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Fully-automated identification of fish species based on otolith contour: using short-time Fourier transform and discriminant analysis (STFT-DA)

机译:基于耳石轮廓的鱼类的全自动识别:使用短时傅立叶变换和判别分析(STFT-DA)

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摘要

>Background. Fish species may be identified based on their unique otolith shape or contour. Several pattern recognition methods have been proposed to classify fish species through morphological features of the otolith contours. However, there has been no fully-automated species identification model with the accuracy higher than 80%. The purpose of the current study is to develop a fully-automated model, based on the otolith contours, to identify the fish species with the high classification accuracy.>Methods. Images of the right sagittal otoliths of 14 fish species from three families namely Sciaenidae, Ariidae, and Engraulidae were used to develop the proposed identification model. Short-time Fourier transform (STFT) was used, for the first time in the area of otolith shape analysis, to extract important features of the otolith contours. Discriminant Analysis (DA), as a classification technique, was used to train and test the model based on the extracted features.>Results. Performance of the model was demonstrated using species from three families separately, as well as all species combined. Overall classification accuracy of the model was greater than 90% for all cases. In addition, effects of STFT variables on the performance of the identification model were explored in this study.>Conclusions. Short-time Fourier transform could determine important features of the otolith outlines. The fully-automated model proposed in this study (STFT-DA) could predict species of an unknown specimen with acceptable identification accuracy. The model codes can be accessed at and . The current model has flexibility to be used for more species and families in future studies.
机译:>背景。可以根据鱼类的独特耳石形状或轮廓来识别鱼类。已经提出了几种模式识别方法,通过耳石轮廓的形态特征对鱼类进行分类。但是,目前还没有全自动的物种识别模型,其准确度超过80%。本研究的目的是基于耳石轮廓建立一个全自动模型,以较高的分类精度来识别鱼类。>方法。 14种鱼的右矢状耳石图像拟南芥,S科和,科这三个科的物种被用来建立所提出的鉴定模型。在耳石形状分析领域中首次使用短时傅立叶变换(STFT)来提取耳石轮廓的重要特征。使用判别分析(DA)作为分类技术,根据提取的特征对模型进行训练和测试。>结果。分别使用三个科的物种以及所有物种结合在一起。在所有情况下,模型的总体分类准确性均高于90%。另外,本研究还探讨了STFT变量对识别模型性能的影响。>结论。短时傅立叶变换可以确定耳石轮廓的重要特征。本研究中提出的全自动模型(STFT-DA)可以以可接受的识别精度预测未知标本的种类。可以在和访问模型代码。当前的模型具有灵活性,可以在未来的研究中用于更多的物种和科。

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