基于低秩矩阵分解和大间隔学习的硬件木马检测算法研究

项目来源

国家自然科学基金(NSFC)

项目主持人

孙宸

项目受资助机构

工业和信息化部电子第五研究所

项目编号

61801124

立项年度

2018

立项时间

未公开

项目级别

国家级

研究期限

未知 / 未知

受资助金额

21.00万元

学科

信息科学-电子学与信息系统-信号理论与信号处理

学科代码

F-F01-F0111

基金类别

青年科学基金项目

关键词

大间隔学习 ; 低秩矩阵分解 ; 硬件木马检测 ; 机器学习 ; 大间隔学习 ; 低秩矩阵分解 ; 硬件木马检测 ; 机器学习

参与者

周振威;成立业;雷登云;温强;付志伟

参与机构

中国科学院数学与系统科学研究院;工业和信息化部电子第五研究所;广东工业大学

项目标书摘要:集成电路的安全隐患使得我国军事、经济、通信等各个行业难以得到切实有力的安全保障。目前我国自主设计的关键集成电路普遍在非受控工艺线加工制造,这一现状导致了集成电路存在硬件木马的威胁,因此硬件木马检测技术的研究具有使命意义。针对传统人工检测技术不可避免的漏检误差和效率低下的问题,本项目利用机器的精准计算和不知疲惫的特性,考虑工艺波动、环境噪声、测量噪声的影响,研究大规模集成电路硬件木马的智能检测算法。分别针对传统检测方法中的破坏性技术与非破坏性技术展开研究。针对破坏性技术中的批量版图图像,分析实际噪声组成,提出基于混合高斯分布的噪声描述方法,建立基于低秩矩阵分解的模型。针对非破坏性技术中的旁路信号这种微弱信号,充分考虑工艺波动的影响,建立低成本的工艺波动预测方法,消除旁路信号中工艺波动的影响,建立具有判别性的大间隔算法。

Application Abstract: The security of integrated circuits(IC)play a very significant role on China's military,economy,communication and other industries.At present,the key IC designed at home has to manufacture on the controlled production line,which leads to the threat of hardware Trojan.The detection theory and methods have become a hot research topic in the field of integrated circuit.Focusing on the residual error and inefficiency of traditional artificial method,machine learning methods for large scaled integrated circuit are proposed considering the process variations,the environmental noise and the measurement noise.The destructive techniques and non-destructive technologies of traditional detection methods are studied respectively.In view of the map images achieved by reverse engineering,we analyze the noise and describe it based on the mixed Gaussian distribution,and a model based on low rank matrix decomposition is constructed.For side channel signal achieved by non-destructive technology,we consider the process variety,predict them with low cost,and propose an algorithm with high discrimination and max margin.

项目受资助省

广东省

项目结题报告(全文)

随着集成电路从设计到应用的全球化发展,集成电路面临着硬件木马的安全威胁。硬件木马检测准确率受硬件木马检测分辨率和信噪比影响很大。以报道的检测方法往往针对仿真电路,没有实际电路的检测结果。针对我国自主设计的集成电路在非受控工艺线上加工面临的安全隐患,以及现有硬件木马检测方法受噪声影响检测准确率不高的问题,项目开展了基于机器学习的集成电路硬件木马检测算法研究。针对实际电路的版图图像,设计了低秩矩阵分解的硬件木马检测方法,检测准确率达到100%。针对实际电路的旁路信号,设计了大间隔学习的硬件木马检测方法,可以检测出硬件木马分辨率只有1E-5的硬件木马。项目形成了三组硬件木马检测数据,包括一组仿真数据,两组实测数据。研究成果可以用在集成电路的安全性分析,为保障我国集成电路安全性提供了一定的理论支撑,具有良好的社会效益。

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  • 1.Cascaded Face Sketch Synthesis under Various Illuminations

