Title :
Accelerated Probabilistic Learning Concept for Mining Heterogeneous Earth Observation Images
Author :
Alonso, Kevin ; Datcu, Mihai
Author_Institution :
German Aerosp. Center, Wessling, Germany
Abstract :
We present an accelerated probabilistic learning concept and its prototype implementation for mining heterogeneous Earth observation images, e.g., multispectral images, synthetic aperture radar (SAR) images, image time series, or geographical information systems (GIS) maps. The system prototype combines, at pixel level, the unsupervised clustering results of different features, extracted from heterogeneous satellite images and geographical information resources, with user-defined semantic annotations in order to calculate the posterior probabilities that allow the final probabilistic searches. The system is able to learn different semantic labels based on a newly developed Bayesian networks algorithm and allows different probabilistic retrieval methods of all semantically related images with only a few user interactions. The new algorithm reduces the computational cost, overperforming existing conventional systems, under certain conditions, by several orders of magnitude. The achieved speed-up allows the introduction of new feature models improving the learning capabilities of knowledge-driven image information mining systems and opening them to Big Data environments.
Keywords :
geographic information systems; geophysical techniques; synthetic aperture radar; Bayesian networks algorithm; accelerated probabilistic learning concept; geographical information resources; geographical information systems maps; heterogeneous satellite images; image time series; knowledge-driven image information mining systems; mining heterogeneous Earth observation images; multispectral images; synthetic aperture radar images; Bayes methods; Computational modeling; Data mining; Feature extraction; Probabilistic logic; Semantics; Active learning (AL); Bayesian networks; Big Data; bag-of-words (BoW); data fusion; geographical information systems (GIS); image mining;
Journal_Title :
Selected Topics in Applied Earth Observations and Remote Sensing, IEEE Journal of
DOI :
10.1109/JSTARS.2015.2435491