Biblio

Found 2356 results

Filters: Keyword is privacy  [Clear All Filters]
2022-01-25
Lu, Lu, Duan, Pengshuai, Shen, Xukun, Zhang, Shijin, Feng, Huiyan, Flu, Yong.  2021.  Gaze-Pinch Menu: Performing Multiple Interactions Concurrently in Mixed Reality. 2021 IEEE Conference on Virtual Reality and 3D User Interfaces Abstracts and Workshops (VRW). :536—537.
Performing an interaction using gaze and pinch has been certified as an efficient interactive method in Mixed Reality, for such techniques can provide users concise and natural experiences. However, executing a task with individual interactions gradually is inefficient in some application scenarios. In this paper, we propose the Hand-Pinch Menu, which core concept is to reduce unnecessary operations by combining several interactions. Users can continuously perform multiple interactions on a selected object concurrently without changing gestures by using this technique. The user study results show that our Gaze-Pinch Menu can improve operational efficiency effectively.
2022-05-05
Salman, Zainab, Hammad, Mustafa, Al-Omary, Alauddin Yousif.  2021.  A Homomorphic Cloud Framework for Big Data Analytics Based on Elliptic Curve Cryptography. 2021 International Conference on Innovation and Intelligence for Informatics, Computing, and Technologies (3ICT). :7—11.
Homomorphic Encryption (HE) comes as a sophisticated and powerful cryptography system that can preserve the privacy of data in all cases when the data is at rest or even when data is in processing and computing. All the computations needed by the user or the provider can be done on the encrypted data without any need to decrypt it. However, HE has overheads such as big key sizes and long ciphertexts and as a result long execution time. This paper proposes a novel solution for big data analytic based on clustering and the Elliptical Curve Cryptography (ECC). The Extremely Distributed Clustering technique (EDC) has been used to divide big data into several subsets of cloud computing nodes. Different clustering techniques had been investigated, and it was found that using hybrid techniques can improve the performance and efficiency of big data analytic while at the same time data is protected and privacy is preserved using ECC.
2022-01-31
Oliver, H., Mortier, R..  2021.  How Not To Be Seen: Privacy and Security Considerations in the Design of Everyday Wearable Technology. Competitive Advantage in the Digital Economy (CADE 2021). 2021:191—194.
Aim and scope of the study From 2017 to 2020, we conducted a research through design to address a number of identified obstacles to adoption of wearable computing. One obstacle was a perceived failure to design wearables for emotional engagement [1] [2] [3]. To address this, we began the inspiration phase with a participatory design process with an open-ended brief, instead of the typical approach of starting with a design exemplar. In this way, we elicited concepts from the participants to discover what kinds of everyday wearables they desired [4], rather than their preferences for some particular device type like an activity monitor [5]. The obstacles interrelate, and the outcome of our investigations against the obstacle of poor emotional engagement, give cause to reflect on another of the obstacles: privacy. This paper will reflect on the privacy issues evoked by our experience.
2022-04-13
Wang, Chengyan, Li, Yuling, Zhang, Yong.  2021.  Hybrid Data Fast Distribution Algorithm for Wireless Sensor Networks in Visual Internet of Things. 2021 International Conference on Big Data Analysis and Computer Science (BDACS). :166–169.
With the maturity of Internet of things technology, massive data transmission has become the focus of research. In order to solve the problem of low speed of traditional hybrid data fast distribution algorithm for wireless sensor networks, a hybrid data fast distribution algorithm for wireless sensor networks based on visual Internet of things is designed. The logic structure of mixed data input gate in wireless sensor network is designed through the visual Internet of things. The objective function of fast distribution of mixed data in wireless sensor network is proposed. The number of copies of data to be distributed is dynamically calculated and the message deletion strategy is determined. Then the distribution parameters are calibrated, and the fitness ranking is performed according to the distribution quantity to complete the algorithm design. The experimental results show that the distribution rate of the designed algorithm is significantly higher than that of the control group, which can solve the problem of low speed of traditional data fast distribution algorithm.
