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2023-09-20
Khalil, Md Yusuf, Vivek, Anand, Kumar, Paul, Antarlina, Grover, Rahul.  2022.  PDF Malware Analysis. 2022 7th International Conference on Computing, Communication and Security (ICCCS). :1—4.
This document addresses the issue of the actual security level of PDF documents. Two types of detection approaches are utilized to detect dangerous elements within malware: static analysis and dynamic analysis. Analyzing malware binaries to identify dangerous strings, as well as reverse-engineering is included in static analysis for t1he malware to disassemble it. On the other hand, dynamic analysis monitors malware activities by running them in a safe environment, such as a virtual machine. Each method has its own set of strengths and weaknesses, and it is usually best to employ both methods while analyzing malware. Malware detection could be simplified without sacrificing accuracy by reducing the number of malicious traits. This may allow the researcher to devote more time to analysis. Our worry is that there is no obvious need to identify malware with numerous functionalities when it isn't necessary. We will solve this problem by developing a system that will identify if the given file is infected with malware or not.
2023-09-18
Pranav, Putsa Rama Krishna, Verma, Sachin, Shenoy, Sahana, Saravanan, S..  2022.  Detection of Botnets in IoT Networks using Graph Theory and Machine Learning. 2022 6th International Conference on Trends in Electronics and Informatics (ICOEI). :590—597.
The Internet of things (IoT) is proving to be a boon in granting internet access to regularly used objects and devices. Sensors, programs, and other innovations interact and trade information with different gadgets and frameworks over the web. Even in modern times, IoT gadgets experience the ill effects of primary security threats, which expose them to many dangers and malware, one among them being IoT botnets. Botnets carry out attacks by serving as a vector and this has become one of the significant dangers on the Internet. These vectors act against associations and carry out cybercrimes. They are used to produce spam, DDOS attacks, click frauds, and steal confidential data. IoT gadgets bring various challenges unlike the common malware on PCs and Android devices as IoT gadgets have heterogeneous processor architecture. Numerous researches use static or dynamic analysis for detection and classification of botnets on IoT gadgets. Most researchers haven't addressed the multi-architecture issue and they use a lot of computing resources for analyzing. Therefore, this approach attempts to classify botnets in IoT by using PSI-Graphs which effectively addresses the problem of encryption in IoT botnet detection, tackles the multi-architecture problem, and reduces computation time. It proposes another methodology for describing and recognizing botnets utilizing graph-based Machine Learning techniques and Exploratory Data Analysis to analyze the data and identify how separable the data is to recognize bots at an earlier stage so that IoT devices can be prevented from being attacked.
2023-09-08
Yadav, Ranjeet, Ritambhara, Vaigandla, Karthik Kumar, Ghantasala, G S Pradeep, Singh, Rajesh, Gangodkar, Durgaprasad.  2022.  The Block Chain Technology to protect Data Access using Intelligent Contracts Mechanism Security Framework for 5G Networks. 2022 5th International Conference on Contemporary Computing and Informatics (IC3I). :108–112.
The introduction of the study primarily emphasises the significance of utilising block chain technologies with the possibility of privacy and security benefits from the 5G Network. One may state that the study’s primary focus is on all the advantages of adopting block chain technology to safeguard everyone’s access to crucial data by utilizing intelligent contracts to enhance the 5G network security model on information security operations.Our literature evaluation for the study focuses primarily on the advantages advantages of utilizing block chain technology advance data security and privacy, as well as their development and growth. The whole study paper has covered both the benefits and drawbacks of employing the block chain technology. The literature study part of this research article has, on the contrary hand, also studied several approaches and tactics for using the blockchain technology facilities. To fully understand the circumstances in this specific case, a poll was undertaken. It was possible for the researchers to get some real-world data in this specific situation by conducting a survey with 51 randomly selected participants.
2023-08-25
Delport, Petrus M.J, van Niekerk, Johan, Reid, Rayne.  2022.  Introduction to Information Security: From Formal Curriculum to Organisational Awareness. 2022 IEEE European Symposium on Security and Privacy Workshops (EuroS&PW). :463–469.
