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A distance-based shape descriptor invariant to similitude and its application to shape classification

机译:基于距离的形状描述符不变性及其在形状分类中的应用

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Pattern recognition usually requires the description or representation of shapes with some features, called shape descriptors. A shape descriptor generally needs to be invariant to some geometrical transformations (translation, rotation, scaling...). In addition, it has to be robust against slight deformations or noise damaging the shape. In this paper, a novel shape descriptor based on distances and invariant to similitude transformations is proposed. A dissimilarity measure associated to the proposed descriptor is then introduced to quantify the discrepancies between shapes. Performance tests were performed on the Kimia and MPEG7 image databases to evaluate the quality of the proposed descriptor. More specifically, the proposed method was evaluated for shape classification and showed better performance compared with some other methods from the literature.
机译:模式识别通常需要对具有某些特征的形状进行描述或表示,这些特征称为形状描述符。形状描述符通常需要对某些几何变换(平移,旋转,缩放...)保持不变。另外,它必须坚固以抵抗轻微的变形或噪声破坏形状。本文提出了一种基于距离和不变到相似变换的新型形状描述子。然后引入与所提出的描述符相关的不相似性度量,以量化形状之间的差异。在Kimia和MPEG7图像数据库上进行了性能测试,以评估所提出描述符的质量。更具体地说,与文献中的其他一些方法相比,对提出的方法进行了形状分类评估,并显示了更好的性能。

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