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Earth Sciences Research Journal
Print version ISSN 1794-6190
Abstract
LIANG, Shujun; CHENG, Jing and ZHANG, Jianwei. Maximum likelihood classification of soil remote sensing image based on deep learning. Earth Sci. Res. J. [online]. 2020, vol.24, n.3, pp.357-365. Epub Apr 24, 2021. ISSN 1794-6190. https://doi.org/10.15446/esrj.v24n3.89750.
Soil remote sensing image classification is the most difficult in the National Soil Census work. Current soil remote sensing image classification methods based on deep learning and maximum likelihood estimation are challenging to meet the actual needs. Therefore, this paper combines deep learning with maximum likelihood estimation and proposes a maximum likelihood classification method for soil remote sensing images based on deep learning. The method is divided into four parts. Firstly, the pretreatment of soil remote sensing image is carried out, including three processes: image gray, image denoising, and image correction; secondly, the target of soil remote sensing image is detected by deep learning algorithm; thirdly, the maximum likelihood algorithm is used to classify soil remote sensing image; finally, the classification performance is tested by an example. The results show that this method can effectively segment the remote sensing image of soil, and the segmentation accuracy is high, which proves the effectiveness and superiority of the method.
Keywords : Deep learning; Soil remote sensing image; Maximum likelihood estimation; Classification method.