Many organisations responded to the recent global pandemic by moving operations online. This has led to increased exposure to information security-related risks. There is thus an increased need to ensure organisational information security awareness programs are up to date and relevant to the needs of the intended target audience. The advent of online educational providers has similarly placed increased pressure on the formal educational sector to ensure course content is updated to remain relevant. Such processes of academic reflection and review should consider formal curriculum standards and guidelines in order to ensure wide relevance. This paper presents a case study of the review of an Introduction to Information Security course. This review is informed by the Information Security and Assurance knowledge area of the ACM/IEEE Computer Science 2013 curriculum standard. The paper presents lessons learned during this review process to serve as a guide for future reviews of this nature. The authors assert that these lessons learned can also be of value during the review of organisational information security awareness programs.
ISSN: 2768-0657
2023-08-24
Veeraiah, Vivek, Kumar, K Ranjit, Lalitha Kumari, P., Ahamad, Shahanawaj, Bansal, Rohit, Gupta, Ankur.  2022.  Application of Biometric System to Enhance the Security in Virtual World. 2022 2nd International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE). :719–723.
Virtual worlds was becoming increasingly popular in a variety of fields, including education, business, space exploration, and video games. Establishing the security of virtual worlds was becoming more critical as they become more widely used. Virtual users were identified using a behavioral biometric system. Improve the system's ability to identify objects by fusing scores from multiple sources. Identification was based on a review of user interactions in virtual environments and a comparison with previous recordings in the database. For behavioral biometric systems like the one described, it appears that score-level biometric fusion was a promising tool for improving system performance. As virtual worlds become more immersive, more people will want to participate in them, and more people will want to be able to interact with each other. Each region of the Meta-verse was given a glimpse of the current state of affairs and the trends to come. As hardware performance and institutional and public interest continue to improve, the Meta-verse's development is hampered by limitations like computational method limits and a lack of realized collaboration between virtual world stakeholders and developers alike. A major goal of the proposed research was to verify the accuracy of the biometric system to enhance the security in virtual world. In this study, the precision of the proposed work was compared to that of previous work.
2023-08-23
Nalinipriya, G, Govarthini, V, Kayalvizhi, S., Christika, S, Vishvaja, J., Royal Amara, Kumar Raghuveer.  2022.  DefendR - An Advanced Security Model Using Mini Filter in Unix Multi-Operating System. 2022 8th International Conference on Smart Structures and Systems (ICSSS). :1—6.
DefendR is a Security operation used to block the access of the user to edit or overwrite the contents in our personal file that is stored in our system. This approach of applying a certain filter for the sensitive or sensitive data that are applicable exclusively in read-only mode. This is an improvisation of security for the personal data that restricts undo or redo related operations in the shared file. We use a mini-filter driver tool. Specifically, IRP (Incident Response Plan)-based I/O operations, as well as fast FSFilter callback activities, may additionally all be filtered with a mini-filter driver. A mini-filter can register a preoperation callback procedure, a postoperative Each of the I/O operations it filters is filtered by a callback procedure. By registering all necessary callback filtering methods in a filter manager, a mini-filter driver interfaces to the file system indirectly. When a mini-filter is loaded, the latter is a Windows file system filter driver that is active and connects to the file system stack.
2023-08-18
KK, Sabari, Shrivastava, Saurabh, V, Sangeetha..  2022.  Anomaly-based Intrusion Detection using GAN for Industrial Control Systems. 2022 10th International Conference on Reliability, Infocom Technologies and Optimization (Trends and Future Directions) (ICRITO). :1—6.
