Otsu Method for Chicken Egg Embryo Detection based-on Increase Image Quality

S. Suhirman, S. Saifullah, A. T. Hidayat, Rr. Hajar Puji Sejati
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引用次数: 2

Abstract

Detection of chicken egg embryos using image processing has limitations and needs some processes for improvement. By human vision, the previous process used binoculars and candling using light/beams directed at the chicken eggs in the incubator. In this study, we propose the application of image segmentation using the Otsu method in detecting chicken egg embryos. This method uses image segmentation with increased image quality (preprocessing) by several methods such as resizing, grayscaling, image adjustment, and image enhancement. These processes produce a better image and can be used for input in the segmentation process. In addition, this study compares several segmentation methods in detecting chicken egg embryos, such as thresholding, Otsu basic, and k-means clustering. The results show that our proposed method produced segmentation images to detect chicken egg embryos of 200 datasets images. This method has a faster process and can create a uniform segmentation than other methods. However, other methods can also detect chicken egg embryos. The method’s accuracy proposed in this study increased by 1.5% compared to other methods. In addition, the resulting SSIM value has a percentage close to and more than 90%, which means that the segmentation of the results obtained can be used to detect chicken egg embryos.
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基于提高图像质量的蛋胚检测Otsu方法
利用图像处理技术检测鸡胚存在局限性,需要进一步改进。根据人类的视觉,之前的过程使用双筒望远镜和烛光,用光/光束对准孵卵箱中的鸡蛋。在这项研究中,我们提出了使用Otsu方法的图像分割在检测鸡蛋胚胎中的应用。该方法通过调整大小、灰度、图像调整和图像增强等多种方法来提高图像质量(预处理)。这些处理产生更好的图像,可以用于分割过程中的输入。此外,本研究还比较了阈值分割、Otsu基本分割和k-means聚类等几种检测鸡蛋胚胎的分割方法。结果表明,该方法在200个数据集图像中产生了检测鸡蛋胚胎的分割图像。与其他方法相比,该方法具有更快的处理速度,并且可以创建统一的分割。然而,其他方法也可以检测鸡蛋胚胎。与其他方法相比,本研究提出的方法的准确率提高了1.5%。此外,所得到的SSIM值的百分比接近并大于90%,这意味着所得到的分割结果可以用于检测鸡蛋胚胎。
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