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Fish age classification based on length, weight, sex and otolith morphological features

机译:基于长度,体重,性别和耳石形态特征的鱼龄分类

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摘要

Knowledge of age in fish populations is crucial in stock assessment and management. Currently, some pattern recognition systems has been proposed for accomplishing automatically this task based on extracting different kind of features from fish otholiths as well as other features related to fish. However, there is no clear evidence on which features are best for age classification. In this work, we compare otholith morphological features versus other features like fish length, weight and sex. The accuracy has been tested for different support vector machine classifiers using a cod database. As demonstrated, fish length, weight and sex are slightly superior to otholith morphological features for age classification purposes. However, it is the synergistic combination of both kinds of features that achieves the greatest accuracy (75%).
机译:对鱼类种群年龄的了解对于种群评估和管理至关重要。当前,已经提出了一些模式识别系统,用于基于从鱼卵石以及与鱼有关的其他特征中提取不同种类的特征来自动完成该任务。但是,尚无明确证据表明哪些功能最适合年龄分类。在这项工作中,我们比较了扁桃体的形态特征与其他特征,例如鱼的长度,体重和性别。已使用cod数据库针对不同的支持向量机分类器测试了准确性。如图所示,出于年龄分类的目的,鱼的长度,体重和性别略胜于扁桃体的形态特征。但是,正是这两种功能的协同组合才能实现最高的准确性(75%)。

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