In recent years, cyber-attacks on modern industrial control systems (ICS) have become more common and it acts as a victim to various kind of attackers. The percentage of attacked ICS computers in the world in 2021 is 39.6%. To identify the anomaly in a large database system is a challenging task. Deep-learning model provides better solutions for handling the huge dataset with good accuracy. On the other hand, real time datasets are highly imbalanced with their sample proportions. In this research, GAN based model, a supervised learning method which generates new fake samples that is similar to real samples has been proposed. GAN based adversarial training would address the class imbalance problem in real time datasets. Adversarial samples are combined with legitimate samples and shuffled via proper proportion and given as input to the classifiers. The generated data samples along with the original ones are classified using various machine learning classifiers and their performances have been evaluated. Gradient boosting was found to classify with 98% accuracy when compared to other
Varkey, Mariam, John, Jacob, S., Umadevi K..  2022.  Automated Anomaly Detection Tool for Industrial Control System. 2022 IEEE Conference on Dependable and Secure Computing (DSC). :1—6.
Industrial Control Systems (ICS) are not secure by design–with recent developments requiring them to connect to the Internet, they tend to be highly vulnerable. Additionally, attacks on critical infrastructures such as power grids and nuclear plants can cause significant damage and loss of lives. Since such attacks tend to generate anomalies in the systems, an efficient way of attack detection is to monitor the systems and identify anomalies in real-time. An automated anomaly detection tool is introduced in this paper. Additionally, the functioning of the systems is viewed as Finite State Automata. Specific sensor measurements are used to determine permissible transitions, and statistical measures such as the Interquartile Range are used to determine acceptable boundaries for the remaining sensor measurements provided by the system. Deviations from the boundaries or permissible transitions are considered as anomalies. An additional feature is the provision of a finite state automata diagram that provides the operational constraints of a system, given a set of regulated input. This tool showed a high anomaly detection rate when tested with three types of ICS. The concepts are also benchmarked against a state-of-the-art anomaly detection algorithm called Isolation Forest, and the results are provided.
2023-08-17
Mukhandi, Munkenyi, Damião, Francisco, Granjal, Jorge, Vilela, João P..  2022.  Blockchain-based Device Identity Management with Consensus Authentication for IoT Devices. 2022 IEEE 19th Annual Consumer Communications & Networking Conference (CCNC). :433—436.
To decrease the IoT attack surface and provide protection against security threats such as introduction of fake IoT nodes and identity theft, IoT requires scalable device identity and authentication management. This work proposes a blockchain-based identity management approach with consensus authentication as a scalable solution for IoT device authentication management. The proposed approach relies on having a blockchain secure tamper proof ledger and a novel lightweight consensus-based identity authentication. The results show that the proposed decentralised authentication system is scalable as we increase number of nodes.
2023-08-16
Varma, Ch. Phaneendra, Babu, G. Ramesh, Sree, Pokkuluri Kiran, Sai, N. Raghavendra.  2022.  Usage of Classifier Ensemble for Security Enrichment in IDS. 2022 International Conference on Automation, Computing and Renewable Systems (ICACRS). :420—425.
The success of the web and the consequent rise in data sharing have made network security a challenge. Attackers from all around the world target PC installations. When an attack is successful, an electronic device's security is jeopardised. The intrusion implicitly includes any sort of behaviours that purport to think twice about the respectability, secrecy, or accessibility of an asset. Information is shielded from unauthorised clients' scrutiny by the integrity of a certain foundation. Accessibility refers to the framework that gives users of the framework true access to information. The word "classification" implies that data within a given frame is shielded from unauthorised access and public display. Consequently, a PC network is considered to be fully completed if the primary objectives of these three standards have been satisfactorily met. To assist in achieving these objectives, Intrusion Detection Systems have been developed with the fundamental purpose of scanning incoming traffic on computer networks for malicious intrusions.
2023-08-11
Patel, Sakshi, V, Thanikaiselvan.  2022.  New Image Encryption Algorithm based on Pixel Confusion-Diffusion using Hash Functions and Chaotic Map. 2022 7th International Conference on Communication and Electronics Systems (ICCES). :862—867.
