Object-Based Postclassification Relearning

In this letter, we present an object-based postclassification relearning approach for enhanced supervised remote sensing image classification. Conventional postclassification processing techniques aim to enhance the classification accuracy by imposing smoothness priors in the image domain (based on, for example, majority filtering or Markov random fields). In contrast to that, here, a supervised classification model is learned for the second time, with additional information generated from the initial classification outcome to enhance the discriminative properties of relearned decision functions. This idea is followed within an object-based image analysis framework. Therefore, we model spatial-hierarchical context relations with the preliminary classification outcome by computing class-related features using a triplet of hierarchical segmentation levels. Those features are used to enlarge the initial feature space and impose spatial regularization in the relearned model. We evaluate the relevance of the method in the context of classifying of a high-resolution multispectral image, which was acquired over an urban environment. The experimental results show an enhanced classification accuracy using this method compared to both per-pixel-based approach and outcomes obtained with a conventional object-based postclassification processing technique (i.e., object-based voting).

[1]  Lorenzo Bruzzone,et al.  A Multilevel Context-Based System for Classification of Very High Spatial Resolution Images , 2006, IEEE Transactions on Geoscience and Remote Sensing.

[2]  William J. Emery,et al.  A neural network approach using multi-scale textural metrics from very high-resolution panchromatic imagery for urban land-use classification , 2009 .

[3]  Raul Queiroz Feitosa,et al.  Assessment of Binary Coding Techniques for Texture Characterization in Remote Sensing Imagery , 2013, IEEE Geoscience and Remote Sensing Letters.

[4]  Lorenzo Bruzzone,et al.  Classification of hyperspectral remote sensing images with support vector machines , 2004, IEEE Transactions on Geoscience and Remote Sensing.

[5]  Björn Waske,et al.  Classifying Multilevel Imagery From SAR and Optical Sensors by Decision Fusion , 2008, IEEE Transactions on Geoscience and Remote Sensing.

[6]  Thomas Blaschke,et al.  Geographic Object-Based Image Analysis – Towards a new paradigm , 2014, ISPRS journal of photogrammetry and remote sensing : official publication of the International Society for Photogrammetry and Remote Sensing.

[7]  Corinna Cortes,et al.  Support-Vector Networks , 1995, Machine Learning.

[8]  Lorenzo Bruzzone,et al.  Kernel methods for remote sensing data analysis , 2009 .

[9]  Pierre Soille,et al.  Morphological Image Analysis: Principles and Applications , 2003 .

[10]  William J. Emery,et al.  Classification of Very High Spatial Resolution Imagery Using Mathematical Morphology and Support Vector Machines , 2009, IEEE Transactions on Geoscience and Remote Sensing.

[11]  Donald Geman,et al.  Stochastic relaxation, Gibbs distributions, and the Bayesian restoration of images , 1984 .

[12]  Antonio J. Plaza,et al.  New Postprocessing Methods for Remote Sensing Image Classification: A Systematic Study , 2014, IEEE Transactions on Geoscience and Remote Sensing.

[13]  M.,et al.  Statistical and Structural Approaches to Texture , 2022 .

[14]  Marvin E. Bauer,et al.  Integrating Contextual Information with per-Pixel Classification for Improved Land Cover Classification , 2000 .

[15]  Xinhua Zhuang,et al.  Image Analysis Using Mathematical Morphology , 1987, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[16]  Thomas Blaschke,et al.  OBJECT BASED IMAGE ANALYSIS: A NEW PARADIGM IN REMOTE SENSING? , 2013 .

[17]  Arno Schäpe,et al.  Multiresolution Segmentation : an optimization approach for high quality multi-scale image segmentation , 2000 .

[18]  Sankar K. Pal,et al.  A review on image segmentation techniques , 1993, Pattern Recognit..

[19]  Thomas Blaschke,et al.  Object based image analysis for remote sensing , 2010 .