一种新的自评估方法用于航空图像中人造物体和自然场景图像的分类

Md. Abdul Alim Sheikh
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引用次数: 4

摘要

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。提出了一种新的自评估三阶段特征提取方法,即从输入的灰度图像中提取边缘,利用Gabor滤波器计算Gabor能量特征,利用小波分解技术提取计算规模可承受的特征向量。采用概率神经网络(PNN)对航拍图像进行分类。从数据库的112张图像中(58张是自然场景,54张是人造结构),总共30张图像,每个类15张,用于训练阶段。为了对算法进行测试,使用了82张图像(39张人为类图像和43张自然类图像)。该方法对人工结构图像的分类正确率为92.307%,对自然场景图像的分类正确率为97.67%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A novel self-assessed approach for classification of manmade objects and natural scene images from aerial images
Objective of this paper is to categorize aerial images into two classes: images with manmade structures and natural scene images. A novel self-assessed three-stage feature extraction method is presented here which includes extracting edges from the input gray image, applying Gabor filter to compute Gabor energy feature and wavelet decomposition technique to extract the feature vector of computationally affordable size. A probabilistic neural network (PNN) is employed to classify the aerial images. From the database of 112 images (58 are natural scenes and 54 are images with manmade structures), total of 30 images, 15 from each class, are used for training phase. For testing the algorithm, 82 images (39 manmade class and 43 of natural class) are used. The proposed method gives 92.307% correct classification for images with manmade structure and 97.67% for natural scene images.
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