2022-05-19
J, Goutham Kumar, S, Gowri, Rajendran, Surendran, Vimali, J.S., Jabez, J., Srininvasulu, Senduru.  2021.  Identification of Cyber Threats and Parsing of Data. 2021 5th International Conference on Trends in Electronics and Informatics (ICOEI). :556–564.
One of the significant difficulties in network safety is the arrangement of a mechanized and viable digital danger's location strategy. This paper presents an AI procedure for digital dangers recognition, in light of fake neural organizations. The proposed procedure changes large number of gathered security occasions over to singular occasion profiles and utilize a profound learning-based discovery strategy for upgraded digital danger identification. This research work develops an AI-SIEM framework dependent on a blend of occasion profiling for information preprocessing and distinctive counterfeit neural organization techniques by including FCNN, CNN, and LSTM. The framework centers around separating between obvious positive and bogus positive cautions, consequently causing security examiners to quickly react to digital dangers. All trials in this investigation are performed by creators utilizing two benchmark datasets (NSLKDD and CICIDS2017) and two datasets gathered in reality. To assess the presentation correlation with existing techniques, tests are carried out by utilizing the five ordinary AI strategies (SVM, k-NN, RF, NB, and DT). Therefore, the exploratory aftereffects of this examination guarantee that our proposed techniques are fit for being utilized as learning-based models for network interruption discovery and show that despite the fact that it is utilized in reality, the exhibition beats the traditional AI strategies.
2022-05-06
Gasimov, Vagif A., Mammadov, Jabir I..  2021.  Image encryption algorithm using DNA pseudo-symbols and chaotic map. 2021 3rd International Congress on Human-Computer Interaction, Optimization and Robotic Applications (HORA). :1—5.
There have been developed image encryption algorithm using chaotic map and DNA pseudo-symbols sequence gained on the basis of real DNA symbols. In the suggested algorithm, the address for the selecting of DNA symbols sequence from Gene Bank, encoding rule of the DNA symbols, also the initial parameters of the chaotic map are determined on the secret key basis. Image pixels modification is based on the numerical values of the chaotic points sets coordinates obtained with the chaos play description of the DNA pseudo-symbols and the transference of pixels is based on displacement table constructed with the chaotic map.
2022-10-03
Mutalemwa, Lilian C., Shin, Seokjoo.  2021.  The Impact of Energy-Inefficient Communications on Location Privacy Protection in Monitoring Wireless Networks. 2021 Twelfth International Conference on Ubiquitous and Future Networks (ICUFN). :289–294.
Wireless sensor networks (WSNs) have gained increasing popularity in ubiquitous support of sensing system services. Often, WSNs are energy-constrained and they are deployed in harsh and unattended environments. Consequently, WSNs are vulnerable to energy and environmental factors. To ensure secure and reliable operations in safety-critical monitoring WSNs, it is important to guarantee energy-efficient communications, location privacy protection, and reliability. Fake packet-based source location privacy (SLP) protocols are known to be energy-inefficient. Therefore, in this study, we investigate the impact of energy-inefficient communications on the privacy performance of the fake packet-based SLP protocols. Experiment results show that the protocols achieve short-term and less reliable SLP protection.
2022-03-23
Benadla, Sarra, Merad-Boudia, Omar Rafik.  2021.  The Impact of Sybil Attacks on Vehicular Fog Networks. 2021 International Conference on Recent Advances in Mathematics and Informatics (ICRAMI). :1—6.
The Internet of Vehicles (IoV) is a network that considers vehicles as intelligent machines. They interact and communicate with each other to improve the performance and safety of traffic. IoV solves certain problems, but it has some issues such as response time, which prompted researchers to propose the integration of Fog Computing into vehicular networks. In Vehicular Fog Computing (VFC), the services are provided at the edge of the network to increase data rate and reduce response time. However, in order to satisfy network users, the security and privacy of sensitive data should be guaranteed. Using pseudonyms instead of real identities is one of the techniques considered to preserve the privacy of users, however, this can push malicious vehicles to exploit such a process and launch the Sybil attack by creating several pseudonyms in order to perform various malicious activities. In this paper, we describe the Sybil attack effects on VFC networks and compare them to those in conventional networks, as well as identify the various existing methods for detecting this attack and determine if they are applicable to VFC networks.
