Object-oriented SVM classifier for ALSAT-2A high spatial resolution imagery: A case study of algiers urban area

The development of robust object-oriented classification approaches suitable for medium to high spatial resolution satellite imagery provides a valid alternative to traditional pixel-based classification approaches. In the past, Support Vector Machines (SVM) have been tested and evaluated only as pixel-based image classifiers. Moving from pixel-based analysis to object-based analysis, a fuzzy classification concept is generally used through eCognition software [1]. In this paper, we propose an object-oriented classification system based on SVM approach. By using a suitable scale during a multi-resolution segmentation step, obtained results are compared to those produced by a pixel-based SVM classifier. The classification process is performed by using a high spatial resolution imagery acquired by the Algerian satellite ALSAT-2A. From the comparison of obtained results, it is concluded that the object-based classifier is more efficient than the pixel-based classifier for the discrimination of seven major land cover classes.

[1]  Xiuwan Chen,et al.  Object-oriented classification and application in land use classification using SPOT-5 PAN imagery , 2004, IGARSS 2004. 2004 IEEE International Geoscience and Remote Sensing Symposium.

[2]  Chin-Tu Chen,et al.  Split-and-merge image segmentation based on localized feature analysis and statistical tests , 1991, CVGIP Graph. Model. Image Process..

[3]  Aleksandra Pizurica,et al.  Classification of Hyperspectral Data Over Urban Areas Using Directional Morphological Profiles and Semi-Supervised Feature Extraction , 2012, IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing.

[4]  Wilhelm Burger,et al.  Digital Image Processing - An Algorithmic Introduction using Java , 2008, Texts in Computer Science.

[5]  U. Benz,et al.  Multi-resolution, object-oriented fuzzy analysis of remote sensing data for GIS-ready information , 2004 .

[6]  Geoff Smith,et al.  An evaluation of per-parcel land cover mapping using maximum likelihood class probabilities , 2003 .

[7]  Eléonore Wolff,et al.  Comparison of very high spatial resolution satellite image segmentations , 2004, SPIE Remote Sensing.

[8]  Radja Khedam,et al.  Multi-scale segmentation for remote sensing imagery based on minimum heterogeneity rule , 2014, 2014 4th International Conference on Image Processing Theory, Tools and Applications (IPTA).

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

[10]  Kurt Hornik,et al.  Support Vector Machines in R , 2006 .

[11]  Peter M. Atkinson,et al.  Fine Spatial Resolution Simulated Satellite Sensor Imagery for Land Cover Mapping in the United Kingdom , 1999 .

[12]  Kanti V. Mardia,et al.  A Spatial Thresholding Method for Image Segmentation , 1988, IEEE Trans. Pattern Anal. Mach. Intell..

[13]  Paul M. Mather,et al.  Support vector machines for classification in remote sensing , 2005 .

[14]  Anil M. Cheriyadat,et al.  Machine learning approaches for high-resolution urban land cover classification: a comparative study , 2011, COM.Geo.

[15]  Jungho Im,et al.  Support vector machines in remote sensing: A review , 2011 .

[16]  Taskin Kavzoglu,et al.  A kernel functions analysis for support vector machines for land cover classification , 2009, Int. J. Appl. Earth Obs. Geoinformation.

[17]  Anil K. Jain Fundamentals of Digital Image Processing , 2018, Control of Color Imaging Systems.

[18]  Martien Molenaar,et al.  Terrain objects, their dynamics and their monitoring by the integration of GIS and remote sensing , 1995, IEEE Trans. Geosci. Remote. Sens..

[19]  V. Vapnik Estimation of Dependences Based on Empirical Data , 2006 .

[20]  Sotiris B. Kotsiantis,et al.  Supervised Machine Learning: A Review of Classification Techniques , 2007, Informatica.

[21]  Chih-Jen Lin,et al.  LIBSVM: A library for support vector machines , 2011, TIST.

[22]  J. L. Moigne,et al.  Refining image segmentation by integration of edge and region data , 1992, IEEE Trans. Geosci. Remote. Sens..