    • 关键词:
    • Drawing (graphics);Image enhancement;Database systems;Chinese universities;Digital entertainment;Face sketch synthesis;Lighting conditions;Lighting variations;Low-rank representations;Multiple features;Real world setting
    • Zhang, Mingjin;Li, Yunsong;Wang, Nannan;Chi, Yuan;Gao, Xinbo
    • 《IEEE Transactions on Image Processing》
    • 2020年
    • 29卷
    • 期刊

    Face sketch synthesis from a photo is of significant importance in digital entertainment. An intelligent face sketch synthesis system requires a strong robustness to lighting variations. Under uncontrolled lighting conditions in real-world settings, such a system will perform consistently well and have little restriction on the lighting conditions. However, previous face sketch synthesis methods tend to synthesize sketches under well-controlled lighting conditions. These methods are sensitive to lighting variations and produce unsatisfactory results when the lighting condition varies. In this paper, we propose a novel cascaded face sketch synthesis framework composed of a multiple feature generator and a cascaded low-rank representation. The multiple feature generator not only produces a generated sketch feature consistent with an artist's drawing style but also extracts a photo feature that is robust to various illuminations. Both features ensure that given a photo patch, the optimal sketch candidates can be selected from the database. The cascaded low-rank representation enables a gradual reduction in the gap between the synthesized face sketch and the corresponding artist-drawn sketch. Experimental results illustrate that the proposed cascaded framework generates realistic sketches on par with the current methods on the Chinese University of Hong Kong face sketch database under well-controlled illuminations. Moreover, this framework exhibits greatly improved performance compared to these methods on the extended Chinese University of Hong Kong face sketch database and Chinese celebrity face photos from the web under different illuminations. We argue that this framework paves a novel way for the implementation of computer-aided optical systems that are of essential importance in both face sketch synthesis and optical imaging.
    © 2019 IEEE.

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  • 2.Multiresolution Interpretable Contourlet Graph Network for Image Classification

    • 关键词:
    • Image resolution; Feature extraction; Transforms; Visualization;Convolution; Signal resolution; Convolutional neural networks;Contourlet transform (CT); graph convolutional networks (GCNs); graphrepresentation learning; multidirectional and multiscale representation;multiscale geometric analysis (MGA)
    • Chen, Jie;Jiao, Licheng;Liu, Xu;Liu, Fang;Li, Lingling;Yang, Shuyuan
    • 《IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS》
    • 2023年
    • 期刊

    Modeling contextual relationships in images as graph inference is an interesting and promising research topic. However, existing approaches only perform graph modeling of entities, ignoring the intrinsic geometric features of images. To overcome this problem, a novel multiresolution interpretable contourlet graph network (MICGNet) is proposed in this article. MICGNet delicately balances graph representation learning with the multiscale and multidirectional features of images, where contourlet is used to capture the hyperplanar directional singularities of images and multilevel sparse contourlet coefficients are encoded into graph for further graph representation learning. This process provides interpretable theoretical support for optimizing the model structure. Specifically, first, the superpixel-based region graph is constructed. Then, the region graph is applied to code the nonsubsampled contourlet transform (NSCT) coefficients of the image, which are considered as node features. Considering the statistical properties of the NSCT coefficients, we calculate the node similarity, i.e., the adjacency matrix, using Mahalanobis distance. Next, graph convolutional networks (GCNs) are employed to further learn more abstract multilevel NSCT-enhanced graph representations. Finally, the learnable graph assignment matrix is designed to get the geometric association representations, which accomplish the assignment of graph representations to grid feature maps. We conduct comparative experiments on six publicly available datasets, and the experimental analysis shows that MICGNet is significantly more effective and efficient than other algorithms of recent years.

