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Exploratory Research on Defense against Natural Adversarial Examples in Image Classification
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作者 Yaoxuan Zhu Hua Yang Bin Zhu 《Computers, Materials & Continua》 2025年第2期1947-1968,共22页
The emergence of adversarial examples has revealed the inadequacies in the robustness of image classification models based on Convolutional Neural Networks (CNNs). Particularly in recent years, the discovery of natura... The emergence of adversarial examples has revealed the inadequacies in the robustness of image classification models based on Convolutional Neural Networks (CNNs). Particularly in recent years, the discovery of natural adversarial examples has posed significant challenges, as traditional defense methods against adversarial attacks have proven to be largely ineffective against these natural adversarial examples. This paper explores defenses against these natural adversarial examples from three perspectives: adversarial examples, model architecture, and dataset. First, it employs Class Activation Mapping (CAM) to visualize how models classify natural adversarial examples, identifying several typical attack patterns. Next, various common CNN models are analyzed to evaluate their susceptibility to these attacks, revealing that different architectures exhibit varying defensive capabilities. The study finds that as the depth of a network increases, its defenses against natural adversarial examples strengthen. Lastly, Finally, the impact of dataset class distribution on the defense capability of models is examined, focusing on two aspects: the number of classes in the training set and the number of predicted classes. This study investigates how these factors influence the model’s ability to defend against natural adversarial examples. Results indicate that reducing the number of training classes enhances the model’s defense against natural adversarial examples. Additionally, under a fixed number of training classes, some CNN models show an optimal range of predicted classes for achieving the best defense performance against these adversarial examples. 展开更多
关键词 Image classification convolutional neural network natural adversarial example data set defense against adversarial examples
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A Survey of Adversarial Examples in Computer Vision:Attack,Defense,and Beyond
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作者 XU Keyizhi LU Yajuan +1 位作者 WANG Zhongyuan LIANG Chao 《Wuhan University Journal of Natural Sciences》 2025年第1期1-20,共20页
Recent years have witnessed the ever-increasing performance of Deep Neural Networks(DNNs)in computer vision tasks.However,researchers have identified a potential vulnerability:carefully crafted adversarial examples ca... Recent years have witnessed the ever-increasing performance of Deep Neural Networks(DNNs)in computer vision tasks.However,researchers have identified a potential vulnerability:carefully crafted adversarial examples can easily mislead DNNs into incorrect behavior via the injection of imperceptible modification to the input data.In this survey,we focus on(1)adversarial attack algorithms to generate adversarial examples,(2)adversarial defense techniques to secure DNNs against adversarial examples,and(3)important problems in the realm of adversarial examples beyond attack and defense,including the theoretical explanations,trade-off issues and benign attacks in adversarial examples.Additionally,we draw a brief comparison between recently published surveys on adversarial examples,and identify the future directions for the research of adversarial examples,such as the generalization of methods and the understanding of transferability,that might be solutions to the open problems in this field. 展开更多
关键词 computer vision adversarial examples adversarial attack adversarial defense
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Enhancing Adversarial Example Transferability via Regularized Constrained Feature Layer
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作者 Xiaoyin Yi Long Chen +2 位作者 Jiacheng Huang Ning Yu Qian Huang 《Computers, Materials & Continua》 2025年第4期157-175,共19页
