skip to main content
OSTI.GOV title logo U.S. Department of Energy
Office of Scientific and Technical Information

Title: Multi-temporal remote sensing image classification - a multi-view approach

Conference ·
OSTI ID:1081661

Multispectral remote sensing images have been widely used for automated land use and land cover classification tasks. Often thematic classification is done using single date image, however in many instances a single date image is not informative enough to distinguish between different land cover types. In this paper we show how one can use multiple images, collected at different times of year (for example, during crop growing season), to learn a better classifier. We propose two approaches, an ensemble of classifiers approach and a co-training based approach, and show how both of these methods outperform a straightforward stacked vector approach often used in multi-temporal image classification. Additionally, the co-training based method addresses the challenge of limited labeled training data in supervised classification, as this classification scheme utilizes a large number of unlabeled samples (which comes for free) in conjunction with a small set of labeled training data.

Research Organization:
Oak Ridge National Lab. (ORNL), Oak Ridge, TN (United States)
Sponsoring Organization:
USDOE Laboratory Directed Research and Development (LDRD) Program
DOE Contract Number:
DE-AC05-00OR22725
OSTI ID:
1081661
Resource Relation:
Conference: NASA Conference on Intelligent Data Understanding, Mountain View, CA, USA, 20101005, 20101007
Country of Publication:
United States
Language:
English

Similar Records

A Hybrid Semi-supervised Classification Scheme for Mining Multisource Geospatial Data
Journal Article · Sat Jan 01 00:00:00 EST 2011 · GeoInformatica: An International Journal on Advances of Computer Science for Geographic Information Systems · OSTI ID:1081661

A Hybrid Classification Scheme for Mining Multisource Geospatial Data
Conference · Mon Jan 01 00:00:00 EST 2007 · OSTI ID:1081661

Arctic Vegetation Mapping Using Unsupervised Training Datasets and Convolutional Neural Networks
Journal Article · Wed Jan 02 00:00:00 EST 2019 · Remote Sensing · OSTI ID:1081661

Related Subjects