Abstract

High spatial resolution remote sensing (HSRRS) images classification and identification is an important technology to acquire land surface information for land resource management, geographical situation monitoring, and global climate change. As the hottest deep learning method, convolutional neural network (CNN) has been successfully applied in HSRRS image classification and identification due to its powerful information extraction capability. However, adversarial perturbations caused by radiation transfer process or artificial or other unpredictable disturbances often deteriorate the stability of CNN. Under this background, we propose a robust architecture for adversarial attack and detection to classify and identify HSRRS images. First of all, two white-box attacks [i.e., large Broyden-Fletcher-Goldfarb-Shanno (L-BFGS) and fast gradient sign method (FGSM)] are adopted respectively to generate adversarial images to confuse the model, and to assess the robustness of the HSRRS image classifier. Second, adversarial detection models based on support vector machine (SVM) with single or fused two level features are proposed to improve the detection accuracy. The features extracted from the testing CNN full connected layers contain adversarial perturbations and real information, from which SVM classifier and discriminate the real and the adversarial images. The adversarial attack model is evaluated in terms of overall accuracy (OA) and kappa coefficient (kc). The simulation results show that the OA decreases from 96.4% to 44.4% and 33.3% for L-BFGS and FGSM attacked classifier model, respectively. The adversarial detection is evaluated via OA, detection probability P D , false alarm probability P FA , and miss probability P M . The simulation results indicate that the fused model with two different level features based on SVM can obtain the best OA (94.5%), P D (0.933), P FA (0.040), and P M (0.067) among the detectors if the classifier is attacked by the FGSM. Meanwhile, when facing the L-BFGS attack, the fused model presents similar performance if the best single level features are utilized.

Highlights

  • Many efforts on high spatial resolution remote sensing (HSRRS) images classification and identificationThe associate editor coordinating the review of this manuscript and approving it for publication was Tomohiko Taniguchi.have been made to acquire land surface information

  • The robustness of the HSRRS image classifier has been assessed by white-box attacks (L-BFGS and fast gradient sign method (FGSM)), and the detection model based on the support vector machine (SVM) has been proposed to detect the adversarial images

  • The results reveal that the HSRRS image classifier is vulnerable when attacked by large Broyden-Fletcher-Goldfarb-Shanno (L-BFGS) or FGSM, and the overall accuracy (OA) decreases from 96.4% to 44.4% and 33.3%, respectively

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Summary

Introduction

Many efforts on high spatial resolution remote sensing (HSRRS) images classification and identificationThe associate editor coordinating the review of this manuscript and approving it for publication was Tomohiko Taniguchi.have been made to acquire land surface information. Many efforts on high spatial resolution remote sensing (HSRRS) images classification and identification. The associate editor coordinating the review of this manuscript and approving it for publication was Tomohiko Taniguchi. Have been made to acquire land surface information. The information can be used to facilitate researches on land resource management, geographical situation monitoring and global climate change. As the spectral statistical characteristics is not stable, and the same target show different spectral characteristics, the traditional spectral classification methods. W. Li et al.: Spear and Shield: Attack and Detection for CNN-Based HSRRS Images Identification could not obtain satisfactory results. With the development of computer technology, deep learning algorithms have been applied for classification and recognition of HSRRS images

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