Temporal and Spatial Data Mining with Second-Order Hidden Models
Jean-Francois Mari (INRIA Lorraine - LORIA), Florence Le Ber (CEVH)

TL;DR
This paper introduces second-order hidden Markov models for analyzing spatial and temporal land use data, demonstrating effective segmentation and classification capabilities in an unsupervised setting.
Contribution
It develops a novel second-order hidden Markov model approach for simultaneous spatial and temporal data mining in land use analysis.
Findings
Second-order HMM effectively locates stationary segments.
Fractal scanning with Hilbert-Peano curve preserves neighborhood relations.
Model provides meaningful classification for agronomists.
Abstract
In the frame of designing a knowledge discovery system, we have developed stochastic models based on high-order hidden Markov models. These models are capable to map sequences of data into a Markov chain in which the transitions between the states depend on the \texttt{n} previous states according to the order of the model. We study the process of achieving information extraction fromspatial and temporal data by means of an unsupervised classification. We use therefore a French national database related to the land use of a region, named Teruti, which describes the land use both in the spatial and temporal domain. Land-use categories (wheat, corn, forest, ...) are logged every year on each site regularly spaced in the region. They constitute a temporal sequence of images in which we look for spatial and temporal dependencies. The temporal segmentation of the data is done by means of a…
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