ICCK Transactions on Machine Intelligence
ISSN: 3068-7403 (Online)
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TY - JOUR AU - Gupta, Subir AU - Adhikari, Upasana AU - Roy, Dipankar AU - Hazra, Sudipta PY - 2025 DA - 2025/05/22 TI - IoT-Integrated Reinforcement Learning-Based Mine Detection System for Military and Humanitarian Applications JO - ICCK Transactions on Machine Intelligence T2 - ICCK Transactions on Machine Intelligence JF - ICCK Transactions on Machine Intelligence VL - 1 IS - 1 SP - 17 EP - 28 DO - 10.62762/TMI.2025.235880 UR - https://www.icck.org/article/abs/TMI.2025.235880 KW - landmine detection KW - reinforcement learning KW - internet of things (IoT) KW - sensor fusion KW - artificial intelligence KW - military safety AB - This research proposes an advanced system for landmine detection combining the internet of things and reinforcement learning, which seeks to resolve issues in conventional methods that misidentify more than 30% of detections, have slow reaction times, and are not suited for different environments. Others like metallic detectors and sniffer dogs also pose greater danger for wrong threat identification, more so due to slothful attempts. The system proposed in this study is novel in that it customizes metal detection by integrating a sensor into military boots, thus permitting constant scanning without the use of hands. A metaplastic Machine Learning model improves detection accuracy. It was found that reward driven reinforcement learning regulations improves mine detection accuracy, increases the analysis attempts in each evaluation phase, and alters the strategically settings. The range of analysis conducted during this study validates the argument in question but this reworking of the system does not polish it. The innovation is having that with proper situational awareness this model enables real time implementation of IoT devices. This adaptable system is not only advantageous for military endeavors but can also be useful for demining activities. More robust multisensory capabilities are essential to facilitate effective and safe landmine inspection all over the globe, so follow up studies should concentrate on field trials with accompanying iterative improvements. SN - 3068-7403 PB - Institute of Central Computation and Knowledge LA - English ER -
@article{Gupta2025IoTIntegra,
author = {Subir Gupta and Upasana Adhikari and Dipankar Roy and Sudipta Hazra},
title = {IoT-Integrated Reinforcement Learning-Based Mine Detection System for Military and Humanitarian Applications},
journal = {ICCK Transactions on Machine Intelligence},
year = {2025},
volume = {1},
number = {1},
pages = {17-28},
doi = {10.62762/TMI.2025.235880},
url = {https://www.icck.org/article/abs/TMI.2025.235880},
abstract = {This research proposes an advanced system for landmine detection combining the internet of things and reinforcement learning, which seeks to resolve issues in conventional methods that misidentify more than 30\% of detections, have slow reaction times, and are not suited for different environments. Others like metallic detectors and sniffer dogs also pose greater danger for wrong threat identification, more so due to slothful attempts. The system proposed in this study is novel in that it customizes metal detection by integrating a sensor into military boots, thus permitting constant scanning without the use of hands. A metaplastic Machine Learning model improves detection accuracy. It was found that reward driven reinforcement learning regulations improves mine detection accuracy, increases the analysis attempts in each evaluation phase, and alters the strategically settings. The range of analysis conducted during this study validates the argument in question but this reworking of the system does not polish it. The innovation is having that with proper situational awareness this model enables real time implementation of IoT devices. This adaptable system is not only advantageous for military endeavors but can also be useful for demining activities. More robust multisensory capabilities are essential to facilitate effective and safe landmine inspection all over the globe, so follow up studies should concentrate on field trials with accompanying iterative improvements.},
keywords = {landmine detection, reinforcement learning, internet of things (IoT), sensor fusion, artificial intelligence, military safety},
issn = {3068-7403},
publisher = {Institute of Central Computation and Knowledge}
}
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