Title :
Change detection and classification of land cover in multispectral satellite imagery using clustering of sparse approximations (CoSA) over learned feature dictionaries
Author :
Moody, Daniela I. ; Brumby, Steven P. ; Rowland, Joel C. ; Altmann, Garrett L. ; Larson, Amy E.
Author_Institution :
Los Alamos Nat. Lab., Los Alamos, NM, USA
Abstract :
Neuromimetic machine vision and pattern recognition algorithms are of great interest for landscape characterization and change detection in satellite imagery in support of global climate change science and modeling. We present results from an ongoing effort to extend machine vision methods to the environmental sciences, using adaptive sparse signal processing combined with machine learning. A Hebbian learning rule is used to build multispectral, multiresolution dictionaries from regional satellite normalized band difference index data. Land cover labels are automatically generated via our CoSA algorithm: Clustering of Sparse Approximations, using a clustering distance metric that combines spectral and spatial textural characteristics to help separate geologic, vegetative, and hydrologie features. We demonstrate our method on example Worldview-2 satellite images of an Arctic region, and use CoSA labels to detect seasonal surface changes. Our results suggest that neuroscience-based models are a promising approach to practical pattern recognition and change detection problems in remote sensing.
Keywords :
Hebbian learning; computer vision; geophysical image processing; land cover; remote sensing; Arctic region; CoSA algorithm; CoSA label; Hebbian learning rule; clustering distance metrics; clustering of sparse approximation; geologic feature; hydrologie feature; land cover change classification; land cover change detection; landscape characterization; learned feature dictionary; machine learning; machine vision method; multiresolution dictionary; multispectral dictionary; multispectral satellite imagery; neuromimetic machine vision; neuroscience-based model; pattern recognition algorithm; regional satellite normalized band difference index data; remote sensing; seasonal surface changes; sparse signal processing; spatial textural characteristics; spectral textural characteristics; vegetative feature; worldview-2 satellite images; Arctic; Classification algorithms; Dictionaries; Feature extraction; Indexes; Satellites; Spatial resolution; Hebbian learning; feature dictionaries; learned dictionaries; sparse approximation; undercomplete dictionaries; unsupervised classification;
Conference_Titel :
Applied Imagery Pattern Recognition Workshop (AIPR), 2014 IEEE
Conference_Location :
Washington, DC
DOI :
10.1109/AIPR.2014.7041921