首页> 外文会议>IEEE International Geoscience and Remote Sensing Symposium >AUTOMATIC TARGET RECOGNITION IN SAR IMAGERY USING PULSE-COUPLED NEURAL NETWORK SEGMENTATION CASCADED WITH VIRTUAL TRAINING DATA GENERATION CSOM-BASED CLASSIFIER
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AUTOMATIC TARGET RECOGNITION IN SAR IMAGERY USING PULSE-COUPLED NEURAL NETWORK SEGMENTATION CASCADED WITH VIRTUAL TRAINING DATA GENERATION CSOM-BASED CLASSIFIER

机译:使用虚拟训练数据生成CSOM的分类器级联的脉冲耦合神经网络分割在SAR图像中自动目标识别

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The paper presents an original neural network approach for automatic target recognition (ATR) in the synthetic aperture radar (SAR) imagery using a pulse-coupled neural network (PCNN) segmentation module combined with a classifier based on virtual training data generation (VTDG) using concurrent self-organization maps (CSOM). The proposed ATR algorithm has the following stages: (a) object detection using PCNN image segmentation; (b) feature selection using Gabor filtering (GF) cascaded with principal component analysis (PCA); (c) support vector machine (SVM) classification using VTDG-CSOM to improve the classifier performances. The proposed model has been applied for the recognition of three classes of military ground vehicles represented by the set of 2987 images of the MSTAR public release database. The experimental results have confirmed the method effectiveness, leading to a total success rate of 97.36%.
机译:本文使用脉冲耦合的神经网络(PCNN)分割模块与基于虚拟训练数据生成(VTDG)的分类器组合的合成孔径雷达(SAR)图像中的自动目标识别(SAR)图像中的自动目标识别(ATR)原始神经网络方法。使用并发自组织地图(CSOM)。所提出的ATR算法具有以下阶段:(a)使用PCNN图像分割的对象检测; (b)使用Gabor滤波的特征选择(GF)级联主成分分析(PCA); (c)支持向量机(SVM)使用VTDG-CSOM进行分类以改善分类器性能。拟议的模型已被应用于识别由MSTAR公共发布数据库的2987张图像集的三类军用地车辆。实验结果证实了该方法有效性,总成功率为97.36%。

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