利用图像直方图和 GLCM 对猪肉和水牛肉图像进行分类

Irene Devi Damayanti, Aryo Michael, Fridolin Fridolin, Helce K. Y. Piopadang, Setriyanti P.
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引用次数: 0

摘要

由于消费需求旺盛,一些商贩利用肉价高的优势,将猪肉和水牛肉混在一起,从中牟利。一些消费者对此并不知情,因为在众目睽睽之下,水牛肉和猪肉很难区分,特别是对一些普通人来说。这种行为对当地社会,尤其是穆斯林造成了极大的危害和困扰。目前,数字图像处理领域的技术进步日新月异,尤其是在食品方面。总的来说,这项研究分两个(三个)阶段进行。第一阶段,即猪肉和水牛肉的图像数据收集阶段。第二阶段,即根据肉的颜色和纹理,使用图像直方图分析和灰度级共现矩阵(GLCM)方法对猪肉和水牛肉图像进行分类。本研究采用红绿蓝(RGB)彩色图像法和 GLCM 纹理提取法,即对比度、同质性、能量和相关性。研究使用了 20 幅肉类图像样本(分别为 10 幅猪肉图像和 10 幅水牛肉图像)。根据研究结果发现,与猪肉图像相比,水牛肉图像的红色(R)色彩成分的百分比值较高,而与猪肉图像相比,绿色(G)和蓝色(B)色彩成分的百分比值较低。那么,如果像素之间的值不均匀(均匀度值小),对比度值就大,反之,如果像素之间的值均匀(均匀度值大),对比度值就小。与猪肉图像相比,水牛肉图像的同质值较小,因此水牛肉图像的强度(对比度)变化较大。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Klasifikasi Citra Daging Babi dan Daging Kerbau Menggunakan Histogram Citra dan GLCM
Due to high consumer demand, some traders use the high price of meat to make a profit by mixing pork and buffalo meat. Some consumers are not aware of this, because in plain view buffalo meat with pork meat is difficult to distinguish, especially for some ordinary people. This action is very detrimental and disturbing the local community, especially Muslims. At present, technological advances in the field of digital image processing are increasing rapidly, especially in food products. In general, this research was conducted in 2 (three) stages. The first stage, namely the stage of image data collection of pork and buffalo meat. The second stage, namely the classification of pork and buffalo meat images using image histogram analysis and the Gray Level Co-occurrence Matrix (GLCM) method based on the color and texture of the meat. In this study using the Red Green Blue (RGB) color image method and GLCM texture extraction, namely contrast, homogeneity, energy, and correlation. The study was conducted using 20 samples of meat images (10 images of pork and 10 images of buffalo meat, respectively). Based on the results of the research that has been done, it was found that the image of buffalo meat has a higher percentage value of the Red (R) color component when compared to the pork image, whereas the percentage value of the Green (G) and Blue (B) color components is lower when compared to the image pork. Then, if the value between pixels is not homogeneous (small homogeneity value), then the contrast value is large, and vice versa if the value between pixels is homogeneous (large homogeneity value) then the contrast value is small. The image of buffalo meat has a small homogeneity value compared to the image of pork, so the variation in intensity (contrast) in the image of buffalo meat is high.
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