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Bayesian Approach in Kendall Shape Space for Plant Species Classification

机译:肯德尔形状空间中的贝叶斯方法用于植物物种分类

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Modelling computer vision problems with Riemannian manifolds yields excellent results given that the visual features of these maniflods have special structures that Euclidean space doesn't capture. In this paper we propose an approach based on the Kendall manifold formalism and the Bayesian approach applied to a plant species classification problem. Kendall space is a quotient space that is provided with a Riemannian metric, which is more convenient when shapes differ only in translation, rotation and scale. However, an appropriate metric for shape classification task should not only suit certain invariance properties but also satisfy the different input properties. The non-linearity of Kendall space makes it difficult to apply common algorithms for classification. Thus, we propose to adapt the Bayes classifier to Kendalls representation using landmarks. Our main contribution consists in computing the parameters of the likelihood density functions through tangent spaces. Experimental results show that our approach is more accurate and effective.
机译:使用黎曼流形对计算机视觉问题进行建模会产生出色的结果,因为这些流域的视觉特征具有欧几里得空间无法捕获的特殊结构。在本文中,我们提出了一种基于肯德尔流形形式主义和贝叶斯方法的方法,该方法适用于植物物种分类问题。肯德尔空间是提供有黎曼度量的商空间,当形状仅在平移,旋转和比例上有所不同时,此空间更为方便。但是,用于形状分类任务的适当度量不仅应适合某些不变性,还应满足不同的输入属性。肯德尔空间的非线性使得难以应用通用算法进行分类。因此,我们建议使用地标使贝叶斯分类器适应Kendalls表示。我们的主要贡献在于通过切线空间计算似然密度函数的参数。实验结果表明,我们的方法更加准确有效。

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