Transfer-based Adversarial Attacks(TAAs)can deceive a victim model even without prior knowledge.This is achieved by leveraging the property of adversarial examples.That is,when generated from a surrogate model,they re... Transfer-based Adversarial Attacks(TAAs)can deceive a victim model even without prior knowledge.This is achieved by leveraging the property of adversarial examples.That is,when generated from a surrogate model,they retain their features if applied to other models due to their good transferability.However,adversarial examples often exhibit overfitting,as they are tailored to exploit the particular architecture and feature representation of source models.Consequently,when attempting black-box transfer attacks on different target models,their effectiveness is decreased.To solve this problem,this study proposes an approach based on a Regularized Constrained Feature Layer(RCFL).The proposed method first uses regularization constraints to attenuate the initial examples of low-frequency components.Perturbations are then added to a pre-specified layer of the source model using the back-propagation technique,in order to modify the original adversarial examples.Afterward,a regularized loss function is used to enhance the black-box transferability between different target models.The proposed method is finally tested on the ImageNet,CIFAR-100,and Stanford Car datasets with various target models,The obtained results demonstrate that it achieves a significantly higher transfer-based adversarial attack success rate compared with baseline techniques. 展开更多
关键词 Adversarial examples black-box transferability regularized constrained transfer-based adversarial attacks
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Omni-Detection of Adversarial Examples with Diverse Magnitudes
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作者 Ke Jianpeng Wang Wenqi +3 位作者 Yang Kang Wang Lina Ye Aoshuang Wang Run 《China Communications》 SCIE CSCD 2024年第12期139-151,共13页
Deep neural networks(DNNs)are poten-tially susceptible to adversarial examples that are ma-liciously manipulated by adding imperceptible pertur-bations to legitimate inputs,leading to abnormal be-havior of models.Plen... Deep neural networks(DNNs)are poten-tially susceptible to adversarial examples that are ma-liciously manipulated by adding imperceptible pertur-bations to legitimate inputs,leading to abnormal be-havior of models.Plenty of methods have been pro-posed to defend against adversarial examples.How-ever,the majority of them are suffering the follow-ing weaknesses:1)lack of generalization and prac-ticality.2)fail to deal with unknown attacks.To ad-dress the above issues,we design the adversarial na-ture eraser(ANE)and feature map detector(FMD)to detect fragile and high-intensity adversarial examples,respectively.Then,we apply the ensemble learning method to compose our detector,dealing with adver-sarial examples with diverse magnitudes in a divide-and-conquer manner.Experimental results show that our approach achieves 99.30%and 99.62%Area un-der Curve(AUC)scores on average when tested with various Lp norm-based attacks on CIFAR-10 and Im-ageNet,respectively.Furthermore,our approach also shows its potential in detecting unknown attacks. 展开更多
关键词 adversarial example detection ensemble learning feature maps fragile and high-intensity ad-versarial examples
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An Empirical Study on the Effectiveness of Adversarial Examples in Malware Detection
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作者 Younghoon Ban Myeonghyun Kim Haehyun Cho 《Computer Modeling in Engineering & Sciences》 SCIE EI 2024年第6期3535-3563,共29页
Antivirus vendors and the research community employ Machine Learning(ML)or Deep Learning(DL)-based static analysis techniques for efficient identification of new threats,given the continual emergence of novel malware ... Antivirus vendors and the research community employ Machine Learning(ML)or Deep Learning(DL)-based static analysis techniques for efficient identification of new threats,given the continual emergence of novel malware variants.On the other hand,numerous researchers have reported that Adversarial Examples(AEs),generated by manipulating previously detected malware,can successfully evade ML/DL-based classifiers.Commercial antivirus systems,in particular,have been identified as vulnerable to such AEs.This paper firstly focuses on conducting black-box attacks to circumvent ML/DL-based malware classifiers.Our attack method utilizes seven different perturbations,including Overlay Append,Section Append,and Break Checksum,capitalizing on the ambiguities present in the PE format,as previously employed in evasion attack research.By directly applying the perturbation techniques to PE binaries,our attack method eliminates the need to grapple with the problem-feature space dilemma,a persistent challenge in many evasion attack studies.Being a black-box attack,our method can generate AEs that successfully evade both DL-based and ML-based classifiers.Also,AEs generated by the attack method retain their executability and malicious behavior,eliminating the need for functionality verification.Through thorogh evaluations,we confirmed that the attack method achieves an evasion rate of 65.6%against well-known ML-based malware detectors and can reach a remarkable 99%evasion rate against well-known DL-based malware detectors.Furthermore,our AEs demonstrated the capability to bypass detection by 17%of vendors out of the 64 on VirusTotal(VT).In addition,we propose a defensive approach that utilizes Trend Locality Sensitive Hashing(TLSH)to construct a similarity-based defense model.Through several experiments on the approach,we verified that our defense model can effectively counter AEs generated by the perturbation techniques.In conclusion,our defense model alleviates the limitation of the most promising defense method,adversarial training,which is only effective against the AEs that are included in the training classifiers. 展开更多