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  • 3.A Universal Quaternion Hypergraph Network for Multimodal Video Question Answering

    • 关键词:
    • Quaternions; Task analysis; Cognition; Visualization; Knowledgediscovery; Feature extraction; Convolution; Video question answering;multimodal features; quaternion operations; hypergraph convolution
    • Guo, Zhicheng;Zhao, Jiaxuan;Jiao, Licheng;Liu, Xu;Liu, Fang
    • 《IEEE TRANSACTIONS ON MULTIMEDIA》
    • 2023年
    • 25卷
    • 期刊

    Fusion and interaction of multimodal features are essential for video question answering. Structural information composed of the relationships between different objects in videos is very complex, which restricts understanding and reasoning. In this paper, we propose a quaternion hypergraph network (QHGN) for multimodal video question answering, to simultaneously involve multimodal features and structural information. Since quaternion operations are suitable for multimodal interactions, four components of the quaternion vectors are applied to represent the multimodal features. Furthermore, we construct a hypergraph based on the visual objects detected in the video. Most importantly, the quaternion hypergraph convolution operator is theoretically derived to realize multimodal and relational reasoning. Question and candidate answers are embedded in quaternion space, and a Q & A reasoning module is creatively designed for selecting the answer accurately. Moreover, the unified framework can be extended to other video-text tasks with different quaternion decoders. Experimental evaluations on the TVQA dataset and DramaQA dataset show that our method achieves state-of-the-art performance.

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  • 4.CDANet: Common-and-Differential Attention Network for Object Detection and Instance Segmentation

    • 关键词:
    • Object detection; Common-and-differential operations; Attentionmechanism; Object detection; Common-and-differential operations;Attention mechanism
    • Wang, Yan;Li, Yang;Guo, Xiaohui;Jiao, Licheng;Liu, Xu
    • 《PATTERN RECOGNITION LETTERS》
    • 2022年
    • 158卷
    • 期刊

    In this paper, we propose a simple and effective Common-and-Differential Attention Network (CDANet) for object detection and instance segmentation. For an input intermediate feature map, CDANet infers parallelly attention modules along channel and spatial dimensions respectively, then both attention modules are multiplied with the input feature map for the refined features. Specially, since redundant and confusing background may misdirect the localization at object boundary, our attention network applies Common-and-Differential operations to weaken useless background interference and focus on meaningful object features. The proposed CDANet is verified performance through comprehensive experiments on PASCAL VOC2007 and MS COCO2017 datasets for object detection and instance segmentation tasks. CDANet obtains consistently improved results on various detectors with different backbones, indicating the significant effectiveness and applicability of CDANet.(c) 2022 Elsevier B.V. All rights reserved.

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  • 5.Deep Multiview Union Learning Network for Multisource Image Classification

    • 关键词:
    • Classification; deep learning; feature fusion; multisource image;multiview learning;REMOTE-SENSING DATA; AIRBORNE LIDAR DATA; DATA FUSION; EXTINCTIONPROFILES; FOREST
    • Liu, Xu;Jiao, Licheng;Li, Lingling;Cheng, Lin;Liu, Fang;Yang, Shuyuan;Hou, Biao
    • 《IEEE TRANSACTIONS ON CYBERNETICS》
    • 2022年
    • 52卷
    • 6期
    • 期刊

    With the development of the imaging technology of various sensors, multisource image classification has become a key challenge in the field of image interpretation. In this article, a novel classification method, called the deep multiview union learning network (DMULN), is proposed to classify multisensor data. First, an associated feature extractor is designed to process the multisource data by canonical correlation analysis (CCA) in the head of the network. Second, an improved deep learning architecture with two branches is presented to extract high-level view features from the associated features. Third, a novel pooling, called view union pooling, is proposed to fuse the multiview feature from the deep model. Finally, the fused feature is fed into the classifier. The proposed framework is easy to optimize since it is an end-to-end network. Extensive experiments and analysis on the datasets IEEE_grss_dfc_2017 and IEEE_grss_dfc_2018 show that the proposed method achieves comparable results. Our results demonstrate that abundant multisource information can improve the classification performance.

