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Shape L’Âne Rouge: Sliding Wavelets for Indexing and Retrieval

机译:LÂneRouge形状:用于索引和检索的滑动小波

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摘要

Shape representation and retrieval of stored shape models are becoming increasingly more prominent in fields such as medical imaging, molecular biology and remote sensing. We present a novel framework that directly addresses the necessity for a rich and compressible shape representation, while simultaneously providing an accurate method to index stored shapes. The core idea is to represent point-set shapes as the square root of probability densities expanded in a wavelet basis. We then use this representation to develop a natural similarity metric that respects the geometry of these probability distributions, i.e. under the wavelet expansion, densities are points on a unit hypersphere and the distance between densities is given by the separating arc length. The process uses a linear assignment solver for non-rigid alignment between densities prior to matching; this has the connotation of “sliding” wavelet coefficients akin to the sliding block puzzle L’Âne Rouge. We illustrate the utility of this framework by matching shapes from the MPEG-7 data set and provide comparisons to other similarity measures, such as Euclidean distance shape distributions.
机译:在医学成像,分子生物学和遥感等领域,形状表示和存储形状模型的检索变得越来越重要。我们提出了一个新颖的框架,该框架直接解决了丰富且可压缩的形状表示的必要性,同时提供了索引存储形状的准确方法。核心思想是将点集形状表示为以小波为基础扩展的概率密度的平方根。然后,我们使用该表示法来开发一种自然的相似性度量标准,该度量标准遵循这些概率分布的几何形状,即在小波展开下,密度是单位超球面上的点,并且密度之间的距离由分离的弧长给出。该过程使用线性分配求解器进行匹配之前密度之间的非刚性对齐;这具有类似于滑动拼图L'ÂneRouge的“滑动”小波系数的含义。我们通过匹配MPEG-7数据集中的形状来说明此框架的实用性,并提供与其他相似性度量(例如欧几里得距离形状分布)的比较。

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