PERBANDINGAN EKSTRAKSI TEKSTUR CITRA UNTUK PEMILIHAN BENIH KEDELAI DENGAN METODE STATISTIK ORDE I DAN STATISTIK ORDE II

Yampi R. Kaesmetan
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Abstract

The problem in determining the selection of soybean seeds for replanting, especially in East Nusa Tenggara is still an important issue. The thing that affects the quality of soybean seeds is found broken seeds, dull seeds, dirty seeds, and broken seeds due to the process of drying and shelling. Determination of soy bean quality is usually done manually by visual observation. The manual system takes a long time and produces products with inconsistent quality due to visual limitations, fatigue, and different perceptions of each observer. This research was conducted using comparison of image texture extraction with statistical methods of order I (color moment) and order II statistics (GLCM) for soy bean selection. Order I statistics (color moment) show the probability of the appearance of the value of the gray degree of pixels in an image, while the order II statistics (GLCM) show the probability of a neighborhood relationship between two pixels that form a cohesion matrix from the image data. This research is expected to help the classification process in determining soybean seeds. The k-Nearest Neighbor (k-NN) algorithm used in previous studies to classify the image objects to be examined. The results of this study were successfully conducted using k-Nearest Neighbor (k-NN) with euclidean distance and k = 1 with the results of color moment extracts getting the highest accuracy of 88% and the results of GLCM feature extraction for homogeneity characteristics of 75.5%, correlations of 78.67% , contrast is 65.75% and energy is 63.83% with an average accuracy of 70.93%.
大豆选择的图像纹理提取比较与顺序I和顺序2的统计方法进行比较
确定选择大豆种子进行再植的问题,特别是在东努沙登加拉,仍然是一个重要问题。影响大豆籽粒质量的主要是发现籽粒破碎、籽粒暗沉、籽粒脏脏、籽粒因干燥脱壳过程而破碎等。大豆品质的测定通常是通过目测手工完成的。手工系统耗时长,由于视觉限制、疲劳和每个观察者的不同感知,生产出的产品质量不一致。本研究采用I阶(颜色矩)统计方法和II阶统计(GLCM)统计方法对图像纹理提取进行大豆选择的比较。I阶统计量(颜色矩)表示图像中像素灰度值出现的概率,而II阶统计量(GLCM)表示从图像数据中形成内聚矩阵的两个像素之间的邻域关系的概率。该研究有望为大豆种子的分类过程提供帮助。先前研究中使用的k-最近邻(k-NN)算法对待检查的图像对象进行分类。采用欧氏距离和k = 1的k- nearest Neighbor (k- nn)方法成功进行了本研究的结果,颜色矩提取的结果准确率最高为88%,GLCM特征提取的结果均匀性特征为75.5%,相关性为78.67%,对比度为65.75%,能量为63.83%,平均准确率为70.93%。
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