关键词 Malware classification machine learning adversarial examples evasion attack CYBERSECURITY
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微探仁爱版初中英语教材中“Example”部分的教学策略
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作者 王秀英 《名师在线(中英文)》 2024年第14期64-66,共3页
仁爱版初中英语教材中的“Example”部分是听说课教学的重要内容之一,也是学生在语言实践中迁移和运用知识的集中体现。如何提高“Example”部分教学内容的指导性、针对性和有效性是一线教师关注的焦点。文章分析了“Example”部分内容... 仁爱版初中英语教材中的“Example”部分是听说课教学的重要内容之一,也是学生在语言实践中迁移和运用知识的集中体现。如何提高“Example”部分教学内容的指导性、针对性和有效性是一线教师关注的焦点。文章分析了“Example”部分内容教学存在的问题,提出以主题意义为导向、深度融合教学与评价、合理分配教学时间和巩固教学成果等教学策略,以期提升“Example”部分的教学成效,逐步培养学生的英语学科核心素养。 展开更多
关键词 初中英语 example”部分 英语学科核心素养
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英文论文中“suchas,forexample,e.g.,i.e.,etc.,et al.”的用法分析 被引量:3
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作者 黄龙旺 龚汉忠 《编辑学报》 CSSCI 北大核心 2008年第2期124-124,共1页
关键词 SUCH as for example e.g. i.e. etc. ET a1. 用法分析
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Selection of Example Varieties Used in the DUS Test Guideline of Tagetes L. 被引量:1
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作者 刘艳芳 张建华 +6 位作者 王烨 陈海荣 徐云 杨晓洪 张惠 管俊娇 王江民 《Agricultural Science & Technology》 CAS 2012年第10期2110-2111,2116,共3页
[Objective] Taking the characteristic of flower diameter of Tagetes L.as an example,this study aimed to select example varieties used in the DUS Test Guideline of Tagetes L.[Method] Two continuous years of measurement... [Objective] Taking the characteristic of flower diameter of Tagetes L.as an example,this study aimed to select example varieties used in the DUS Test Guideline of Tagetes L.[Method] Two continuous years of measurements of flower diameter of 25 varieties were collected and then analyzed by using the box plot to illustrate the uniformity and stability of flower diameter of each variety.[Result] According to the information of variability,distribution symmetry of measurements and outliers of flower diameter of varieties provided by box plots,variety 16,2 and 4 were selected as the example varieties for the three expression states with respective flower diameter of 3.0-4.4,6.0-7.4 and 9.0-10.4 cm.[Conclusion] The box plot is an efficient method for the general analysis of varieties,which provides information covering the actual and possible expression range,median and outliers of measurements of flower diameter of each variety.It also provides references for selecting example varieties for other quantitative characteristics and evaluating the quality of varieties. 展开更多
关键词 DUS Test Guideline of Tagetes L. Quantitative characteristic example variety The box plot
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基于语料库的学习者例证词“for example”对比研究 被引量:1
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作者 郭书彩 李娜 徐瑞华 《河北大学学报(哲学社会科学版)》 CSSCI 北大核心 2015年第1期103-108,160,共6页
基于英美大学生作文语料库(LOCNESS)和中国英语学习者语料库(CLEC)调查中国英语学习者在写作中使用例证词"for example"的特点,研究发现,中国英语学习者无论在使用频数还是在用法上都具有明显区别于本族语者的特征。
关键词 语料库 例证词 for example LOCNESS CLEC
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Auto-expanded multi query examples technology in content-based image retrieval 被引量:1
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作者 王小玲 谢康林 《Journal of Southeast University(English Edition)》 EI CAS 2005年第3期287-292,共6页
In order to narrow the semantic gap existing in content-based image retrieval (CBIR),a novel retrieval technology called auto-extended multi query examples (AMQE) is proposed.It expands the single one query image ... In order to narrow the semantic gap existing in content-based image retrieval (CBIR),a novel retrieval technology called auto-extended multi query examples (AMQE) is proposed.It expands the single one query image used in traditional image retrieval into multi query examples so as to include more image features related with semantics.Retrieving images for each of the multi query examples and integrating the retrieval results,more relevant images can be obtained.The property of the recall-precision curve of a general retrieval algorithm and the K-means clustering method are used to realize the expansion according to the distance of image features of the initially retrieved images.The experimental results demonstrate that the AMQE technology can greatly improve the recall and precision of the original algorithms. 展开更多
