Deep convolutional neural networks for surface coal mines determination from sentinel-2 images

Publication date

2021-05-10

Authors

Madhuanand, LogambalISNI 0000000502522547

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Article
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Abstract

Coal is a principal source of energy and the combustion of coal supplies around one-third of the global electricity generation. Coal mines are also an important source of CH4 emissions, the second most important greenhouse gas. Monitoring CH4 emissions caused by coal mining using earth observation will require the exact location of coal mines. This paper aims to determine surface coal mines from satellite images through deep learning techniques by treating them as a land use/land cover classification task. This is achieved using Convolutional Neural Networks (CNN) that has proven to be capable of complex land use/land cover classification tasks. With a list of known coal mine locations from various countries, a training dataset of “Coal Mine” and “No Coal Mine” image patches is prepared using Sentinel-2 satellite images with 13 spectral bands. Various pre-trained CNN network architectures (VGG, ResNet, DenseNet) are trained and validated with our prepared coal mine dataset of 3500 “Coal Mine” and 3000 “No Coal Mine” image patches. After several experiments with the VGG network combined with transfer learning is found to be an optimal model for this task. Classification accuracy of 98% has been achieved for the validation dataset of the pre-trained VGG architecture. The model produces more than 95% overall accuracy when tested on unseen satellite images from different countries outside the training dataset and evaluated against visual classification.

Keywords

Coal mine, deep learning, sentinel-2, supervised classification, vgg, General Environmental Science, Computers in Earth Sciences, Atmospheric Science, Applied Mathematics, SDG 15 - Life on Land

Citation

Madhuanand, L 2021, 'Deep convolutional neural networks for surface coal mines determination from sentinel-2 images', Italian Journal of Remote Sensing / Rivista Italiana di Telerilevamento, vol. 54, no. 1, pp. 296-309. https://doi.org/10.1080/22797254.2021.1920341