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Articles

Object-based classification with features extracted by a semi-automatic feature extraction algorithm – SEaTH

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Pages 211-226 | Received 21 Jun 2010, Accepted 18 Jan 2011, Published online: 31 Mar 2011
 

Abstract

Object-based image analysis (OBIA) uses object features (or attributes) that relateto the pixels contained by the image object to assist in image classification. These object features include spectral, shape, texture and context features. With hundreds of available features, the identification of those that can improve separability between classes is critical for OBIA. The Separability and Thresholds (SEaTH) algorithm calculates the SEaTH of object–classes for the given features. The SEaTH algorithm avoids time-consuming trial-and-error practice for seeking important features and thresholds. This article tests the SEaTH algorithm on Landsat-7 Enhanced Thematic Mapper (ETM+) imagery in a heterogeneous landscape with multiple land cover classes. The results suggest SEaTH is a strong alternative to other automated approaches, yielding an agreement of 79% with reference data. In comparison, an object-based nearest neighbour classifier yielded 66% agreement and a pixel-based maximum likelihood classifier yielded 69% agreement.

View correction statement:
Object-based classification with features extracted by a semi-automatic feature extraction algorithm – SEaTH

Additional information

Notes on contributors

Yan Gao

†Present address: Environmental Earth Science, Hokkaido University, Sapporo, Japan.

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