Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
6949437 | ISPRS Journal of Photogrammetry and Remote Sensing | 2015 | 21 Pages |
Abstract
Over 10,000 Landsat-like satellite images are required to cover the entire Earth at 30Â m resolution. To derive a GLC map from such a large volume of data necessitates the development of effective, efficient, economic and operational approaches. Automated approaches usually provide higher efficiency and thus more economic solutions, yet existing automated classification has been deemed ineffective because of the low classification accuracy achievable (typically below 65%) at global scale at 30Â m resolution. As a result, an approach based on the integration of pixel- and object-based methods with knowledge (POK-based) has been developed. To handle the classification process of 10 land cover types, a split-and-merge strategy was employed, i.e. firstly each class identified in a prioritized sequence and then results are merged together. For the identification of each class, a robust integration of pixel-and object-based classification was developed. To improve the quality of the classification results, a knowledge-based interactive verification procedure was developed with the support of web service technology. The performance of the POK-based approach was tested using eight selected areas with differing landscapes from five different continents. An overall classification accuracy of over 80% was achieved. This indicates that the developed POK-based approach is effective and feasible for operational GLC mapping at 30Â m resolution.
Related Topics
Physical Sciences and Engineering
Computer Science
Information Systems
Authors
Jun Chen, Jin Chen, Anping Liao, Xin Cao, Lijun Chen, Xuehong Chen, Chaoying He, Gang Han, Shu Peng, Miao Lu, Weiwei Zhang, Xiaohua Tong, Jon Mills,