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Otolith shape classification for fish stock discrimination

机译:耳石形状分类用于鱼类种群识别

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The shape analysis of otoliths, which are calcified structures in the inner ear of teleostean fishes, is known to be particularly relevant to address species identification and stock discrimination. Generally, scientists use classical methodologies of statistical analysis and shape recognition such as Fourier shape descriptors and Principal Component Analysis (PCA). These methods are subject to several limitations mainly to their incapacity to locate irregularities because they are based on global characterization of shape. Recently, more advanced techniques are proposed in this context in order to improve classification accuracies. The first recent method exploits the potential of shape geodesics which rely on local shape features for classification issues. The second one addresses the Best-Basis paradigm which combines the Wavelet Transform, and the potential of statistical analysis in order to fully automate the selection process of efficient features for classification. These methods have been shown to significantly outperform the standard approaches but they are not compared together yet. This study compare these two methods on a real dataset. The comparison is performed on 600 striped red mullet calcified structures collected for the NESPMAN European project. For each method, performances are reported for the classification of samples coming from three geographical zones in the Northwest European seas: the Bay of Biscay, a mixing zone composed of the Celtic Sea and the Western English Channel and a northern zone composed of the Eastern English Channel and the North Sea. Comparison shows that both methods lead to same conclusions.
机译:耳石的形状分析是硬骨鱼类内耳的钙化结构,已知与解决物种识别和种群鉴别特别相关。通常,科学家使用经典的统计分析和形状识别方法,例如傅立叶形状描述符和主成分分析(PCA)。由于这些方法基于形状的整体特征,因此主要由于其无法定位不规则性而受到若干限制。最近,在这种情况下提出了更先进的技术,以提高分类的准确性。最近的第一种方法利用了形状测地线的潜力,该形状测地线依赖于局部形状特征来进行分类。第二篇文章探讨了结合了小波变换和统计分析潜力的最佳基础范式,以完全自动化有效特征分类的选择过程。这些方法已显示出明显优于标准方法,但尚未进行比较。这项研究在真实数据集上比较了这两种方法。比较是针对NESPMAN欧洲项目收集的600条striped鱼红钙化钙化结构进行的。对于每种方法,都报告了对来自西北欧洲三个地理区域的样品进行分类的性能:比斯开湾,由凯尔特海和西英吉利海峡组成的混合区和由东英吉利海组成的北部区域海峡和北海。比较表明,两种方法得出相同的结论。

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