一种新的红细胞特征图像识别算法

Z. Ho, Huei-Ju Lee
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引用次数: 3

摘要

血细胞特征识别是食品营养学的一个重要课题。食品科学家想知道鱼红细胞的详细信息,如细胞的长轴、小轴、细胞的重叠率等。它将决定红细胞凝集的规模。这意味着鱼越疲劳,红细胞的凝集就越多。在动物模型中,我们通过一定天数内鱼类的死亡率来确定药物是否明显优于对照组。本研究提出了红细胞特征水平法。这意味着,由于红细胞图像识别取代了鱼类的死亡率,鱼类的死亡率比动物模型低。以往的研究主要集中在红细胞的形状识别上,大多没有讨论细胞的特征,如细胞的长轴、小轴、细胞识别的重叠率和计算等。因此,本研究的主要目的是通过红细胞特征识别来尝试取代传统的动物模型方法。本研究提出了一种新的算法编码为软件进行红血球特征图像识别。经过验证,该算法成功地识别了细胞的长轴和短轴。成功计算出血凝率百分比。这项研究将应用于运输活鱼的流通行业,因为减少了鱼的死亡率,从而节省了资金。在未来的研究中,如果对某些假设、着色方法或化学反应放宽或修改,可能会识别出不同的生物照片。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Algorithm for Red Blood Cell Characteristics Image Recognition
Blood cells characteristics recognition is an important issue for food nutrition. Food scientists want to know the detailed information of fish red blood cells, such as the major axis of a cell, minor axis of a cell, overlap rate of a cell. It would determine the scale of agglutination of red blood cells. That means the more fatigued a fish, the more agglutination of red blood cells there are. In the animal model, we determine if a medicine significantly outperform control groups via death rate of fishes within a certain number of days. In this study, red cells characteristics levels approach was proposed. It means that the fishes would die at a lower rate than the animal model due to red blood cells image recognition replacing death rate of fishes. Previous researches focused on the shape of red blood cells recognition, most of them did not discuss the cell characteristics, such as the major axis of a cell, minor axis of a cell, overlap rate of cell recognition and computation. Therefore, the main purpose of this research is through red blood cells characteristics recognition to try to replace the traditional animal model approach. This study proposed a new algorithm coded as software to proceed red blood cells characteristics image recognition. After validation, the proposed algorithm successfully recognized the major axis of a cell and minor axis of a cell. The percentage of Hemagglutination rate was successfully calculated. The study would be applied into distribution industries, which transport the live fishes, saving money because due to reducing the fish death rate. In future studies, if some of the assumptions, colored methods or chemical reactions are relaxed or revised, it may recognize different biological photos.
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