2022-07-29
Marchand-Niño, William-Rogelio, Samaniego, Hector Huamán.  2021.  Information Security Culture Model. A Case Study. 2021 XLVII Latin American Computing Conference (CLEI). :1–10.
This research covers the problem related to user behavior and its relationship with the protection of computer assets in terms of confidentiality, integrity, and availability. The main objective was to evaluate the relationship between the dimensions of awareness, compliance and appropriation of the information security culture and the asset protection variable, the ISCA diagnostic instrument was applied, and social engineering techniques were incorporated for this process. The results show the levels of awareness, compliance and appropriation of the university that was considered as a case study, these oscillate between the second and third level of four levels. Similarly, the performance regarding asset protection ranges from low to medium. It was concluded that there is a significant relationship between the variables of the investigation, verifying that of the total types of incidents registered in the study case, approximately 69% are associated with human behavior. As a contribution, an information security culture model was formulated whose main characteristic is a complementary diagnostic process between surveys and social engineering techniques, the model also includes the information security management system, risk management and security incident handling as part of the information security culture ecosystem in an enterprise.
2022-06-07
Pantelidis, Efthimios, Bendiab, Gueltoum, Shiaeles, Stavros, Kolokotronis, Nicholas.  2021.  Insider Threat Detection using Deep Autoencoder and Variational Autoencoder Neural Networks. 2021 IEEE International Conference on Cyber Security and Resilience (CSR). :129–134.
Internal attacks are one of the biggest cybersecurity issues to companies and businesses. Despite the implemented perimeter security systems, the risk of adversely affecting the security and privacy of the organization’s information remains very high. Actually, the detection of such a threat is known to be a very complicated problem, presenting many challenges to the research community. In this paper, we investigate the effectiveness and usefulness of using Autoencoder and Variational Autoencoder deep learning algorithms to automatically defend against insider threats, without human intervention. The performance evaluation of the proposed models is done on the public CERT dataset (CERT r4.2) that contains both benign and malicious activities generated from 1000 simulated users. The comparison results with other models show that the Variational Autoencoder neural network provides the best overall performance with a higher detection accuracy and a reasonable false positive rate.
2022-04-20
Keshk, Marwa, Sitnikova, Elena, Moustafa, Nour, Hu, Jiankun, Khalil, Ibrahim.  2021.  An Integrated Framework for Privacy-Preserving Based Anomaly Detection for Cyber-Physical Systems. IEEE Transactions on Sustainable Computing. 6:66–79.
Protecting Cyber-physical Systems (CPSs) is highly important for preserving sensitive information and detecting cyber threats. Developing a robust privacy-preserving anomaly detection method requires physical and network data about the systems, such as Supervisory Control and Data Acquisition (SCADA), for protecting original data and recognising cyber-attacks. In this paper, a new privacy-preserving anomaly detection framework, so-called PPAD-CPS, is proposed for protecting confidential information and discovering malicious observations in power systems and their network traffic. The framework involves two main modules. First, a data pre-processing module is suggested for filtering and transforming original data into a new format that achieves the target of privacy preservation. Second, an anomaly detection module is suggested using a Gaussian Mixture Model (GMM) and Kalman Filter (KF) for precisely estimating the posterior probabilities of legitimate and anomalous events. The performance of the PPAD-CPS framework is assessed using two public datasets, namely the Power System and UNSW-NB15 dataset. The experimental results show that the framework is more effective than four recent techniques for obtaining high privacy levels. Moreover, the framework outperforms seven peer anomaly detection techniques in terms of detection rate, false positive rate, and computational time.
Conference Name: IEEE Transactions on Sustainable Computing
2022-11-18
Tall, Anne M., Zou, Cliff C., Wang, Jun.  2021.  Integrating Cybersecurity Into a Big Data Ecosystem. MILCOM 2021 - 2021 IEEE Military Communications Conference (MILCOM). :69—76.
