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首页> 外文期刊>Journal of Applied Remote Sensing >Automatic target classification of man-made objects in synthetic aperture radar images using Gabor wavelet and neural network
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Automatic target classification of man-made objects in synthetic aperture radar images using Gabor wavelet and neural network

机译:利用Gabor小波和神经网络对合成孔径雷达图像中的人造目标进行自动目标分类

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摘要

Processing of synthetic aperture radar (SAR) images has led to the development of automatic target classification approaches. These approaches help to classify individual and mass military ground vehicles. This work aims to develop an automatic target classification technique to classify military targets like truck/tank/armored car/cannon/bulldozer. The proposed method consists of three stages via preprocessing, feature extraction, and neural network (NN). The first stage removes speckle noise in a SAR image by the identified frost filter and enhances the image by histogram equalization. The second stage uses a Gabor wavelet to extract the image features. The third stage classifies the target by an NN classifier using image features. The proposed work performs better than its counterparts, like K-nearest neighbor (KNN). The proposed work performs better on databases like moving and stationary target acquisition and recognition against the earlier methods by KNN.
机译:合成孔径雷达(SAR)图像的处理导致了自动目标分类方法的发展。这些方法有助于对个人和大规模军事地面车辆进行分类。这项工作旨在开发一种自动目标分类技术,对卡车/坦克/装甲车/大炮/推土机等军事目标进行分类。所提出的方法通过预处理,特征提取和神经网络(NN)包括三个阶段。第一阶段通过识别的霜滤器消除SAR图像中的斑点噪声,并通过直方图均衡化增强图像。第二阶段使用Gabor小波提取图像特征。第三阶段通过NN分类器使用图像特征对目标进行分类。拟议的工作要比K近邻(KNN)等同行更好。与KNN的早期方法相比,拟议的工作在移动和固定目标获取和识别等数据库上表现更好。

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