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  • 6.Very Low-Resolution Moving Vehicle Detection in Satellite Videos

    • 关键词:
    • Videos; Satellites; Feature extraction; Transformers; Semantics; Vehicledetection; Interference; Detection; end-to-end neural network framework;integrated motion information; low-resolution; moving vehicle; satellitevideo; transformer
    • Pi, Zhaoliang;Jiao, Licheng;Liu, Fang;Liu, Xu;Li, Lingling;Hou, Biao;Yang, Shuyuan
    • 《IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING》
    • 2022年
    • 60卷
    • 期刊

    This article proposes a practical end-to-end neural network framework to detect tiny moving vehicles in satellite videos with low imaging quality. Some instability factors, such as illumination changes, motion blurs, and low contrast to the cluttered background, make it difficult to distinguish true objects from noise and other point-shaped distractors. Moving vehicle detection in satellite videos can be carried out based on background subtraction or frame differencing. However, these methods are prone to produce lots of false alarms and miss many positive targets. Appearance-based detection can be an alternative but is not well-suited since classifier models are of weak discriminative power for the vehicles in top view at such low resolution. This article addresses these issues by integrating motion information from adjacent frames to facilitate the extraction of semantic features and incorporating the transformer to refine the features for key points estimation and scale prediction. Our proposed model can well identify the actual moving targets and suppress interference from stationary targets or background. The experiments and evaluations using satellite videos show that the proposed approach can accurately locate the targets under weak feature attributes and improve the detection performance in complex scenarios.

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  • 7.Dual Wavelet Attention Networks for Image Classification

    • 关键词:
    • Wavelet transforms; Discrete wavelet transforms; Feature extraction;Discrete cosine transforms; Wavelet domain; Image coding; Visualization;Attention mechanism; 2D DWT; dual wavelet attention; wavelet channelattention; wavelet spatial attention;TRANSFORM
    • Yang, Yuting;Jiao, Licheng;Liu, Xu;Liu, Fang;Yang, Shuyuan;Li, Lingling;Chen, Puhua;Li, Xiufang;Huang, Zhongjian
    • 《IEEE TRANSACTIONS ON CIRCUITS AND SYSTEMS FOR VIDEO TECHNOLOGY》
    • 2023年
    • 33卷
    • 4期
    • 期刊

    Global average pooling (GAP) plays an important role in traditional channel attention. However, there is the disadvantage of insufficient information to use the result of GAP as the channel scalar. At the same time, the existing spatial attention models focus on the areas of interest using average pooling or convolutional networks, but there is a loss of feature information and neglect of the structural feature. In this paper, dual wavelet attention is proposed, which can effectively alleviate the aforementioned problems and enhance the representation ability of CNNs. Firstly, the equivalence between the sum of the low-frequency subband coefficients of 2D DWT (Haar) and GAP is proved. On this basis, the statistical characteristics of low-frequency and high-frequency subbands are effectively combined to obtain the channel scalars, which can better measure the importance of each channel. In addition, 2D DWT can effectively capture the approximate and detailed structural features. Thus, wavelet spatial attention is proposed, which can effectively focus on the key spatial structural features. Different from traditional spatial attention, it can better curve the structural and spatial attention for different channels. The experiments are verified on four natural image data sets and three remote sensing scene classification data sets, which shows the effectiveness and versatility of the proposed methods. The code of this paper will be available at https://github.com/yutinyang/DWAN.

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  • 8.GAFnet: Group Attention Fusion Network for PAN and MS Image High-Resolution Classification

    • 《IEEE TRANSACTIONS ON CYBERNETICS》
    • 2021年
    • 52卷
    • 10期
    • 期刊

    Panchromatic (PAN) and multispectral (MS) images have coordinated and paired spatial spectral information, which can complement each other and make up for their shortcomings for image interpretation. In this article, a novel classification method called the deep group spatial-spectral attention fusion network is proposed for PAN and MS images. First, the MS image is processed by unpooling to obtain the same resolution as that of the PAN image. Second, the group spatial attention and group spectral attention modules are proposed to extract image features. The PAN and the processed MS images are regarded as the input of the two modules, respectively. Third, the features from the previous step are fused by the attention fusion module, which aims to fully fuse multilevel features, take into account both the low-level features and the high-level features, and maintain the global abstract and local detailed information of the pixels. Finally, the fusion feature is fed into the classifier and the resulting map is obtained by pixel level. Extensive experiments and analysis on four datasets show that the proposed method achieves comparable results.