This paper provides an overview of the security service controls that are applied in a big data processing (BDP) system to defend against cyber security attacks. We validate this approach by modeling attacks and effectiveness of security service controls in a sequence of states and transitions. This Finite State Machine (FSM) approach uses the probable effectiveness of security service controls, as defined in the National Institute of Standards and Technology (NIST) Risk Management Framework (RMF). The attacks used in the model are defined in the ATT&CK™ framework. Five different BDP security architecture configurations are considered, spanning from a low-cost default BDP configuration to a more expensive, industry supported layered security architecture. The analysis demonstrates the importance of a multi-layer approach to implementing security in BDP systems. With increasing interest in using BDP systems to analyze sensitive data sets, it is important to understand and justify BDP security architecture configurations with their significant costs. The output of the model demonstrates that over the run time, larger investment in security service controls results in significantly more uptime. There is a significant increase in uptime with a linear increase in security service control investment. We believe that these results support our recommended BDP security architecture. That is, a layered architecture with security service controls integrated into the user interface, boundary, central management of security policies, and applications that incorporate privacy preserving programs. These results enable making BDP systems operational for sensitive data accessed in a multi-tenant environment.
2022-05-09
Nana, Huang, Yuanyuan, Yang.  2021.  An Integrative and Privacy Preserving-Based Medical Cloud Platform. 2021 IEEE 6th International Conference on Cloud Computing and Big Data Analytics (ICCCBDA). :411–414.
With the rapid development of cloud computing which has been extensively applied in the health research, the concept of medical cloud has become widespread. In this paper, we proposed an integrated medical cloud architecture with multiple applications based on privacy protection. The scheme in this paper adopted attribute encryption to ensure the PHR files encrypted all the time in order to protect the health privacy of the PHR owners not leaked. In addition, the medical cloud architecture proposed in this paper is suitable for multiple application scenarios. Different from the traditional domain division which has public domain (PUD) and private domain (PSD), the PUD domain is further divided into PUD1and PUD2 with finer granularity based on different permissions of the PHR users. In the PUD1, the PHR users have read or write access to the PHR files, while the PHR users in the PUD2 only have read permissions. In the PSD, we use key aggregation encryption (KAE) to realize the access control. For PHR users of PUD1 and PUD2, the outsourcable ABE technology is adopted to greatly reduce the computing burden of users. The results of function and performance test show that the scheme is safe and effective.
2022-02-08
Hamdi, Mustafa Maad, Yussen, Yuser Anas, Mustafa, Ahmed Shamil.  2021.  Integrity and Authentications for service security in vehicular ad hoc networks (VANETs): A Review. 2021 3rd International Congress on Human-Computer Interaction, Optimization and Robotic Applications (HORA). :1–7.
A main type of Mobile Ad hoc Networks (MANET) and essential infrastructure to provide a wide range of safety applications to passengers in vehicles (VANET) are established. VANETs are more popular today as they connect to a variety of invisible services. VANET protection is crucial as its potential use must not endanger the safety and privacy of its users. The safety of these VANETs is essential to safe and efficient safety systems and facilities and uncertainty continues and research in this field continues to grow rapidly. We will explain the characteristics and problems of VANETs in this paper. Also, all threats and attacks that affect integrity and authentication in VANETs will be defined. Description of researchers' work was consequently addressed as the table with the problems of the suggested method and objective.
2022-02-24
Baelde, David, Delaune, Stéphanie, Jacomme, Charlie, Koutsos, Adrien, Moreau, Solène.  2021.  An Interactive Prover for Protocol Verification in the Computational Model. 2021 IEEE Symposium on Security and Privacy (SP). :537–554.
