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基于深度学习的杀伤人员地雷与矿化土壤中低于一克金属含量的分类(DL-MMD)。

Deep learning-based classification of anti-personnel mines and sub-gram metal content in mineralized soil (DL-MMD).

作者信息

Minhas Shahab Faiz, Shah Maqsood Hussain, Khaliq Talal

机构信息

CESAT, Islamabad, Pakistan.

School of electronics and computing, Dublin City University, Dublin, Ireland.

出版信息

Sci Rep. 2024 May 11;14(1):10830. doi: 10.1038/s41598-024-60592-8.

DOI:10.1038/s41598-024-60592-8
PMID:38734748
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC11088677/
Abstract

De-mining operations are of critical importance for humanitarian efforts and safety in conflict-affected regions. In this paper, we address the challenge of enhancing the accuracy and efficiency of mine detection systems. We present an innovative Deep Learning architecture tailored for pulse induction-based Metallic Mine Detectors (MMD), so called DL-MMD. Our methodology leverages deep neural networks to distinguish amongst nine distinct materials with an exceptional validation accuracy of 93.5%. This high level of precision enables us not only to differentiate between anti-personnel mines, without metal plates but also to detect minuscule 0.2-g vertical paper pins in both mineralized soil and non-mineralized environments. Moreover, through comparative analysis, we demonstrate a substantial 3% and 7% improvement (approx.) in accuracy performance compared to the traditional K-Nearest Neighbors and Support Vector Machine classifiers, respectively. The fusion of deep neural networks with the pulse induction-based MMD not only presents a cost-effective solution but also significantly expedites decision-making processes in de-mining operations, ultimately contributing to improved safety and effectiveness in these critical endeavors.

摘要

排雷行动对于受冲突影响地区的人道主义努力和安全至关重要。在本文中,我们应对提高地雷探测系统准确性和效率的挑战。我们提出了一种专门为基于脉冲感应的金属地雷探测器(MMD)量身定制的创新深度学习架构,即所谓的DL-MMD。我们的方法利用深度神经网络区分九种不同材料,验证准确率高达93.5%。这种高精度不仅使我们能够区分没有金属板的杀伤人员地雷,还能在矿化土壤和非矿化环境中检测到微小的0.2克垂直纸针。此外,通过比较分析,我们证明与传统的K近邻和支持向量机分类器相比,准确率分别有大幅提高(约)3%和7%。深度神经网络与基于脉冲感应的MMD的融合不仅提供了一种经济高效的解决方案,还显著加快了排雷行动中的决策过程,最终有助于提高这些关键行动的安全性和有效性。

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