Information privacy and security has become a necessity in the rapid growth of computer technology. A new algorithm for image encryption is proposed in this paper; using hash functions, chaotic map and two levels of diffusion process. The initialization key for chaos map is generated with the help of two hash functions. The initial seed for these hash functions is the sum of rows, columns and pixels across the diagonal of the plain image. Firstly, the image is scrambled using quantization unit. In the first level of diffusion process, the pixel values of the scrambled image are XOR with the normalized chaotic map. Odd pixel value is XOR with an even bit of chaotic map and even pixel is XOR with an odd bit of chaotic map. To achieve strong encryption, the image undergoes a second level of diffusion process where it is XOR with the map a finite number of times. After every round, the pixel array is circular shifted three times to achieve a strong encrypted image. The experimental and comparative analysis done with state of the art techniques on the proposed image encryption algorithm shows that it is strong enough to resist statistical and differential attacks present in the communication channel.
2023-08-03
Thai, Ho Huy, Hieu, Nguyen Duc, Van Tho, Nguyen, Hoang, Hien Do, Duy, Phan The, Pham, Van-Hau.  2022.  Adversarial AutoEncoder and Generative Adversarial Networks for Semi-Supervised Learning Intrusion Detection System. 2022 RIVF International Conference on Computing and Communication Technologies (RIVF). :584–589.
As one of the defensive solutions against cyberattacks, an Intrusion Detection System (IDS) plays an important role in observing the network state and alerting suspicious actions that can break down the system. There are many attempts of adopting Machine Learning (ML) in IDS to achieve high performance in intrusion detection. However, all of them necessitate a large amount of labeled data. In addition, labeling attack data is a time-consuming and expensive human-labor operation, it makes existing ML methods difficult to deploy in a new system or yields lower results due to a lack of labels on pre-trained data. To address these issues, we propose a semi-supervised IDS model that leverages Generative Adversarial Networks (GANs) and Adversarial AutoEncoder (AAE), called a semi-supervised adversarial autoencoder (SAAE). Our SAAE experimental results on two public datasets for benchmarking ML-based IDS, including NF-CSE-CIC-IDS2018 and NF-UNSW-NB15, demonstrate the effectiveness of AAE and GAN in case of using only a small number of labeled data. In particular, our approach outperforms other ML methods with the highest detection rates in spite of the scarcity of labeled data for model training, even with only 1% labeled data.
ISSN: 2162-786X
Brian, Gianluca, Faonio, Antonio, Obremski, Maciej, Ribeiro, João, Simkin, Mark, Skórski, Maciej, Venturi, Daniele.  2022.  The Mother of All Leakages: How to Simulate Noisy Leakages via Bounded Leakage (Almost) for Free. IEEE Transactions on Information Theory. 68:8197–8227.
We show that the most common flavors of noisy leakage can be simulated in the information-theoretic setting using a single query of bounded leakage, up to a small statistical simulation error and a slight loss in the leakage parameter. The latter holds true in particular for one of the most used noisy-leakage models, where the noisiness is measured using the conditional average min-entropy (Naor and Segev, CRYPTO’09 and SICOMP’12). Our reductions between noisy and bounded leakage are achieved in two steps. First, we put forward a new leakage model (dubbed the dense leakage model) and prove that dense leakage can be simulated in the information-theoretic setting using a single query of bounded leakage, up to small statistical distance. Second, we show that the most common noisy-leakage models fall within the class of dense leakage, with good parameters. Third, we prove lower bounds on the amount of bounded leakage required for simulation with sub-constant error, showing that our reductions are nearly optimal. In particular, our results imply that useful general simulation of noisy leakage based on statistical distance and mutual information is impossible. We also provide a complete picture of the relationships between different noisy-leakage models. Our result finds applications to leakage-resilient cryptography, where we are often able to lift security in the presence of bounded leakage to security in the presence of noisy leakage, both in the information-theoretic and in the computational setting. Remarkably, this lifting procedure makes only black-box use of the underlying schemes. Additionally, we show how to use lower bounds in communication complexity to prove that bounded-collusion protocols (Kumar, Meka, and Sahai, FOCS’19) for certain functions do not only require long transcripts, but also necessarily need to reveal enough information about the inputs.