Given the central importance of designing secure protocols, providing solid mathematical foundations and computer-assisted methods to attest for their correctness is becoming crucial. Here, we elaborate on the formal approach introduced by Bana and Comon in [10], [11], which was originally designed to analyze protocols for a fixed number of sessions, and lacks support for proof mechanization.In this paper, we present a framework and an interactive prover allowing to mechanize proofs of security protocols for an arbitrary number of sessions in the computational model. More specifically, we develop a meta-logic as well as a proof system for deriving security properties. Proofs in our system only deal with high-level, symbolic representations of protocol executions, similar to proofs in the symbolic model, but providing security guarantees at the computational level. We have implemented our approach within a new interactive prover, the Squirrel prover, taking as input protocols specified in the applied pi-calculus, and we have performed a number of case studies covering a variety of primitives (hashes, encryption, signatures, Diffie-Hellman exponentiation) and security properties (authentication, strong secrecy, unlinkability).
2022-04-01
Rhunn, Tommy Cha Hweay, Raffei, Anis Farihan Mat, Rahman, Nur Shamsiah Abdul.  2021.  Internet of Things (IoT) Based Door Lock Security System. 2021 International Conference on Software Engineering Computer Systems and 4th International Conference on Computational Science and Information Management (ICSECS-ICOCSIM). :6–9.
A door enables you to enter a room without breaking through a wall. Also, a door enables you for privacy, environmental or security reasons. The problem statement which is the biometric system sometimes is sensitive and will not be able to sense the biological pattern of the employer’s fingerprint due to sweat and other factors. Next, people tend to misplace their key or RFID card. Apart from that, people tend to forget their pin number for a door lock. The objective of this paper is to present a secret knock intensity for door lock security system using Arduino and mobile. This project works by using a knock intensity and send the information to mobile application via wireless network to unlock or lock the door.
2022-02-09
Mygdalis, Vasileios, Tefas, Anastasios, Pitas, Ioannis.  2021.  Introducing K-Anonymity Principles to Adversarial Attacks for Privacy Protection in Image Classification Problems. 2021 IEEE 31st International Workshop on Machine Learning for Signal Processing (MLSP). :1–6.
The network output activation values for a given input can be employed to produce a sorted ranking. Adversarial attacks typically generate the least amount of perturbation required to change the classifier label. In that sense, generated adversarial attack perturbation only affects the output in the 1st sorted ranking position. We argue that meaningful information about the adversarial examples i.e., their original labels, is still encoded in the network output ranking and could potentially be extracted, using rule-based reasoning. To this end, we introduce a novel adversarial attack methodology inspired by the K-anonymity principles, that generates adversarial examples that are not only misclassified, but their output sorted ranking spreads uniformly along K different positions. Any additional perturbation arising from the strength of the proposed objectives, is regularized by a visual similarity-based term. Experimental results denote that the proposed approach achieves the optimization goals inspired by K-anonymity with reduced perturbation as well.
2022-05-19
Baniya, Babu Kaji.  2021.  Intrusion Representation and Classification using Learning Algorithm. 2021 23rd International Conference on Advanced Communication Technology (ICACT). :279–284.
At present, machine learning (ML) algorithms are essential components in designing the sophisticated intrusion detection system (IDS). They are building-blocks to enhance cyber threat detection and help in classification at host-level and network-level in a short period. The increasing global connectivity and advancements of network technologies have added unprecedented challenges and opportunities to network security. Malicious attacks impose a huge security threat and warrant scalable solutions to thwart large-scale attacks. These activities encourage researchers to address these imminent threats by analyzing a large volume of the dataset to tackle all possible ranges of attack. In this proposed method, we calculated the fitness value of each feature from the population by using a genetic algorithm (GA) and selected them according to the fitness value. The fitness values are presented in hierarchical order to show the effectiveness of problem decomposition. We implemented Support Vector Machine (SVM) to verify the consistency of the system outcome. The well-known NSL-knowledge discovery in databases (KDD) was used to measure the performance of the system. From the experiments, we achieved a notable classification accuracies using a SVM of the current state of the art intrusion detection.
2022-04-12
Dutta, Arjun, Chaki, Koustav, Sen, Ayushman, Kumar, Ashutosh, Chakrabarty, Ratna.  2021.  IoT based Sanitization Tunnel. 2021 5th International Conference on Electronics, Materials Engineering Nano-Technology (IEMENTech). :1—5.
