Automatic detection of compound structures by joint selection of region groups from a hierarchical segmentation
Date
2016Source Title
IEEE Transactions on Geoscience and Remote Sensing
Print ISSN
0196-2892
Publisher
Institute of Electrical and Electronics Engineers
Volume
54
Issue
6
Pages
3485 - 3501
Language
English
Type
ArticleItem Usage Stats
210
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258
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Abstract
A challenging problem in remote sensing image analysis is the detection of heterogeneous compound structures such as different types of residential, industrial, and agricultural areas that are composed of spatial arrangements of simple primitive objects such as buildings and trees. We describe a generic method for the modeling and detection of compound structures that involve arrangements of an unknown number of primitives in large scenes. The modeling process starts with a single example structure, considers the primitive objects as random variables, builds a contextual model of their arrangements using a Markov random field, and learns the parameters of this model via sampling from the corresponding maximum entropy distribution. The detection task is formulated as the selection of multiple subsets of candidate regions from a hierarchical segmentation where each set of selected regions constitutes an instance of the example compound structure. The combinatorial selection problem is solved by the joint sampling of groups of regions by maximizing the likelihood of their individual appearances and relative spatial arrangements. Experiments using very high spatial resolution images show that the proposed method can effectively localize an unknown number of instances of different compound structures that cannot be detected by using spectral and shape features alone.
Keywords
Context modelingGibbs sampling
Markov random field (MRF)
Maximum entropy distribution
Object detection
Spatial relationships
Swendsen-wang sampling
Image reconstruction
Markov processes
Contextual modeling
Heterogeneous compounds
Hierarchical segmentation
Maximum entropy distribution
Remote sensing images
Very high spatial resolution images
Remote sensing
Hierarchical system
Image analysis
Markov chain
Maximum entropy analysis
Remote sensing
Sampling
Segmentation
Spatial distribution
Urban area