Conference Name: IEEE Transactions on Information Theory
Peleshchak, Roman, Lytvyn, Vasyl, Kholodna, Nataliia, Peleshchak, Ivan, Vysotska, Victoria.  2022.  Two-Stage AES Encryption Method Based on Stochastic Error of a Neural Network. 2022 IEEE 16th International Conference on Advanced Trends in Radioelectronics, Telecommunications and Computer Engineering (TCSET). :381–385.
This paper proposes a new two-stage encryption method to increase the cryptographic strength of the AES algorithm, which is based on stochastic error of a neural network. The composite encryption key in AES neural network cryptosystem are the weight matrices of synaptic connections between neurons and the metadata about the architecture of the neural network. The stochastic nature of the prediction error of the neural network provides an ever-changing pair key-ciphertext. Different topologies of the neural networks and the use of various activation functions increase the number of variations of the AES neural network decryption algorithm. The ciphertext is created by the forward propagation process. The encryption result is reversed back to plaintext by the reverse neural network functional operator.
2023-07-28
Dubchak, Lesia, Vasylkiv, Nadiia, Turchenko, Iryna, Komar, Myroslav, Nadvynychna, Tetiana, Volner, Rudolf.  2022.  Access Distribution to the Evaluation System Based on Fuzzy Logic. 2022 12th International Conference on Advanced Computer Information Technologies (ACIT). :564—567.
In order to control users’ access to the information system, it is necessary to develop a security system that can work in real time and easily reconfigure. This problem can be solved using a fuzzy logic. In this paper the authors propose a fuzzy distribution system for access to the student assessment system, which takes into account the level of user access, identifier and the risk of attack during the request. This approach allows process fuzzy or incomplete information about the user and implement a sufficient level of confidential information protection.
2023-07-21
R, Sowmiya, G, Sivakamasundari, V, Archana.  2022.  Facial Emotion Recognition using Deep Learning Approach. 2022 International Conference on Automation, Computing and Renewable Systems (ICACRS). :1064—1069.
Human facial emotion recognition pays a variety of applications in society. The basic idea of Facial Emotion Recognition is to map the different facial emotions to a variety of emotional states. Conventional Facial Emotion Recognition consists of two processes: extracting the features and feature selection. Nowadays, in deep learning algorithms, Convolutional Neural Networks are primarily used in Facial Emotion Recognition because of their hidden feature extraction from the images. Usually, the standard Convolutional Neural Network has simple learning algorithms with finite feature extraction layers for extracting information. The drawback of the earlier approach was that they validated only the frontal view of the photos even though the image was obtained from different angles. This research work uses a deep Convolutional Neural Network along with a DenseNet-169 as a backbone network for recognizing facial emotions. The emotion Recognition dataset was used to recognize the emotions with an accuracy of 96%.
Giri, Sarwesh, Singh, Gurchetan, Kumar, Babul, Singh, Mehakpreet, Vashisht, Deepanker, Sharma, Sonu, Jain, Prince.  2022.  Emotion Detection with Facial Feature Recognition Using CNN & OpenCV. 2022 2nd International Conference on Advance Computing and Innovative Technologies in Engineering (ICACITE). :230—232.
Emotion Detection through Facial feature recognition is an active domain of research in the field of human-computer interaction (HCI). Humans are able to share multiple emotions and feelings through their facial gestures and body language. In this project, in order to detect the live emotions from the human facial gesture, we will be using an algorithm that allows the computer to automatically detect the facial recognition of human emotions with the help of Convolution Neural Network (CNN) and OpenCV. Ultimately, Emotion Detection is an integration of obtained information from multiple patterns. If computers will be able to understand more of human emotions, then it will mutually reduce the gap between humans and computers. In this research paper, we will demonstrate an effective way to detect emotions like neutral, happy, sad, surprise, angry, fear, and disgust from the frontal facial expression of the human in front of the live webcam.