The Covid-19 Pandemic has caused huge losses worldwide and is still affecting people all around the world. Even after rigorous, incessant and dedicated efforts from people all around the world, it keeps mutating and spreading at an alarming rate. In times such as these, it is extremely important to take proper precautionary measures to stay safe and help to contain the spread of the virus. In this paper, we propose an innovative design of one such commonly used public disinfection method, an Automatic Walkthrough Sanitization Tunnel. It is a walkthrough sanitization tunnel which uses sensors to detect the target and automatically disinfects it followed by irradiation using UV-C rays for extra protection. There is a proposition to add an IoT based Temperature sensor and data relay module used to detect the temperature of any person entering the tunnel and in case of any anomaly, contact nearby covid wards to facilitate rapid treatment.
2022-01-31
Mueller, Tobias.  2021.  Let’s Attest! Multi-modal Certificate Exchange for the Web of Trust. 2021 International Conference on Information Networking (ICOIN). :758—763.
On the Internet, trust is difficult to obtain. With the rise of the possibility of obtaining gratis x509 certificates in an automated fashion, the use of TLS for establishing secure connections has significantly increased. However, other use cases, such as end-to-end encrypted messaging, do not yet have an easy method of managing trust in the public keys. This is particularly true for personal communication where two people want to securely exchange messages. While centralised solutions, such as Signal, exist, decentralised and federated protocols lack a way of conveniently and securely exchanging personal certificates. This paper presents a protocol and an implementation for certifying OpenPGP certificates. By offering multiple means of data transport protocols, it achieves robust and resilient certificate exchange between an attestee, the party whose key certificate is to be certified, and an attestor, the party who will express trust in the certificate once seen. The data can be transferred either via the Internet or via proximity-based technologies, i.e. Bluetooth or link-local networking. The former presents a challenge when the parties interested in exchanging certificates are not physically close, because an attacker may tamper with the connection. Our evaluation shows that a passive attacker learns nothing except the publicly visible metadata, e.g. the timings of the transfer while an active attacker can either have success with a very low probability or be detected by the user.
2022-05-09
Ma, Zhuoran, Ma, Jianfeng, Miao, Yinbin, Liu, Ximeng, Choo, Kim-Kwang Raymond, Yang, Ruikang, Wang, Xiangyu.  2021.  Lightweight Privacy-preserving Medical Diagnosis in Edge Computing. 2021 IEEE World Congress on Services (SERVICES). :9–9.
In the era of machine learning, mobile users are able to submit their symptoms to doctors at any time, anywhere for personal diagnosis. It is prevalent to exploit edge computing for real-time diagnosis services in order to reduce transmission latency. Although data-driven machine learning is powerful, it inevitably compromises privacy by relying on vast amounts of medical data to build a diagnostic model. Therefore, it is necessary to protect data privacy without accessing local data. However, the blossom has also been accompanied by various problems, i.e., the limitation of training data, vulnerabilities, and privacy concern. As a solution to these above challenges, in this paper, we design a lightweight privacy-preserving medical diagnosis mechanism on edge. Our method redesigns the extreme gradient boosting (XGBoost) model based on the edge-cloud model, which adopts encrypted model parameters instead of local data to reduce amounts of ciphertext computation to plaintext computation, thus realizing lightweight privacy preservation on resource-limited edges. Additionally, the proposed scheme is able to provide a secure diagnosis on edge while maintaining privacy to ensure an accurate and timely diagnosis. The proposed system with secure computation could securely construct the XGBoost model with lightweight overhead, and efficiently provide a medical diagnosis without privacy leakage. Our security analysis and experimental evaluation indicate the security, effectiveness, and efficiency of the proposed system.
2022-01-25
Shepherd, Carlton, Markantonakis, Konstantinos, Jaloyan, Georges-Axel.  2021.  LIRA-V: Lightweight Remote Attestation for Constrained RISC-V Devices. 2021 IEEE Security and Privacy Workshops (SPW). :221–227.
