Segmentation for embryonated Egg Images Detection using the K-Means Algorithm in Image Processing

S. Saifullah
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引用次数: 17

Abstract

Image segmentation is often used in the process of detecting separated objects. In this study, the application of image segmentation in the detection of egg fertility. The fertility of eggs in hatching is checked between the seventh day to separate eggs that have embryos (fertile). Application of technology, one of which is image processing, requires a preprocessing process to detect the presence of embryos in eggs. In this research, the preprocessing process can help divide the color image of chicken eggs using K-means Algorithm. K-means used are based on a matrix of color images (three color components, red, green, and blue) with a value of k = 50. The result is a segmented color image. The K-means segmentation image is converted to a grayscale image and processed with image enhancement. The final process is the result of image enhancement morphological processes (dilated with string size six) and converted to black and white images to clarify the segmentation process occurs. Based on experiments, the process can run well, with the value of MSSIM = 0.9995 (Mean of the SSIM), which means that the image information is under the original image. Besides, the processed object gives a clear picture of the embryo in the egg, which shows that k-means segmentation can help the process of detecting the presence or absence of embryos in the egg.
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图像处理中基于k -均值算法的受精卵图像分割检测
图像分割是检测分离物体过程中常用的一种方法。本研究将图像分割技术应用于卵子生育能力的检测。在第7天之间检查孵化中的卵的生育能力,以分离有胚胎的卵(可生育)。技术的应用,其中之一是图像处理,需要一个预处理过程来检测卵子中胚胎的存在。在本研究中,预处理过程可以使用K-means算法对鸡蛋的彩色图像进行分割。使用的k -means基于彩色图像矩阵(三种颜色成分,红、绿、蓝),其值为k = 50。结果是一个分割的彩色图像。将k均值分割图像转换为灰度图像,并进行图像增强处理。最后的过程是图像增强形态学过程的结果(扩大字符串大小6),并转换为黑白图像,以澄清分割过程中发生的情况。经过实验,该过程运行良好,其MSSIM值= 0.9995 (SSIM的均值),表示图像信息在原始图像之下。此外,被处理的对象可以清晰地显示卵子中的胚胎,这表明k-means分割可以帮助检测卵子中是否存在胚胎的过程。
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