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Polarimetric SAR Targets Detection and Classification with Deep Convolutional Neural Network

机译:深度卷积神经网络的极化SAR目标检测与分类

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Target detection and classification are important applications for polarimetric SAR (PolSAR). Advanced deep learning techniques represented by deep convolutional neural network (CNN) have been utilized to enhance the application performance. One current challenge is how to adapt deep CNN model for PolSAR target detection and classification with limited training samples while keeping good generalization performance. This work attempts to contribute to this problem. The core idea is to incorporate expert knowledge of target scattering mechanism interpretation and polarimetric feature mining to assist deep CNN model training and improve the final application performance. A polarimetric-feature-driven deep CNN detection and classification scheme is established. Both classical polarimetric features and hidden polarimetric features in the rotation domain are used to drive the proposed deep CNN model. Comparison studies validate the efficiency and superiority of the proposal. For ship detection application, two methods respectively driven by classical polarimetric features and the selected polarimetric features show relatively good performances, with detection probabilities over 90.8% for Radarsat-2 data. Considering the overall detection and false-alarm probabilities, the proposed polarimetric-feature-driven CNN approach achieves even better performance. For land cover classification, the proposed method achieves the state of the art classification accuracy for the benchmark AIRSAR data. Meanwhile, the convergence speed from the proposed polarimetric-feature-driven CNN approach is about 2.3 times faster than the normal CNN method. For multi-temporal UAVSAR datasets, the proposed scheme achieves comparably high classification accuracy as the normal CNN method for train-used temporal data, while for train-not-used data it obtains average 4.86% higher overall accuracy than the normal CNN method.
机译:目标检测和分类是极化SAR(PolSAR)的重要应用。以深度卷积神经网络(CNN)为代表的高级深度学习技术已被用来增强应用程序性能。当前的挑战之一是如何在训练效果有限的情况下,将深度CNN模型用于PolSAR目标检测和分类,同时保持良好的泛化性能。这项工作试图导致此问题。核心思想是将目标散射机制解释和极化特征挖掘方面的专业知识整合在一起,以协助进行深度CNN模型训练并提高最终应用性能。建立了极化特征驱动的深度CNN检测和分类方案。旋转域中的经典极化特征和隐藏极化特征都可用来驱动提出的深层CNN模型。比较研究证实了该提案的效率和优越性。对于船舶检测应用,分别由经典极化特征和选定极化特征驱动的两种方法均显示出相对较好的性能,对Radarsat-2数据的检测概率超过90.8%。考虑到整体检测和虚警概率,建议的极化特征驱动的CNN方法可实现更好的性能。对于土地覆盖分类,所提出的方法达到了基准AIRSAR数据的最新分类精度。同时,所提出的极化特征驱动的CNN方法的收敛速度比普通CNN方法快2.3倍。对于多时间UAVSAR数据集,与常规CNN方法用于训练的时间数据相比,所提方案实现了相对较高的分类精度,而对于未训练数据,其方案则比常规CNN方法平均获得了4.86%的总体准确性。

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