As the uncertainty is
inherent in a wide spectrum of applications such as radio frequency
identification (RFID) networks and location-based services (LBS), it is highly
demanded to address the uncertainty of the objects. In this paper, we propose a
novel indexing structure, named U-Quadtree, to organize the uncertain objects
in the multidimensional space such that the queries can be processed
efficiently by taking advantage of U-Quadtree. Particularly, we focus on the
range search on multidimensional uncertain objects since it is a fundamental
query in a spatial database. We propose a cost model which carefully considers
various factors that may impact the performance. Then, an effective and
efficient index construction algorithm is proposed to build the optimal U-Quad tree
regarding the cost model. We show that U-Quad tree can also efficiently support
other types of queries such as uncertain range query and nearest neighbor
query. Comprehensive experiments demonstrate that our techniques outperform the
existing works on multidimensional uncertain objects.
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