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Classification of UXO Using Convolutional Networks Trained on a Limited Dataset

机译:使用在有限数据集上训练的卷积网络对UXO进行分类

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Classification of unexploded ordnance (UXO) in a fast and accurate manner is an imperative need in both the military and humanitarian demining contexts. An automated algorithm would significantly make the task safer, more convenient and less expensive. This paper targets this problem with the development of an image based approach and employs convolutional networks with images that were acquired on a custom camera setup. As access to multiple samples of ordnance can often be an issue, this work focuses on training the algorithm using a limited dataset and for optimizing its performance when ordnance is found in varying conditions. In particular, seven classes of UXO are considered with 420 images used for the training set and 140 images for the validation set. Using images that account for variation, a classifier was developed which was found to be 97.1% accurate.
机译:在军事和人道主义排雷领域,以快速和准确的方式对未爆炸弹药进行分类是当务之急。自动化算法将大大提高任务的安全性,便利性和降低成本。本文通过基于图像的方法的开发来解决这个问题,并将卷积网络与在自定义相机设置上获取的图像一起使用。由于访问军械的多个样本通常是一个问题,因此这项工作着重于使用有限的数据集训练算法,并在变化的条件下发现军械时优化其性能。特别是,考虑了UXO的七类,其中420张图像用于训练集,而140张图像用于验证集。使用解释差异的图像,开发了一个分类器,该分类器的准确度为97.1%。

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