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Behavior mining of spatial objects with data field

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Geo-spatial Information Science

Abstract

The advanced data mining technologies and the large quantities of remotely sensed Imagery provide a data mining opportunity with high potential for useful results. Extracting interesting patterns and rules from data sets composed of images and associated ground data can be of importance in object identification, community planning, resource discovery and other areas. In this paper, a data field is presented to express the observed spatial objects and conduct behavior mining on them. First, most of the important aspects are discussed on behavior mining and its implications for the future of data mining. Furthermore, an ideal framework of the behavior mining system is proposed in the network environment. Second, the model of behavior mining is given on the observed spatial objects, including the objects described by the first feature data field and the main feature data field by means of the potential function. Finally, a case study about object identification in public is given and analyzed. The experimental results show that the new model is feasible in behavior mining.

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Correspondence to Shuliang Wang.

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Supported by the National 973 Program of China(No.2006CB701305,No.2007CB310804), the National Natural Science Fundation of China (No.60743001), the Best National Thesis Fundation (No.2005047), the National New Century Excellent Talent Fundation (No.NCET-06-0618).

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Wang, S., Wu, J., Cheng, F. et al. Behavior mining of spatial objects with data field. Geo-spat. Inf. Sci. 12, 202–211 (2009). https://doi.org/10.1007/s11806-009-0076-5

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  • DOI: https://doi.org/10.1007/s11806-009-0076-5

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