Publications

Wang, JP; Wu, XD; Tang, RQ; Zeng, QC; Li, Z; Wen, JG; Xiao, Q (2022). Evaluation of Three Error-Correction Models Based on the Matched Pixel Scale Ground Truth: A Case Study of MCD43A3 V006 Over the Heihe River Basin, China. IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING, 15, 8785-8797.

Abstract
Validation merely provides the impression of accuracy of satellite products but does not deal with their errors. There have been several error correction/adjustment models. Nevertheless, their performances have not been evaluated and compared. In this study, three typical models, namely random forests (RF), cumulative distribution function (CDF), and Kalman filter (KF) were comprehensively evaluated based on the pixel scale ground truth regarding their ability to correct errors of coarse-resolution satellite albedo products. Moderate-resolution imaging spectroradiometer albedo product (i.e., MCD43A3 V006) was utilized as an example due to its widespread use and application. These three models all show significant improvements regarding the accuracy of the corrected MCD43A3. Root-mean-square error (RMSEs) decreased from 0.037-0.020, 0.021, and 0.025 for RF, CDF, and KF, respectively. Biases were reduced from -0.018-0.004, -0.001, and -0.001 for these three models, respectively. And R-2 was increased from 0.585-0.849, 0.823, and 0.764 for RF, CDF, and KF, respectively. Generally, RF shows the best overall performance, followed by CDF and KF. These three models are more adept at handling the bias of MCD43A3 than their consistency with respect to the pixel scale ground truth, and the improvement is the most significant at the sites with large errors. Nevertheless, the performance of RF shows dependence on both the number and representativeness of training samples. When these conditions were not satisfied, CDF performs best in this situation. Regarding the stability of their performance, RF performs better in reducing RMSE while CDF performs better in reducing Bias and improving consistency.

DOI:
10.1109/JSTARS.2022.3213184

ISSN:
2151-1535