基于Karhunen Loeve变换和分水岭分割的红外传感器陆地地貌检测

A. Ajlouni, A. Sheta
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引用次数: 9

摘要

本文提出了利用Karhunen Loeve变换(KLT)和分水岭分割对红外图像进行地雷物检测的思路。在此基础上,我们提出了一种简化的过程,使用比传统方法更少的图像来减少Karhunen Loeve变换中的计算量。我们有效地利用基于标记的分水岭分割来检测地雷,具有较高的检测率。我们在三个不同的矿区用两种不同的土壤类型测试了我们提出的方法。我们提出的方法包括四个阶段:特征提取、增强、目标分割和目标识别。结果是有希望的。
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Landmind detection with IR sensors using Karhunen Loeve transformation and watershed segmentation
In this paper, we present our idea of using the Karhunen Loeve transformation (KLT) and watershed segmentation to detect landmine objects from infrared images. On doing this, we proposed a simplified process for reducing the computation in the Karhunen Loeve transformation using a smaller number of images than traditional methods do. We effectively used the marker based watershed segmentation to detect the mines with high performance detection rate. We tested our proposed method on three different mine fields with two different soil types. Our proposed method consists of four stages: feature extraction, enhancement, object segmentation, and object recognition. The results are promising.
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