关键词 content-based image retrieval SEMANTIC multi query examples K-means clustering
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An Intelligent Secure Adversarial Examples Detection Scheme in Heterogeneous Complex Environments
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作者 Weizheng Wang Xiangqi Wang +5 位作者 Xianmin Pan Xingxing Gong Jian Liang Pradip Kumar Sharma Osama Alfarraj Wael Said 《Computers, Materials & Continua》 SCIE EI 2023年第9期3859-3876,共18页
Image-denoising techniques are widely used to defend against Adversarial Examples(AEs).However,denoising alone cannot completely eliminate adversarial perturbations.The remaining perturbations tend to amplify as they ... Image-denoising techniques are widely used to defend against Adversarial Examples(AEs).However,denoising alone cannot completely eliminate adversarial perturbations.The remaining perturbations tend to amplify as they propagate through deeper layers of the network,leading to misclassifications.Moreover,image denoising compromises the classification accuracy of original examples.To address these challenges in AE defense through image denoising,this paper proposes a novel AE detection technique.The proposed technique combines multiple traditional image-denoising algorithms and Convolutional Neural Network(CNN)network structures.The used detector model integrates the classification results of different models as the input to the detector and calculates the final output of the detector based on a machine-learning voting algorithm.By analyzing the discrepancy between predictions made by the model on original examples and denoised examples,AEs are detected effectively.This technique reduces computational overhead without modifying the model structure or parameters,effectively avoiding the error amplification caused by denoising.The proposed approach demonstrates excellent detection performance against mainstream AE attacks.Experimental results show outstanding detection performance in well-known AE attacks,including Fast Gradient Sign Method(FGSM),Basic Iteration Method(BIM),DeepFool,and Carlini&Wagner(C&W),achieving a 94%success rate in FGSM detection,while only reducing the accuracy of clean examples by 4%. 展开更多
关键词 Deep neural networks adversarial example image denoising adversarial example detection machine learning adversarial attack
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A New Example of Retrograde Solubility Model for Carbonate Rocks 被引量:2
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作者 LIU Lihong WANG Chunlian +1 位作者 WANG Daming WANG Haida 《Acta Geologica Sinica(English Edition)》 SCIE CAS CSCD 2017年第3期1145-1146,共2页
Objective The dissolution and precipitation of carbonate during burial diagenetic process controls the reservoir property in deep buried strata. The geological process related with it has become a research focus durin... Objective The dissolution and precipitation of carbonate during burial diagenetic process controls the reservoir property in deep buried strata. The geological process related with it has become a research focus during recent years. The most important dissolution fluids to carbonates are probably H2S and CO2 as byproducts of sulfate reduction in deep-buried setting with sulfate minerals, but carbonates are more soluble in relatively low temperature, which is the so-called retrograde solubility. Several geological processes can result in the decrease of temperature, including the upward migration of thermal fluids and tectonic uplift. 展开更多
关键词 of on with WELL A New example of Retrograde Solubility Model for Carbonate Rocks for
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Digital image inpainting by example-based image synthesis method 被引量:1
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作者 聂栋栋 Ma Lizhuang Xiao Shuangjiu 《High Technology Letters》 EI CAS 2006年第3期276-282,共7页
A simple and effective image inpainting method is proposed in this paper, which is proved to be suitable for different kinds of target regions with shapes from little scraps to large unseemly objects in a wide range o... A simple and effective image inpainting method is proposed in this paper, which is proved to be suitable for different kinds of target regions with shapes from little scraps to large unseemly objects in a wide range of images. It is an important improvement upon the traditional image inpainting techniques. By introducing a new bijeetive-mapping term into the matching cost function, the artificial repetition problem in the final inpainting image is practically solved. In addition, by adopting an inpainting error map, not only the target pixels are refined gradually during the inpainting process but also the overlapped target patches are combined more seamlessly than previous method. Finally, the inpainting time is dramatically decreased by using a new acceleration method in the matching process. 展开更多
