利用超声检测特征对牛生殖周期阶段进行分类

Idalia Maldonado-Castillo, M. Eramian, R. Pierson, J. Singh, G. Adams
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引用次数: 4

摘要

对雌性哺乳动物卵巢发育的研究表明,发情周期的天数与卵巢主要结构的大小和生理状态之间存在关系。本文提出了一种利用超声图像信息自动对牛卵巢进行时间分类的算法。时间分类大致对应于牛生殖周期的发情期、发情期和前发情期。基于卵巢结构大小的特征形成了进行分类的模式。对于86.36%的测试模式,朴素贝叶斯分类器能够正确分类发情周期的阶段。决策树对100%的测试模式进行了正确分类。用于构建分类器的决策树推理算法构建了一棵树,该树仅使用了五个可用特征中的两个,表明它们形成了足够丰富的特征集,可以进行鲁棒分类。
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Classification of Bovine Reproductive Cycle Phase using Ultrasound-Detected Features
Studies of ovarian development in female mammals have shown a relationship between the day in the estrous cycle and the size of the main structures and physiological status of the ovary. This paper presents an algorithm for the automatic classification of bovine ovaries into temporal categories using information extracted from ultrasound images. The temporal classes corresponded roughly to the metestrus, diestrus, and proestrus phases of the bovine reproductive cycle. Features based on the sizes of ovarian structures formed the patterns on which the classification was performed. A Naive Bayes classifier was able to correctly classify the stage of the estrous cycle for 86.36% of the test patterns. A decision tree classified 100% of the test patterns correctly. The decision tree inference algorithm used to build the classifier constructed a tree that used only two of the five available features indicating that they form a sufficiently rich set of features for robust classification.
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