This paper presents LIRA-V, a lightweight system for performing remote attestation between constrained devices using the RISC-V architecture. We propose using read-only memory and the RISC-V Physical Memory Protection (PMP) primitive to build a trust anchor for remote attestation and secure channel creation. Moreover, we show how LIRA-V can be used for trusted communication between two devices using mutual attestation. We present the design, implementation and evaluation of LIRA-V using an off-the-shelf RISC-V microcontroller and present performance results to demonstrate its suitability. To our knowledge, we present the first remote attestation mechanism suitable for constrained RISC-V devices, with applications to cyber-physical systems and Internet of Things (IoT) devices.
2022-10-03
Xu, Ruikun.  2021.  Location Based Privacy Protection Data Interference Method. 2021 International Conference on Electronic Information Technology and Smart Agriculture (ICEITSA). :89–93.
In recent years, with the rise of the Internet of things industry, a variety of user location-based applications came into being. While users enjoy these convenient services, their location information privacy is also facing a great threat. Therefore, the research on location privacy protection in the Internet of things has become a hot spot for scholars. Privacy protection microdata publishing is a hot spot in data privacy protection research. Data interference is an effective solution for privacy protection microdata publishing. Aiming at privacy protection clustering problem, a privacy protection data interference method is proposed. In this paper, the location privacy protection algorithm is studied, with the purpose of providing location services and protecting the data interference of users' location privacy. In this paper, the source location privacy protection protocol (PR \_ CECRP) algorithm with controllable energy consumption is proposed to control the energy consumption of phantom routing strategy. In the routing process from the source node to the phantom node, the source data packet forwarding mechanism based on sector area division is adopted, so that the random routing path is generated and the routing energy consumption and transmission delay are effectively controlled.
2022-06-09
Xiang, Guangli, Shao, Can.  2021.  Low Noise Homomorphic Encryption Scheme Supporting Multi-Bit Encryption. 2021 2nd International Conference on Computer Communication and Network Security (CCNS). :150–156.
Fully homomorphic encryption (FHE) provides effective security assurance for privacy computing in cloud environments. But the existing FHE schemes are generally faced with challenges including using single-bit encryption and large ciphertext noise, which greatly affects the encryption efficiency and practicability. In this paper, a low-noise FHE scheme supporting multi-bit encryption is proposed based on the HAO scheme. The new scheme redesigns the encryption method without changing the system parameters and expands the plaintext space to support the encryption of integer matrices. In the process of noise reduction, we introduce a PNR method and use the subGaussian distribution theory to analyze the ciphertext noise. The security and the efficiency analysis show that the improved scheme can resist the chosen plaintext attack and effectively reduce the noise expansion rate. Comparative experiments show that the scheme has high encryption efficiency and is suitable for the privacy-preserving computation of integer matrices.
2022-10-20
Tiwari, Krishnakant, Gangurde, Sahil J..  2021.  LSB Steganography Using Pixel Locator Sequence with AES. 2021 2nd International Conference on Secure Cyber Computing and Communications (ICSCCC). :302—307.
Image steganography is a technique of hiding confidential data in the images. We do this by incorporating the LSB(Least Significant Bit) of the image pixels. LSB steganography has been there for a while, and much progress has been made in it. In this paper, we try to increase the security of the LSB steganography process by incorporating a random data distribution method which we call pixel locator sequence (PLS). This method scatters the data to be infused into the image by randomly picking up the pixels and changing their LSB value accordingly. This random distribution makes it difficult for unknowns to look for the data. This PLS file is also encrypted using AES and is key for the data encryption/decryption process between the two parties. This technique is not very space-efficient and involves sending meta-data (PLS), but that trade-off was necessary for the additional security. We evaluated the proposed approach using two criteria: change in image dynamics and robustness against steganalysis attacks. To assess change in image dynamics, we measured the MSE and PSNR values. To find the robustness of the proposed method, we used the tool StegExpose which uses the stego image produced from the proposed algorithm and analyzes them using the major steganalysis attacks such as Primary Sets, Chi-Square, Sample Pairs, and RS Analysis. Finally, we show that this method has good security metrics for best known LSB steganography detection tools and techniques.