关键词 INPAINTING image synthesis texture synthesis prority matching cost function example patch isophote DIFFUSION
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Patterns of Clay Minerals Transformation in Clay Gouge, with Examples from Revers Fault Rocks in Devonina Niqiuhe Formation in The Dayangshu Basin 被引量:2
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作者 MENG Jie LI Benxian +1 位作者 ZHANG Juncheng LIU Xiaoyang 《Acta Geologica Sinica(English Edition)》 SCIE CAS CSCD 2017年第S1期59-60,共2页
The role of authigenic clay growth in clay gouge is increasingly recognized as a key to understanding the mechanics of berittle faulting and fault zone processes,including creep and seismogenesis,and providing new ins... The role of authigenic clay growth in clay gouge is increasingly recognized as a key to understanding the mechanics of berittle faulting and fault zone processes,including creep and seismogenesis,and providing new insights into the ongoing debate about the frictional strength of brittle fault(Haines and van der Pluijm,2012).However,neither the conditions nor the processes which 展开更多
关键词 with examples from Revers Fault Rocks in Devonina Niqiuhe Formation in The Dayangshu Basin Patterns of Clay Minerals Transformation in Clay Gouge
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Characteristics of Authigenic Pyrite and its Sulfur Isotopes Influenced by Methane Seep--Taking the Core A at Site 79 of the Middle Okinawa Trough as an Example 被引量:1
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作者 WANG Meng LI Qing +7 位作者 CAI Feng LIANG Jie YAN Guijing DONG Gang WANG Feng SHAO Hebin LUO Di CAO Yimin 《Acta Geologica Sinica(English Edition)》 SCIE CAS CSCD 2017年第1期365-366,共2页
Objective Authigenic pyrite often develops extensively in marine sediments,which is an important product of sulfate reduction in an anoxic environment.It has a specific appearance and complicated sulfur isotopic prope... Objective Authigenic pyrite often develops extensively in marine sediments,which is an important product of sulfate reduction in an anoxic environment.It has a specific appearance and complicated sulfur isotopic properties,and acts as important evidence of methane seep in marine sediments.Strong AOM(anaerobic oxidation of methane)activity has developed in the Okinawa Trough. 展开更多
关键词 AOM Characteristics of Authigenic Pyrite and its Sulfur Isotopes Influenced by Methane Seep Taking the Core A at Site 79 of the Middle Okinawa Trough as an example
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A Survey on Adversarial Examples in Deep Learning 被引量:3
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作者 Kai Chen Haoqi Zhu +1 位作者 Leiming Yan Jinwei Wang 《Journal on Big Data》 2020年第2期71-84,共14页
Adversarial examples are hot topics in the field of security in deep learning.The feature,generation methods,attack and defense methods of the adversarial examples are focuses of the current research on adversarial ex... Adversarial examples are hot topics in the field of security in deep learning.The feature,generation methods,attack and defense methods of the adversarial examples are focuses of the current research on adversarial examples.This article explains the key technologies and theories of adversarial examples from the concept of adversarial examples,the occurrences of the adversarial examples,the attacking methods of adversarial examples.This article lists the possible reasons for the adversarial examples.This article also analyzes several typical generation methods of adversarial examples in detail:Limited-memory BFGS(L-BFGS),Fast Gradient Sign Method(FGSM),Basic Iterative Method(BIM),Iterative Least-likely Class Method(LLC),etc.Furthermore,in the perspective of the attack methods and reasons of the adversarial examples,the main defense techniques for the adversarial examples are listed:preprocessing,regularization and adversarial training method,distillation method,etc.,which application scenarios and deficiencies of different defense measures are pointed out.This article further discusses the application of adversarial examples which currently is mainly used in adversarial evaluation and adversarial training.Finally,the overall research direction of the adversarial examples is prospected to completely solve the adversarial attack problem.There are still a lot of practical and theoretical problems that need to be solved.Finding out the characteristics of the adversarial examples,giving a mathematical description of its practical application prospects,exploring the universal method of adversarial example generation and the generation mechanism of the adversarial examples are the main research directions of the adversarial examples in the future. 展开更多
