Clustering Dynamic Spatio-Temporal Patterns in The Presence of Noise and Missing Data
Chen, Xi (University of Minnesota) | Faghmous, James H. (University of Minnesota and Mt. Sinai School of Medicine) | Khandelwal, Ankush (University of Minnesota) | Kumar, Vipin (University of Minnesota)
Clustering has gained widespread use, especially for static data. However, the rapid growth of spatio-temporal data from numerous instruments, such as earth-orbiting satellites, has created a need for spatio-temporal clustering methods to extract and monitor dynamic clusters. Dynamic spatio-temporal clustering faces two major challenges: First, the clusters are dynamic and may change in size, shape, and statistical properties over time. Second, numerous spatio-temporal data are incomplete, noisy, heterogeneous, and highly variable (over space and time). We propose a new spatio-temporal data mining paradigm, to autonomously identify dynamic spatio-temporal clusters in the presence of noise and missing data. Our proposed approach is more robust than traditional clustering and image segmentation techniques in the case of dynamic patterns, non-stationary, heterogeneity, and missing data. We demonstrate our method's performance on a real-world application of monitoring in-land water bodies on a global scale.
Jul-15-2015
- Country:
- North America > United States
- California (0.04)
- Minnesota > Hennepin County
- Minneapolis (0.28)
- North America > United States
- Technology: