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Lithological Mapping Using Spatially Constrained Bayesian Network (SCB-net): A Deep Learning Model for Generating Field-Data-Constrained Predictions with Uncertainty Evaluation Using Remote Sensing Data

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SCB-Net

Spatially Constrained Bayesian Network (SCB-Net): An Approach to Obtaining Field Data-Constrained Predictive Maps with Uncertainty Assessment. In this project, we have developed an innovative approach to ensure that predicted lithologies accurately reflect the samples collected in the field. Moreover, our model leverages multisource remote sensing data to make predictions in areas where no direct samples are available. Our study focuses on the Churchill Province, located in Quebec, Canada.

Predictive Lithological Map displaying 16 lithologic units

output

(instability = uncertain predictions)

Link to remotely sensed data, probability masks, and weights of the models.

Authors: Victor S. Santos (INRS & NRCan), Erwan Gloaguen (INRS), and Shiva Tirdad (NRCan).

Link to Preprint - ArXiv

INRS: Institut National de la Recherche Scientifique

NRCan: Natural Resources Canada

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This project is licensed under the Creative Commons Attribution 4.0 International License - see the LICENSE file for details.

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Lithological Mapping Using Spatially Constrained Bayesian Network (SCB-net): A Deep Learning Model for Generating Field-Data-Constrained Predictions with Uncertainty Evaluation Using Remote Sensing Data

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