研究目的
To discriminate crop species using pure spectral-spatial reflectance of EO-1 Hyperion imagery for crop-type classification and agricultural management.
研究成果
The research successfully discriminated crop types using EO-1 Hyperion imagery with BE and SVM classifiers, achieving 73.35% and 90.44% accuracy, respectively. Future work will focus on using advanced high-resolution data and solving mixing pixel problems.
研究不足
The study mentions the need for future research to solve mixing pixel problems using pure spectra of all crop species collected via Spectroradiometer for more accurate results.
1:Experimental Design and Method Selection:
The study utilized EO-1 Hyperion imagery for crop discrimination, applying QUAC for atmospheric correction and machine learning classifiers (BE and SVM) for classification.
2:Sample Selection and Data Sources:
The study area was the West zone of Aurangabad, Maharashtra, India, focusing on Sorghum, Wheat, and cotton crops.
3:List of Experimental Equipment and Materials:
EO-1 Hyperion sensor data, ENVI
4:1 with IDL for data analysis. Experimental Procedures and Operational Workflow:
Preprocessing with QUAC, classification with BE and SVM, accuracy assessment with GCP.
5:Data Analysis Methods:
Accuracy assessment using commission, omission, producers accuracy, and users accuracy.
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