2023-07-20
Steffen, Samuel, Bichsel, Benjamin, Baumgartner, Roger, Vechev, Martin.  2022.  ZeeStar: Private Smart Contracts by Homomorphic Encryption and Zero-knowledge Proofs. 2022 IEEE Symposium on Security and Privacy (SP). :179—197.
Data privacy is a key concern for smart contracts handling sensitive data. The existing work zkay addresses this concern by allowing developers without cryptographic expertise to enforce data privacy. However, while zkay avoids fundamental limitations of other private smart contract systems, it cannot express key applications that involve operations on foreign data.We present ZeeStar, a language and compiler allowing non-experts to instantiate private smart contracts and supporting operations on foreign data. The ZeeStar language allows developers to ergonomically specify privacy constraints using zkay’s privacy annotations. The ZeeStar compiler then provably realizes these constraints by combining non-interactive zero-knowledge proofs and additively homomorphic encryption.We implemented ZeeStar for the public blockchain Ethereum. We demonstrated its expressiveness by encoding 12 example contracts, including oblivious transfer and a private payment system like Zether. ZeeStar is practical: it prepares transactions for our contracts in at most 54.7s, at an average cost of 339k gas.
Vadlamudi, Sailaja, Sam, Jenifer.  2022.  Unified Payments Interface – Preserving the Data Privacy of Consumers. 2022 International Conference on Cyber Resilience (ICCR). :1—6.
With the advent of ease of access to the internet and an increase in digital literacy among citizens, digitization of the banking sector has throttled. Countries are now aiming for a cashless society. The introduction of a Unified Payment Interface (UPI) by the National Payments Corporation of India (NPCI) in April 2016 is a game-changer for cashless models. UPI payment model is currently considered the world’s most advanced payment system, and we see many countries adopting this cashless payment mode. With the increase in its popularity, there arises the increased need to strengthen the security posture of the payment solution. In this work, we explore the privacy challenges in the existing data flow of UPI models and propose approaches to preserve the privacy of customers using the Unified Payments Interface.
2023-07-19
Voulgaris, Konstantinos, Kiourtis, Athanasios, Karamolegkos, Panagiotis, Karabetian, Andreas, Poulakis, Yannis, Mavrogiorgou, Argyro, Kyriazis, Dimosthenis.  2022.  Data Processing Tools for Graph Data Modelling Big Data Analytics. 2022 13th International Congress on Advanced Applied Informatics Winter (IIAI-AAI-Winter). :208—212.
Any Big Data scenario eventually reaches scalability concerns for several factors, often storage or computing power related. Modern solutions have been proven to be effective in multiple domains and have automated many aspects of the Big Data pipeline. In this paper, we aim to present a solution for deploying event-based automated data processing tools for low code environments that aim to minimize the need for user input and can effectively handle common data processing jobs, as an alternative to distributed solutions which require language specific libraries and code. Our architecture uses a combination of a network exposed service with a cluster of “Data Workers” that handle data processing jobs effectively without requiring manual input from the user. This system proves to be effective at handling most data processing scenarios and allows for easy expandability by following simple patterns when declaring any additional jobs.
Vekić, Marko, Isakov, Ivana, Rapaić, Milan, Grabić, Stevan, Todorović, Ivan, Porobić, Vlado.  2022.  Decentralized microgrid control "beyond droop". 2022 IEEE PES Innovative Smart Grid Technologies Conference Europe (ISGT-Europe). :1—5.
Various approaches of microgrid operation have been proposed, albeit with noticeable issues such as power-sharing, control of frequency and voltage excursions, applicability on different grids, etc. This paper proposes a goal function-based, decentralized control that addresses the mentioned problems and secures the microgrid stability by constraining the frequency and node deviations across the grid while simultaneously supporting the desired active power exchange between prosumer nodes. The control algorithm is independent of network topology and enables arbitrary node connection, i.e. seamless microgrid expandability. To confirm the effectiveness of the proposed control strategy, simulation results are presented and discussed.