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  • 9.Automatic Graph Learning Convolutional Networks for Hyperspectral Image Classification

    • 关键词:
    • Hyperspectral imaging; Task analysis; Semantics; Feature extraction;Deep learning; Convolution; Training; Automatic learning; dynamic graph;graph convolutional network (GCN); hyperspectral image classification(HSIC); Siamese network (SiamNet);REPRESENTATION; SPARSE; FIELD; CNN
    • Chen, Jie;Jiao, Licheng;Liu, Xu;Li, Lingling;Liu, Fang;Yang, Shuyuan
    • 《IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING》
    • 2022年
    • 60卷
    • 期刊

    The excellent performance of graph convolutional networks (GCNs) on non-Euclidean data has drawn widespread attention from the hyperspectral image classification (HSIC) community, where the predefined graph (including node modeling and adjacency matrix calculation) plays a key role. However, existing GCN-based methods rely on manual efforts in constructing and updating graphs, and the superpixel-based node features lack high-level semantics. In this article, we propose an automatic graph learning convolutional network (Auto-GCN), which unifies the graph learning and HSIC in a & x201C;network-in-network & x201D; manner. Specifically, the graph is employed to model the interaction of the high-order tensors. Considering the powerful learning and representation capabilities of convolutional neural networks (CNNs), the semisupervised Siamese network (SiamNet) is embedded into GCNs and HSIC networks to accomplish the automatic learning and dynamic updating of the graph. GCNs further encode and infer the dynamic graph, and then, the learnable graph reprojection matrix is designed to assign graph representations to pixels. The dynamic graph serves the HSIC task during forward propagation, while the HSIC task continuously corrects the graph during backward propagation. Therefore, the & x201C;automatic & x201D; of the proposed Auto-GCN is not only reflected in the fact that the graph representation is designed and updated by an end-to-end network but is also HSIC task-oriented. The experimental results show that the proposed Auto-GCN outperforms other state-of-the-art methods on four publicly available hyperspectral datasets.

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  • 10.RDLNet: A Regularized Descriptor Learning Network

    • 关键词:
    • Training; Kernel; Feature extraction; Measurement; Learning systems;Technological innovation; Task analysis; Compact descriptorrepresentation; local image descriptor learning; margin loss; orthogonalregularization; samples mining;NEURAL-NETWORK; IMAGE
    • Zhang, Jun;Jiao, Licheng;Ma, Wenping;Liu, Fang;Liu, Xu;Li, Lingling;Zhu, Hao
    • 《IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS》
    • 2021年
    • 期刊

    Local image descriptor learning has been instrumental in various computer vision tasks. Recent innovations lie with similarity measurement of descriptor vectors with metric learning for randomly selected Siamese or triplet patches. Local image descriptor learning focuses more on hard samples since easy samples do not contribute much to optimization. However, few studies focus on hard samples of image patches from the perspective of loss functions and design appropriate learning algorithms to obtain a more compact descriptor representation. This article proposes a regularized descriptor learning network (RDLNet) that makes the network focus on the learning of hard samples and compact descriptor with triplet networks. A novel hard sample mining strategy is designed to select the hardest negative samples in mini-batch. Then batch margin loss concerned with hard samples is adopted to optimize the distance of extreme cases. Finally, for a more stable network and preventing network collapsing, orthogonal regularization is designed to constrain convolutional kernels and obtain rich deep features. RDLNet provides a compact discriminative low-dimensional representation and can be embedded in other pipelines easily. This article gives extensive experimental results for large benchmarks in multiple scenarios and generalization in matching applications with significant improvements.

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