Fast Nearest Neighbor Search in Medical Image Databases 论文

2018Digital Repository at the University of Maryland (University of Maryland College Park)引用 317
Image Retrieval and Classification TechniquesAdvanced Image and Video Retrieval TechniquesMedical Image Segmentation Techniques

摘要

We examine the problem of finding similar tumor shapes. Starting from a natural similarity function (the so-called `max morphological distance'), we showed how to lower-bound it and how to search for nearest neighbors in large collections of tumor-like shapes. Specifically, we used state-of-the-art concepts from morphology, namely the `pattern spectrum' of a shape, to map each shape to a point in n-dimensional space. Following [16, 30], we organized the n-d points in an R-tree. We showed that the L∞ (=max) norm in the n-d space lower-bounds the actual distance. This guarantees no false dismissals for range queries. In addition, we developed a nearest-neighbor algorithm that also guarantees no false dismissals. Finally, we implemented the method, and we tested it against a testbed of realistic tumor shapes, using an established tumor- growth model of Murray Eden [13]. The experiments showed that our method is roughly an order of magnitude faster than the straightforward sequential scanning.