2023-07-14
Susan, V Shyamala, Vivek, V., Muthusamy, P., Priyanshu, Deepa, Singh, Arjun, Tripathi, Vikas.  2022.  More Efficient Data Security by DEVELOINV AES Hybrid Algorithm. 2022 International Interdisciplinary Humanitarian Conference for Sustainability (IIHC). :1550–1554.
The development of cloud apps enables people to exchange resources, goods, and expertise online with other clients. The material is more vulnerable to numerous security dangers from outsiders due to the fact that millions of users exchange data through the same system. How to maintain the security of this data is now the main concern. The current data protection system functions best when it places a greater priority on safeguarding data maintained in online storage than it does on cybersecurity during transportation. The data becomes open to intrusion attacks while being transferred. Additionally, the present craze states that an outside auditor may view data as it is being transmitted. Additionally, by allowing the hacker to assume a third-person identity while obtaining the information, this makes the data more susceptible to exploitation. The proposed system focuses on using encryption to safeguard information flow since cybersecurity is seen as a major issue. The approach also takes into account the fourth auditing issue, which is that under the recommended manner, the inspector is not allowed to see the user information. Tests have shown that the recommended technique improves security overall by making it harder for hackers to decode the supplied data.
2023-07-13
Veremey, Anastasiya, Kustov, Vladimir, Ravi, Renjith V.  2022.  Security Research and Design of Hierarchical Embedded Information Security System. 2022 Second International Conference on Computer Science, Engineering and Applications (ICCSEA). :1–6.
In this paper, the reader’s attention is directed to the problem of inefficiency of the add-on information security tools, that are installed in operating systems, including virtualization systems. The paper shows the disadvantages, that significantly affect the maintenance of an adequate level of security in the operating system. The results allowing to control all areas hierarchical of protection of the specialized operating system are presented.
Senthilnayaki, B., Venkatalakshami, K., Dharanyadevi, P., G, Nivetha, Devi, A..  2022.  An Efficient Medical Image Encryption Using Magic Square and PSO. 2022 International Conference on Smart Technologies and Systems for Next Generation Computing (ICSTSN). :1–5.
Encryption is essential for protecting sensitive data, especially images, against unauthorized access and exploitation. The goal of this work is to develop a more secure image encryption technique for image-based communication. The approach uses particle swarm optimization, chaotic map and magic square to offer an ideal encryption effect. This work introduces a novel encryption algorithm based on magic square. The image is first broken down into single-byte blocks, which are then replaced with the value of the magic square. The encrypted images are then utilized as particles and a starting assembly for the PSO optimization process. The correlation coefficient applied to neighboring pixels is used to define the ideal encrypted image as a fitness function. The results of the experiments reveal that the proposed approach can effectively encrypt images with various secret keys and has a decent encryption effect. As a result of the proposed work improves the public key method's security while simultaneously increasing memory economy.
2023-07-12
Maity, Ilora, Vu, Thang X., Chatzinotas, Symeon, Minardi, Mario.  2022.  D-ViNE: Dynamic Virtual Network Embedding in Non-Terrestrial Networks. 2022 IEEE Wireless Communications and Networking Conference (WCNC). :166—171.
In this paper, we address the virtual network embedding (VNE) problem in non-terrestrial networks (NTNs) enabling dynamic changes in the virtual network function (VNF) deployment to maximize the service acceptance rate and service revenue. NTNs such as satellite networks involve highly dynamic topology and limited resources in terms of rate and power. VNE in NTNs is a challenge because a static strategy under-performs when new service requests arrive or the network topology changes unexpectedly due to failures or other events. Existing solutions do not consider the power constraint of satellites and rate limitation of inter-satellite links (ISLs) which are essential parameters for dynamic adjustment of existing VNE strategy in NTNs. In this work, we propose a dynamic VNE algorithm that selects a suitable VNE strategy for new and existing services considering the time-varying network topology. The proposed scheme, D-ViNE, increases the service acceptance ratio by 8.51% compared to the benchmark scheme TS-MAPSCH.