Threshold-Based Adaptive Gaussian Mixture Model Integration (TA-GMMI) Algorithm for Mapping Snow Cover in Mountainous Terrain
Snow cover is an important parameter in the fields of computer modeling, engineering technology and energy development. With the extensive growth of novel hardware and software compositions creating smart, cyber physical systems' (CPS) efficient end-to-end work flows. In order to provide accura...
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| Published in | Computer modeling in engineering & sciences Vol. 124; no. 3; pp. 1149 - 1165 |
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| Main Authors | , , , , |
| Format | Journal Article |
| Language | English |
| Published |
Tech Science Press
01.01.2020
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| Subjects | |
| Online Access | Get full text |
| ISSN | 1526-1492 1526-1506 |
| DOI | 10.32604/cmes.2020.010932 |
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| Summary: | Snow cover is an important parameter in the fields of computer modeling, engineering technology and energy development. With the extensive growth of novel hardware and software compositions creating smart, cyber physical systems' (CPS) efficient end-to-end work flows. In order to provide
accurate snow detection results for the CPS's terminal, this paper proposed a snow cover detection algorithm based on the unsupervised Gaussian mixture model (GMM) for the FY-4A satellite data. At present, most snow cover detection algorithms mainly utilize the characteristics of the optical
spectrum, which is based on the normalized difference snow index (NDSI) with thresholds in different wavebands. These algorithms require a large amount of manually labeled data for statistical analysis to obtain the appropriate thresholds for the study area. Consideration must be given to
both the high and low elevations in the study area. It is difficult to extract all snow by a fixed threshold in mountainous and rugged terrains. In this research, we avoid relying on a manual analysis for different elevations. Therefore, an algorithm based on the GMM is proposed, integrating
the threshold-based algorithm and the GMM. First, the threshold-based algorithm with transferred thresholds from other satellites' analysis results are used to coarsely classify the surface objects. These results are then used to initialize the parameters of the GMM. Finally, the parameters
of that model are updated by an expectation-maximum (EM) iteration algorithm, and the final results are outputted when the iterative conditions end. The results show that this algorithm can adjust itself to mountainous terrain with different elevations, and exhibits a better performance than
the threshold-based algorithm. Compared with orbit satellites' snow products, the accuracy of the algorithm used for FY-4A is improved by nearly 2%, and the snow detection rate is increased by nearly 6%. Moreover, compared with microwave sensors' snow products, the accuracy is increased by
nearly 3%. The validation results show that the proposed algorithm can be adapted to a complex terrain environment in mountainous areas and exhibits good performance under a transferred threshold without manually assigned labels. |
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| Bibliography: | 1526-1492(20200905)124:3L.1149;1- |
| ISSN: | 1526-1492 1526-1506 |
| DOI: | 10.32604/cmes.2020.010932 |