Bridging Human Expertise with Machine Learning and GIS for Mine Type Prediction and Classification

Author:

Saliba Adib12,Tout Kifah1ORCID,Zaki Chamseddine3,Claramunt Christophe2ORCID

Affiliation:

1. Doctoral School of Sciences and Technology, Lebanese University, Hadath 1533, Lebanon

2. Naval Academy Research Institute, 29160 Lanvéoc, France

3. College of Engineering and Technology, American University of the Middle East, Egaila 54200, Kuwait

Abstract

This paper introduces an intelligent model that combines military expertise with the latest advancements in machine learning (ML) and Geographic Information Systems (GIS) to support humanitarian demining decision-making processes, by predicting mined areas and classifying them by mine type, difficulty and priority of clearance. The model is based on direct input and validation from field decision-makers for their practical applicability and effectiveness, and accurate historical demining data extracted from military databases. With a survey polling the inputs of demining experts, 95% of the responses came with an affirmation of the potential of the model to reduce threats and increase operational efficiency. It includes military-specific factors that factor in the proximity to strategic locations as well as environmental variables like vegetation cover and terrain resolution. With Gradient Boosting algorithms such as XGBoost and LightGBM, the accuracy rate is almost 97%. Such precision levels further enhance threat assessment, better allocation of resources, and around a 30% reduction in the cost and time of conducting demining operations, signifying a strong synergy of human expertise with algorithmic precision for maximal safety and effectiveness in demining.

Publisher

MDPI AG

Reference24 articles.

1. A location-based model using GIS with machine learning, and a human-based approach for demining a post-war region;Saliba;J. Locat. Based Serv.,2023

2. United Nations (1997). Convention on the Prohibition of the Use, Stockpiling, Production and Transfer of Anti-Personnel Mines and on Their Destruction, United Nations.

3. Geneva International Centre for Humanitarian Demining GICHD (2014). A Guide to Mine Action, Geneva International Centre for Humanitarian Demining GICHD. Chapter 1.

4. Geneva International Centre for Humanitarian Demining GICHD (2010). A Guide to International Mine Action Standards, Geneva International Centre for Humanitarian Demining GICHD.

5. Geneva International Centre for Humanitarian Demining GICHD (2014). A Guide to Mine Action, Geneva International Centre for Humanitarian Demining GICHD. Chapter 5.

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