Geometric-similarity retrieval in large image bases

I. Fudos, Leonidas Palios, E. Pitoura
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引用次数: 5

Abstract

We propose a novel approach to shape-based image retrieval that builds upon a similarity criterion which is based on the average point set distance. Compared to traditional techniques, such as dimensionality reduction, our method exhibits better behavior in that it maintains the average topology of shapes independently of the number of points used to represent them and is more resilient to noise. An efficient algorithm is presented based on an incremental "fattening," of the query shape until the best match is discovered. The algorithm uses simplex range search techniques and fractional cascading to provide an average polylogarithmic time complexity on the total number of shape vertices. The algorithm is extended to perform additional fast approximate matching, when there is no image sufficiently similar to the query image. We present techniques for the efficient external storage of the shape base and of the auxiliary geometric data structures used by the algorithm. Finally, we show how our approach can be used for processing queries, containing pairwise relations of object boundaries such as contain, tangent, and overlap. Such queries are either extracted from some user drafted sketch or defined explicitly by the user. Alternative methods are presented for forming query execution plans.
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大型图像库的几何相似检索
我们提出了一种新的基于形状的图像检索方法,该方法建立在基于平均点集距离的相似标准之上。与传统技术(如降维)相比,我们的方法表现出更好的性能,因为它保持了形状的平均拓扑,独立于用于表示它们的点的数量,并且对噪声更具弹性。提出了一种基于增量“增肥”查询形状的高效算法,直到发现最佳匹配。该算法使用单纯形范围搜索技术和分数级联来提供形状顶点总数的平均多对数时间复杂度。将该算法扩展到在没有与查询图像足够相似的图像时执行额外的快速近似匹配。我们提出了算法所使用的形状基和辅助几何数据结构的有效外部存储技术。最后,我们将展示如何使用我们的方法处理查询,包括对象边界的成对关系,如包含、切线和重叠。这些查询要么是从用户起草的草图中提取出来的,要么是由用户显式定义的。提出了用于形成查询执行计划的替代方法。
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