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A morphological assessment system for 'show quality' bovine livestock based on image analysis.

机译:基于图像分析的“显示质量”牛畜的形态学评估系统。

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Morphological assessment is one important parameter considered in conservation and improvement programs for bovine livestock. This assessment process consists of scoring an animal based on its morphology and is normally carried out by highly qualified staff. These animals are all of agreed 'show quality' and hence they are morphologically very similar. This paper presents a system designed to provide an assessment based on a lateral image of the cow. The system consists of two main parts: a feature extraction stage, to reduce the information on the cow in the image to a set of parameters, and a neural network stage to provide a score based on that set of parameters. For the image analysis section, a model of the animal is constructed by means of the point distribution model (PDM) technique. Later, that model is used in the searching process within each image, which is implemented using genetic algorithms (GAs). As a result of this stage, the vector of weights that describe the deviation of the given shape from the mean is obtained. This vector is used in the second stage, where a multilayer perceptron is trained to provide the desired assessment, using the scores given by experts for selected cows. The system has been tested with 138 images corresponding to 44 individuals of a special rustic breed, with very promising results, given that the information contained in only one view of the cow can not be considered complete.Digital Object Identifier http://dx.doi.org/10.1016/j.compag.2011.06.003
机译:形态学评估是牛畜保护和改良计划中考虑的重要参数之一。评估过程包括根据动物的形态对动物评分,通常由高素质的人员进行。这些动物都具有公认的“显示质量”,因此它们在形态上非常相似。本文提出了一种系统,该系统旨在提供基于母牛侧面图像的评估。该系统由两个主要部分组成:特征提取阶段,用于将图像中有关奶牛的信息减少为一组参数;神经网络阶段,基于该组参数提供评分。对于图像分析部分,通过点分布模型(PDM)技术构建了动物模型。后来,在每个图像的搜索过程中使用了该模型,该模型是使用遗传算法(GA)实现的。作为该阶段的结果,获得了描述给定形状与平均值的偏差的权重向量。此向量用于第二阶段,在第二阶段中,使用专家对选定母牛的评分,训练多层感知器以提供所需的评估。该系统已经用138张图像进行了测试,这些图像对应于一个特殊的乡村品种的44个个体,鉴于仅能从一头牛的视图中获得的信息不能被认为是完整的,因此该结果非常有希望。数字对象标识符http:// dx。 doi.org/10.1016/j.compag.2011.06.003

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