Development of an Intelligent Imaging System for Determining Maturity of Copra Flesh in Coconuts Using Shape and Texture Extraction

Yogi Wiyandra, Firna Yenila, Suci Wahyuni
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Abstract

Copra is dried coconut meat that is used to produce coconut oil. According to the Central Statistics Agency (BPS), Indonesia's copra production in 2020 reached 2.3 million tonnes. This is one form of the process of improving the economy of people living on the coast. This research was conducted to educate farmers in determining the level of maturity of the copra meat produced. This research was conducted using an extraction method that involves colour extraction and texture extraction. the method is used to provide convenience in seeing the level of maturity of the two characteristics of copra obtained in the field, namely texture and colour. The process obtained in the training with one of the images used as a test image in colour extraction produces area, perimeter, metric and eccentricity values in label 3 with values of 651.00, 184.69, 0.24 and 0.89. while in the feature extraction method the results are obtained with an average intensity value of 243.31, standard deviation of intensity 39.76 and entropy value of the tested image 4.57. The method is able to perform a detection process so that it can determine the level of maturity of copra seen from the existing types of copra such as asalan copra, regular copra, black copra and wet copra, each of which provides different functions in the copra processing stage. The process will be carried out using KNN which is seen from all test data and training data stored after the detection process. The results of the process carried out using digital images involving the extraction method for detection and KNN for classification are able to provide the right value. This is evidenced by the better accuracy value of 98%.
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开发智能成像系统,利用形状和纹理提取技术确定椰子果肉的成熟度
椰干是用来生产椰子油的干椰肉。根据中央统计局(BPS)的数据,2020 年印尼的椰干产量达到 230 万吨。这是改善沿海居民经济的一种形式。这项研究旨在教育农民如何确定所生产的椰干肉的成熟度。这项研究使用的提取方法包括颜色提取和纹理提取。使用这种方法可以方便地看到在田间获得的椰干的两种特征(即纹理和颜色)的成熟度。用其中一张图像作为测试图像进行颜色提取的训练过程产生的面积、周长、度量和偏心率值在标签 3 中分别为 651.00、184.69、0.24 和 0.89,而在特征提取方法中得到的结果是测试图像的平均强度值为 243.31,强度标准偏差为 39.76,熵值为 4.57。该方法能够执行检测过程,从而从现有的椰干类型(如阿萨兰椰干、普通椰干、黑椰干和湿椰干)中确定椰干的成熟度,每种类型在椰干加工阶段都具有不同的功能。该过程将使用 KNN 进行,KNN 可从检测过程后存储的所有测试数据和训练数据中看出。使用数字图像进行检测的提取方法和 KNN 进行分类的结果都能提供正确的值。98% 的较高准确率证明了这一点。
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发文量
204
审稿时长
4 weeks
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