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Noise tolerant classification of aerial images into manmade structures and natural-scene images based on statistical dispersion measures

机译:基于统计色散测度的航空图像耐噪声分类为人造结构和自然场景图像

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摘要

Objective of this paper is to categorize aerial images into two classes: manmade structures and natural-scene images. A novel noise tolerant approach based on statistical dispersion measures is presented here. In this approach, three statistical dispersion measures namely standard deviation, mean absolute deviation and median absolute deviation are used as features. With these measures, a feature vector of size 3×1 is formed and applied to probabilistic neural network (PNN) for classification purpose. From the database of 112 images, 14 images (7 from each class) are used for training purpose. For testing, we have used remaining 98 images (47 images manmade class and 51 images of natural scene class). The proposed method gives 95.75% correct classification for images with manmade structure and 98.04% for natural scene images.
机译:本文的目的是将航空图像分为两类:人造结构图像和自然场景图像。本文介绍了一种基于统计色散测度的新颖的噪声容忍方法。在这种方法中,将三个统计分散度量(即标准偏差,平均绝对偏差和中值绝对偏差)用作特征。通过这些措施,形成大小为3×1的特征向量,并将其应用于概率神经网络(PNN)进行分类。从112张图像的数据库中,有14张图像(每个类别7张)用于训练目的。为了进行测试,我们使用了剩余的98张图像(47张人造图像和51张自然场景图像)。所提出的方法对具有人造结构的图像给出了95.75%的正确分类,对于自然场景图像给出了98.04%的正确分类。

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