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Statistical and Wavelet Based Texture Features for Fish Oocytes Classification

机译:基于统计和小波的鱼卵母细胞分类纹理特征

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The study of biology and population dynamics of fish species requires the estimation of fecundity parameters in individual fish in many fisheries laboratories. The traditional procedure used in fisheries research is to classify and count the oocytes manually on a subsample of known weight of the ovary, and to measure few oocytes under a binocular microscope. With an adequate interactive tool, this process might be done on a computer. However, in both cases the task is very time consuming, with the obvious consequence that fecundity studies are not conducted routinely. In this work we develop a computer vision system for the classification of oocytes using texture features in histological images. The system is structured in three stages: 1) extraction of the oocyte from the original image; 2) calculation of a texture feature vector for each oocyte; and 3) classification of the oocytes using this feature vector. A statistical evaluation of the proposed system is presented and discussed.
机译:对鱼类的生物学和种群动态的研究要求在许多渔业实验室中估计单个鱼类的繁殖力参数。渔业研究中使用的传统程序是在已知卵巢重量的子样本上手动对卵母细胞进行分类和计数,并在双目显微镜下测量少量卵母细胞。使用适当的交互工具,此过程可以在计算机上完成。但是,在这两种情况下,这项任务都很耗时,其结果很明显,就是不定期进行生殖力研究。在这项工作中,我们开发了一种计算机视觉系统,用于使用组织学图像中的纹理特征对卵母细胞进行分类。该系统分为三个阶段:1)从原始图像中提取卵母细胞; 2)计算每个卵母细胞的纹理特征向量; 3)使用该特征向量对卵母细胞进行分类。提出并讨论了所提出系统的统计评估。

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