会议论文详细信息
35th International Symposium on Remote Sensing of Environment
Spatio-Spectral Method for Estimating Classified Regions with High Confidence using MODIS Data
地球科学;生态环境科学
Katiyal, Anuj^1 ; Rajan, K.S.^1
Lab for Spatial Informatics, IIIT Hyderabad, Hyderabad 500032, India^1
关键词: Classification accuracy;    Classification technique;    Classification time;    Computational advantages;    Lower resolution;    Spectral methods;    Statistical measures;    Very high resolution;   
Others  :  https://iopscience.iop.org/article/10.1088/1755-1315/17/1/012231/pdf
DOI  :  10.1088/1755-1315/17/1/012231
学科分类:环境科学(综合)
来源: IOP
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【 摘 要 】

In studies like change analysis, the availability of very high resolution (VHR)/high resolution (HR) imagery for a particular period and region is a challenge due to the sensor revisit times and high cost of acquisition. Therefore, most studies prefer lower resolution (LR) sensor imagery with frequent revisit times, in addition to their cost and computational advantages. Further, the classification techniques provide us a global estimate of the class accuracy, which limits its utility if the accuracy is low. In this work, we focus on the sub-classification problem of LR images and estimate regions of higher confidence than the global classification accuracy within its classified region. The spectrally classified data was mined into spatially clustered regions and further refined and processed using statistical measures to arrive at local high confidence regions (LHCRs), for every class. Rabi season MODIS data of January 2006 & 2007 was used for this study and the evaluation of LHCR was done using the APLULC 2005 classified data. For Jan-2007, the global class accuracies for water bodies (WB), forested regions (FR) and Kharif crops & barren lands (KB) were 89%, 71.7% and 71.23% respectively, while the respective LHCRs had accuracies of 96.67%, 89.4% and 80.9% covering an area of 46%, 29% and 14.5% of the initially classified areas. Though areas are reduced, LHCRs with higher accuracies help in extracting more representative class regions. Identification of such regions can facilitate in improving the classification time and processing for HR images when combined with the more frequently acquired LR imagery, isolate pure vs. mixed/impure pixels and as training samples locations for HR imagery.

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