基于MLP的地雷探测与分类

Roger Achkar, M. Owayjan, Carlo Mrad
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引用次数: 9

摘要

本文阐述了一种用于地雷定位的自主机器人的智能(视觉和大脑)的设计和实现,特别是反坦克地雷,集束炸弹或未爆弹药。正在研究的扫雷技术利用数字图像处理方面最先进的技术,对所扫描地区所捕获的图像进行预处理。在对扫描图像进行增强后,将数据输入到一个实现人工神经网络(ANN)的处理单元,以对地雷的型号和型号进行分类。反向传播算法用于训练网络。该系统证明能够在各种条件下识别和分类不同类型的地雷,成功率高达90%。各种情况包括从不同角度观察地雷,例如旋转地雷或部分被覆盖的地雷。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Landmine Detection and Classification Using MLP
This paper expounds on the design and the implementation of the intelligence (vision and brain) of an autonomous robot for landmines localization, specifically anti-tank mines, cluster bombs, or unexploded ordnance. The landmine sweeping technique under study utilizes state-of-the-art techniques in digital image processing for pre-processing captured images of the area being scanned. After enhancing the scanned images, data is fed into a processing unit that implements the Artificial Neural Network (ANN) in order to classify the landmines' make and model. The Back-Propagation algorithm is used for teaching the network. The system proved to be able to identify and classify different types of landmines under various conditions with a success rate of up to 90%. Various conditions include different viewpoints of the landmine such as having a rotated landmine, or a partially covered landmine.
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