关键词 Adversarial examples generation methods defense methods
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for example还是such as 被引量:1
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作者 戴卫红 《英语辅导(高中年级)》 2001年第8期11-11,共1页
高中学生写英语作文时,常需列举事物,如:
关键词 高中 英语 写作指导 “for example “such as” 用法
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Adversarial Example Generation Method Based on Sensitive Features
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作者 WEN Zerui SHEN Zhidong +1 位作者 SUN Hui QI Baiwen 《Wuhan University Journal of Natural Sciences》 CAS CSCD 2023年第1期35-44,共10页
As deep learning models have made remarkable strides in numerous fields,a variety of adversarial attack methods have emerged to interfere with deep learning models.Adversarial examples apply a minute perturbation to t... As deep learning models have made remarkable strides in numerous fields,a variety of adversarial attack methods have emerged to interfere with deep learning models.Adversarial examples apply a minute perturbation to the original image,which is inconceivable to the human but produces a massive error in the deep learning model.Existing attack methods have achieved good results when the network structure is known.However,in the case of unknown network structures,the effectiveness of the attacks still needs to be improved.Therefore,transfer-based attacks are now very popular because of their convenience and practicality,allowing adversarial samples generated on known models to be used in attacks on unknown models.In this paper,we extract sensitive features by Grad-CAM and propose two single-step attacks methods and a multi-step attack method to corrupt sensitive features.In two single-step attacks,one corrupts the features extracted from a single model and the other corrupts the features extracted from multiple models.In multi-step attack,our method improves the existing attack method,thus enhancing the adversarial sample transferability to achieve better results on unknown models.Our method is also validated on CIFAR-10 and MINST,and achieves a 1%-3%improvement in transferability. 展开更多
关键词 deep learning model adversarial example transferability sensitive characteristics AI security
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DroidEnemy: Battling adversarial example attacks for Android malware detection
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作者 Neha Bala Aemun Ahmar +3 位作者 Wenjia Li Fernanda Tovar Arpit Battu Prachi Bambarkar 《Digital Communications and Networks》 SCIE CSCD 2022年第6期1040-1047,共8页
In recent years,we have witnessed a surge in mobile devices such as smartphones,tablets,smart watches,etc.,most of which are based on the Android operating system.However,because these Android-based mobile devices are... In recent years,we have witnessed a surge in mobile devices such as smartphones,tablets,smart watches,etc.,most of which are based on the Android operating system.However,because these Android-based mobile devices are becoming increasingly popular,they are now the primary target of mobile malware,which could lead to both privacy leakage and property loss.To address the rapidly deteriorating security issues caused by mobile malware,various research efforts have been made to develop novel and effective detection mechanisms to identify and combat them.Nevertheless,in order to avoid being caught by these malware detection mechanisms,malware authors are inclined to initiate adversarial example attacks by tampering with mobile applications.In this paper,several types of adversarial example attacks are investigated and a feasible approach is proposed to fight against them.First,we look at adversarial example attacks on the Android system and prior solutions that have been proposed to address these attacks.Then,we specifically focus on the data poisoning attack and evasion attack models,which may mutate various application features,such as API calls,permissions and the class label,to produce adversarial examples.Then,we propose and design a malware detection approach that is resistant to adversarial examples.To observe and investigate how the malware detection system is influenced by the adversarial example attacks,we conduct experiments on some real Android application datasets which are composed of both malware and benign applications.Experimental results clearly indicate that the performance of Android malware detection is severely degraded when facing adversarial example attacks. 展开更多
关键词 Security Malware detection Adversarial example attack Data poisoning attack Evasi on attack Machine learning ANDROID
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