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2023-03-31
Gao, Ruijun, Guo, Qing, Juefei-Xu, Felix, Yu, Hongkai, Fu, Huazhu, Feng, Wei, Liu, Yang, Wang, Song.  2022.  Can You Spot the Chameleon? Adversarially Camouflaging Images from Co-Salient Object Detection 2022 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR). :2140–2149.
Co-salient object detection (CoSOD) has recently achieved significant progress and played a key role in retrieval-related tasks. However, it inevitably poses an entirely new safety and security issue, i.e., highly personal and sensitive content can potentially be extracting by powerful CoSOD methods. In this paper, we address this problem from the perspective of adversarial attacks and identify a novel task: adversarial co-saliency attack. Specially, given an image selected from a group of images containing some common and salient objects, we aim to generate an adversarial version that can mislead CoSOD methods to predict incorrect co-salient regions. Note that, compared with general white-box adversarial attacks for classification, this new task faces two additional challenges: (1) low success rate due to the diverse appearance of images in the group; (2) low transferability across CoSOD methods due to the considerable difference between CoSOD pipelines. To address these challenges, we propose the very first blackbox joint adversarial exposure and noise attack (Jadena), where we jointly and locally tune the exposure and additive perturbations of the image according to a newly designed high-feature-level contrast-sensitive loss function. Our method, without any information on the state-of-the-art CoSOD methods, leads to significant performance degradation on various co-saliency detection datasets and makes the co-salient objects undetectable. This can have strong practical benefits in properly securing the large number of personal photos currently shared on the Internet. Moreover, our method is potential to be utilized as a metric for evaluating the robustness of CoSOD methods.
2022-02-09
Guo, Hao, Dolhansky, Brian, Hsin, Eric, Dinh, Phong, Ferrer, Cristian Canton, Wang, Song.  2021.  Deep Poisoning: Towards Robust Image Data Sharing against Visual Disclosure. 2021 IEEE Winter Conference on Applications of Computer Vision (WACV). :686–696.
Due to respectively limited training data, different entities addressing the same vision task based on certain sensitive images may not train a robust deep network. This paper introduces a new vision task where various entities share task-specific image data to enlarge each other's training data volume without visually disclosing sensitive contents (e.g. illegal images). Then, we present a new structure-based training regime to enable different entities learn task-specific and reconstruction-proof image representations for image data sharing. Specifically, each entity learns a private Deep Poisoning Module (DPM) and insert it to a pre-trained deep network, which is designed to perform the specific vision task. The DPM deliberately poisons convolutional image features to prevent image reconstructions, while ensuring that the altered image data is functionally equivalent to the non-poisoned data for the specific vision task. Given this equivalence, the poisoned features shared from one entity could be used by another entity for further model refinement. Experimental results on image classification prove the efficacy of the proposed method.
2022-02-04
Cao, Wenbin, Qi, Xuanwei, Wang, Song, Chen, Ming, Yin, Xianggen, Wen, Minghao.  2021.  The Engineering Practical Calculation Method of Circulating Current in YD-connected Transformer. 2021 IEEE 2nd China International Youth Conference on Electrical Engineering (CIYCEE). :1–5.
The circulating current in the D-winding may cause primary current waveform distortion, and the reliability of the restraint criterion based on the typical magnetizing inrush current characteristics will be affected. The magnetizing inrush current with typical characteristics is the sum of primary current and circulating current. Using the circulating current to compensate the primary current can improve the reliability of the differential protection. When the phase is not saturated, the magnetizing inrush current is about zero. Therefore, the primary current of unsaturated phase can be replaced by the opposite of the circulating current. Based on this, an engineering practical calculation method for circulating current is proposed. In the method, the segmented primary currents are used to replace the circulating current. Phasor analysis is used to demonstrate the application effect of this method when remanence coefficients are different. The method is simple and practical, and has strong applicability and high reliability. Simulation and recorded waveforms have verified the effectiveness of the method.
2020-03-23
Wang, Song, Zhang, Bo.  2019.  Research on RFID Information Security Technology Based on Elliptic Curve Algorithms. 2019 International Conference on Communications, Information System and Computer Engineering (CISCE). :386–389.
The security problem of RFID system is a great potential security hazard in its application. Due to the limitation of hardware conditions, traditional public key cryptography can not be directly used in security mechanism. Compared with the traditional RSA public key cryptography, the elliptic curve cryptography has the advantages of shorter key, faster processing speed and smaller storage space, which is very suitable for use in the RFID system.