首页> 外文会议>International Conference on Pattern Recognition Applications and Methods >Clupea Harengus: Intraspecies Distinction using Curvature Scale Space and Shapelets Classification of North-sea and Thames Herring using Boundary Contour of Sagittal Otoliths
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Clupea Harengus: Intraspecies Distinction using Curvature Scale Space and Shapelets Classification of North-sea and Thames Herring using Boundary Contour of Sagittal Otoliths

机译:Clupea Harengus:使用曲率尺度空间和北海和泰晤士鲱鱼的曲率尺度空间和翻头分类使用射击偏离的曲率差距

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We present a study comparing Curvature Scale Space (CSS) representation with Shapelet transformed data with a view to discriminating between sagittal otoliths of North-Sea and Thames Herring using otolith boundary and boundary metrics. CSS transformed boundaries combined with measures of their circularity, eccentricity and aspect-ratio are used to classify using nearest-neighbour selections with distance being computed using CSS matching methods. Shapelet transformed data are classified using a number of techniques (Nearest-Neighbour, Naive-Bayes, C4.5, Support Vector Machines, Random and Rotation Forest) and compared to CSS classification results. Both methods use Leave One Out Cross Validation (LOOCV). We describe the method of encoding and the matching algorithm used during CSS classification and give an overview of Shapelet transforms and the classifiers that are used on the data. It is shown that whilst CSS forms part of the MPEG-7 standard and performs better than random selection, it can be significantly out-performed by recent additions to machine-learning methods in this application. Shapelets also show that with regard to intra-species distinction, the discriminatory features of otolith boundaries may lie not in the major inflection points, but the boundary points between them.
机译:我们介绍了一个与Shapelet转换数据的曲率尺度空间(CSS)表示的研究,以便在北海和泰晤士鲱鱼之间的歧视与使用偏离边界和边界指标之间的判断。 CSS转换的边界与其圆形度的测量相结合,偏心和宽高比用于使用使用CSS匹配方法计算的最近邻的选择进行分类。 Shapete转换数据使用多种技术(最近邻居,野贝雷斯,C4.5,支持向量机,随机和旋转林)进行分类,并与CSS分类结果相比。两种方法都使用留出1个交叉验证(LOOCV)。我们描述了CSS分类期间使用的编码和匹配算法,并概述了ShapEet转换和数据上使用的分类器。结果表明,虽然CSS形成了MPEG-7标准的一部分,并且比随机选择更好地执行,可以通过最近的添加到本申请中的机器学习方法来了解。 Shapelets还表明,关于物种内部区别,右侧边界的歧视特征可能不在主要拐点中,但它们之间的边界点。

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