Title :
Pixel-based or Object-based: Which approach is more appropriate for remote sensing image classification?
Author :
Zerrouki, N. ; Bouchaffra, D.
Author_Institution :
Center for Dev. of Adv. Technol. (CDTA), Learning Patterns for Recognition & Actuation (LEAPRA) Lab., Algiers, Algeria
Abstract :
We present an overall performance comparison between the two most popular remote sensing image classification approaches which are: Pixel-based and Object-based. This evaluation is conducted using different state of the art statistical measures. The analysis of the classification power associated to these most widely utilized methods is conducted on Landsat-7 ETM+ image of Algiers through support vector machines. Since the performance of the object-based classification is inherently dependent on the success of the segmentation task, we have computed the overall accuracy, the kappa coefficient, the Z-score, the F-measure coefficient, and the area under ROC curve (AUC) value for different segmentation thresholds. This quantization of the segmentation level based on the number of pixels allowed to define a region (NPR) is necessary since image segmenters (which significantly impact classification) often exploit different paradigms and therefore exhibit different error rates. Our investigation has revealed that the object-based method is more accurate than the pixel-based method in the following two scenarios: (i) in the presence of a perfect segmentation task prior to object-based classification; (ii) whenever NPR is less than 8 pixels (corresponding to 240m in the current resolution). This second case is justified by the fact that the area under the ROC curve of object-based is larger than the one in the pixel-based. However, if NPR is not used or greater than 8 pixels, then the pixel-based approach is more appropriate.
Keywords :
error analysis; image classification; image segmentation; remote sensing; sensitivity analysis; statistical analysis; support vector machines; AUC value; Algiers; NPR; Z- score; area under ROC curve value; error rates; image classification power analysis; image segmenters; kappa coefficient; landsat-7 ETM+ image; object-based method; overall accuracy computation; overall performance comparison; pixel-based classification method; receiver operating characteristic; remote sensing; segmentation level quantization; segmentation task thresholds; statistical measurement; support vector machines; Accuracy; Image classification; Image segmentation; Remote sensing; Shape; Support vector machines; Training; object-based approach; pixel-based approach; remote sensing image classification; statistical performance evaluation measures; support vector machines;
Conference_Titel :
Systems, Man and Cybernetics (SMC), 2014 IEEE International Conference on
Conference_Location :
San Diego, CA
DOI :
10.1109/SMC.2014.6974020