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A Heuristic Based on the Intrinsic Dimensionality for Reducing the Number of Cyclic DTW Comparisons in Shape Classification and Retrieval Using AESA

机译:基于内在维数的启发式减少使用aEsa进行形状分类和检索的循环DTW比较次数

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摘要

Cyclic Dynamic Time Warping (CDTW) is a good dissimilarity of shape descriptors of high dimensionality based on contours, but it is computationally expensive. For this reason, to perform recognition tasks, a method to reduce the number of comparisons and avoid an exhaustive search is convenient. The Approximate and Eliminate Search Algorithm (AESA) is a relevant indexing method because of its drastic reduction of comparisons, however, this algorithm requires a metric distance and that is not the case of CDTW. In this paper, we introduce a heuristic based on the intrinsic dimensionality that allows to use CDTW and AESA together in classification and retrieval tasks over these shape descriptors. Experimental results show that, for descriptors of high dimensionality, our proposal is optimal in practice and significantly outperforms an exhaustive search, which is the only alternative for them and CDTW in these tasks.
机译:循环动态时间规整(CDTW)与基于轮廓的高维形状描述符有很好的相似性,但计算量大。因此,为了执行识别任务,减少比较次数并避免穷举搜索的方法是方便的。近似和消除搜索算法(AESA)由于极大地减少了比较,因此是一种相关的索引方法,但是,该算法需要一个度量距离,而CDTW并非如此。在本文中,我们介绍了一种基于固有维数的启发式算法,该算法允许在这些形状描述符的分类和检索任务中一起使用CDTW和AESA。实验结果表明,对于高维描述符,我们的建议在实践中是最优的,并且明显优于穷举搜索,这是它们和CDTW在这些任务中的唯一替代方案。

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