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首页> 外文期刊>Fisheries Research >Fish age categorization from otolith images using multi-class support vector machines
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Fish age categorization from otolith images using multi-class support vector machines

机译:使用多类支持向量机从耳石图像中对鱼龄进行分类

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摘要

Otoliths have traditionally been used to estimate fish age. However, many factors influence changes in otolith shape, so manual classification remains a complicated task. Very recently, statistical learning techniques have been proposed for automating such a process. We propose performing automatic fish age classification using otolith images (in cases in which growth rings are not properly displayed or are unavailable), morphological and statistical feature- extraction methods and multi-class support vector machines. The results of our experiments, in which we classified cod ages from otolith images, demonstrate the effectiveness of the approach.
机译:传统上使用耳石来估计鱼龄。但是,许多因素影响耳石形状的变化,因此手动分类仍然是一项复杂的任务。最近,已经提出了统计学习技术来使这种过程自动化。我们建议使用耳石图像(在年轮未正确显示或不可用的情况下),形态和统计特征提取方法以及多类支持向量机执行自动鱼龄分类。我们从耳石图像分类鳕鱼年龄的实验结果证明了该方法的有效性。

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