is formed is not suitable due to the incorrect selection of the initial centroid. In image data, this case will have an impact on poor segmentation results because it can erase parts that are actually important to be lost or there is still background in the recognitio… Show more

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Cited by 5 publications
(3 citation statements)
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“…The main purpose of the image segmentation technique use to convert the texture of the image into a shape that is not too complicated to analyze and that it serves to obtain the spot of the disease in rice leaf disease [15]. Image segmentation is the process of separating important objects from the background of an image [16].The following is an image that has been segmented can be seen in Figure 3.…”
Section: Image Segmentationmentioning
confidence: 99%
“…The main purpose of the image segmentation technique use to convert the texture of the image into a shape that is not too complicated to analyze and that it serves to obtain the spot of the disease in rice leaf disease [15]. Image segmentation is the process of separating important objects from the background of an image [16].The following is an image that has been segmented can be seen in Figure 3.…”
Section: Image Segmentationmentioning
confidence: 99%
“…This method uses three threshold values for Hue, Saturation, and Value, respectively. This threshold value is used to separate the background and the object to be detected in the HSV image [29], [30]. Based on the results of repeated experiments, the best threshold value for this study was 140 for hue, 1 for saturation and 255 for value.…”
Section: Color Object Detectionmentioning
confidence: 99%
“…The result of calculating the maximum similarity between the two cluster centers is the result of heart disease detection. Obtaining similarity using the cosine similarity method can be seen in equation 3 below [14].…”
Section: B Cosine Similaritymentioning
confidence: 99%