Improving the accuracy of landmine detection using data augmentation: a comprehensive study

Kunichik O, Tereshchenko V
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Abstract

In areas such as landmine detection, where obtaining large volumes of labeled data is challenging, data augmentation stands out as a key method. This paper investigates the role and impact of different data augmentation methods, and evaluates their effectiveness in improving the performance of deep learning models adapted to landmine detection. Landmine detection is governed by international security requirements on the one hand, and urgent humanitarian needs on the other. This field, characterized by its urgency and the requirement for meticulous accuracy, is key against the explosive ordnance. The hidden dangers of these munitions go beyond direct physical damage, leaving their mark on the socio-economic structures of the affected regions. They hinder agricultural activities, impede the restoration of infrastructure and create obstacles to the return and resettlement of displaced populations. The mission to detect and neutralize these hidden hazards combines advanced technology with an unwavering commitment to humanitarian principles to leave future generations with a land cleared of the heavy legacy of past wars. The effectiveness of machine learning models in detecting landmines is inextricably linked to the diversity, volume and reliability of the data they are trained on. The effort to collect a diverse and representative dataset is fraught with challenges, given limitations related to accessibility, ethical considerations and security issues. The lack of comprehensive data poses significant obstacles to the development and refinement of machine learning algorithms, potentially limiting their ability to operate effectively in diverse and unpredictable areas. In response to these limitations, data augmentation has become an important method. It is a way to circumvent data limitations by supplementing existing datasets with synthesized variations. Augmentation strategies include spatial alignment, pixel intensity manipulation, geometric transformations, and compositing, each of which is designed to give the dataset a semblance of real-world variability. This study explores the various applications of data augmentation in the field of landmine detection. It emphasizes the importance of augmentation as a means of overcoming data limitations.
利用数据增强技术提高地雷探测精度:一项综合研究
在地雷探测等领域,获取大量标记数据具有挑战性,数据增强作为一种关键方法脱颖而出。本文研究了不同数据增强方法的作用和影响,并评估了它们在提高适用于地雷探测的深度学习模型性能方面的有效性。地雷探测一方面受到国际安全需要的制约,另一方面受到紧急人道主义需要的制约。这一领域的特点是紧急和要求精确,是对付爆炸性弹药的关键。这些弹药的潜在危险超出了直接的物理破坏,在受影响地区的社会经济结构上留下了它们的印记。它们妨碍农业活动,妨碍基础设施的恢复,并对流离失所人口的返回和重新安置造成障碍。探测和消除这些隐患的任务结合了先进技术和对人道主义原则的坚定承诺,为子孙后代留下了一个清除了过去战争遗留的沉重遗产的土地。机器学习模型在探测地雷方面的有效性与它们所接受训练的数据的多样性、数量和可靠性密不可分。考虑到与可访问性、伦理考虑和安全问题相关的限制,收集多样化和代表性数据集的努力充满了挑战。缺乏全面的数据对机器学习算法的开发和改进构成了重大障碍,可能会限制它们在多样化和不可预测领域有效运行的能力。为了应对这些限制,数据增强已经成为一种重要的方法。这是一种通过用合成变量补充现有数据集来规避数据限制的方法。增强策略包括空间对齐、像素强度操作、几何转换和合成,每一种策略都旨在为数据集提供真实世界可变性的外观。本研究探讨了数据增强在地雷探测领域的各种应用。它强调了增强作为克服数据限制的一种手段的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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