Manoj Vignesh, K M, Sujanani, Anish, Bangalore, Raghu A..
2021.
Modelling Trust Frameworks for Network-IDS. 2021 2nd International Conference for Emerging Technology (INCET). :1–5.
Though intrusion detection systems provide actionable alerts based on signature-based or anomaly-based traffic patterns, the majority of systems still rely on human analysts to identify and contain the root cause of security incidents. This process is naturally susceptible to human error and is time-consuming, which may allow for further enumeration and pivoting within a compromised environment. Through this paper, we have augmented traditional signature-based network intrusion detection systems with a trust framework whose reduction and redemption values are a function of the severity of the incident, the degree of connectivity of nodes and the time elapsed. A lightweight implementation on the nodes coupled with a multithreaded approach on the central trust server has shown the capability to scale to larger networks with high traffic volumes and a varying proportion of suspicious traffic patterns.
Yin, Weiru, Chai, Chen, Zhou, Ziyao, Li, Chenhao, Lu, Yali, Shi, Xiupeng.
2021.
Effects of trust in human-automation shared control: A human-in-the-loop driving simulation study. 2021 IEEE International Intelligent Transportation Systems Conference (ITSC). :1147–1154.
Human-automation shared control is proposed to reduce the risk of driver disengagement in Level-3 autonomous vehicles. Although previous studies have approved shared control strategy is effective to keep a driver in the loop and improve the driver's performance, over- and under-trust may affect the cooperation between the driver and the automation system. This study conducted a human-in-the-loop driving simulation experiment to assess the effects of trust on driver's behavior of shared control. An expert shared control strategy with longitudinal and lateral driving assistance was proposed and implemented in the experiment platform. Based on the experiment (N=24), trust in shared control was evaluated, followed by a correlation analysis of trust and behaviors. Moderating effects of trust on the relationship between gaze focalization and minimum of time to collision were then explored. Results showed that self-reported trust in shared control could be evaluated by three subscales respectively: safety, efficiency and ease of control, which all show stronger correlations with gaze focalization than other behaviors. Besides, with more trust in ease of control, there is a gentle decrease in the human-machine conflicts of mean brake inputs. The moderating effects show trust could enhance the decrease of minimum of time to collision as eyes-off-road time increases. These results indicate over-trust in automation will lead to unsafe behaviors, particularly monitoring behavior. This study contributes to revealing the link between trust and behavior in the context of human-automation shared control. It can be applied in improving the design of shared control and reducing risky behaviors of drivers by further trust calibration.
Luo, Ruijiao, Huang, Chao, Peng, Yuntao, Song, Boyi, Liu, Rui.
2021.
Repairing Human Trust by Promptly Correcting Robot Mistakes with An Attention Transfer Model. 2021 IEEE 17th International Conference on Automation Science and Engineering (CASE). :1928–1933.
In human-robot collaboration (HRC), human trust in the robot is the human expectation that a robot executes tasks with desired performance. A higher-level trust increases the willingness of a human operator to assign tasks, share plans, and reduce the interruption during robot executions, thereby facilitating human-robot integration both physically and mentally. However, due to real-world disturbances, robots inevitably make mistakes, decreasing human trust and further influencing collaboration. Trust is fragile and trust loss is triggered easily when robots show incapability of task executions, making the trust maintenance challenging. To maintain human trust, in this research, a trust repair framework is developed based on a human-to-robot attention transfer (H2R-AT) model and a user trust study. The rationale of this framework is that a prompt mistake correction restores human trust. With H2R-AT, a robot localizes human verbal concerns and makes prompt mistake corrections to avoid task failures in an early stage and to finally improve human trust. User trust study measures trust status before and after the behavior corrections to quantify the trust loss. Robot experiments were designed to cover four typical mistakes, wrong action, wrong region, wrong pose, and wrong spatial relation, validated the accuracy of H2R-AT in robot behavior corrections; a user trust study with 252 participants was conducted, and the changes in trust levels before and after corrections were evaluated. The effectiveness of the human trust repairing was evaluated by the mistake correction accuracy and the trust improvement.
Summerer, Christoph, Regnath, Emanuel, Ehm, Hans, Steinhorst, Sebastian.
2021.
Human-based Consensus for Trust Installation in Ontologies. 2021 IEEE International Conference on Blockchain and Cryptocurrency (ICBC). :1–3.
In this paper, we propose a novel protocol to represent the human factor on a blockchain environment. Our approach allows single or groups of humans to propose data in blocks which cannot be validated automatically but need human knowledge and collaboration to be validated. Only if human-based consensus on the correctness and trustworthiness of the data is reached, the new block is appended to the blockchain. This human approach significantly extends the possibilities of blockchain applications on data types apart from financial transaction data.
Thom, Jay, Shah, Yash, Sengupta, Shamik.
2021.
Correlation of Cyber Threat Intelligence Data Across Global Honeypots. 2021 IEEE 11th Annual Computing and Communication Workshop and Conference (CCWC). :0766–0772.
Today's global network is filled with attackers both live and automated seeking to identify and compromise vulnerable devices, with initial scanning and attack activity occurring within minutes or even seconds of being connected to the Internet. To better understand these events, honeypots can be deployed to monitor and log activity by simulating actual Internet facing services such as SSH, Telnet, HTTP, or FTP, and malicious activity can be logged as attempts are made to compromise them. In this study six multi-service honeypots are deployed in locations around the globe to collect and catalog traffic over a period of several months between March and December, 2020. Analysis is performed on various characteristics including source and destination IP addresses and port numbers, usernames and passwords utilized, commands executed, and types of files downloaded. In addition, Cowrie log data is restructured to observe individual attacker sessions, study command sequences, and monitor tunneling activity. This data is then correlated across honeypots to compare attack and traffic patterns with the goal of learning more about the tactics being employed. By gathering data gathered from geographically separate zones over a long period of time a greater understanding can be developed regarding attacker intent and methodology, can aid in the development of effective approaches to identifying malicious behavior and attack sources, and can serve as a cyber-threat intelligence feed.
Yamamoto, Moeka, Kakei, Shohei, Saito, Shoichi.
2021.
FirmPot: A Framework for Intelligent-Interaction Honeypots Using Firmware of IoT Devices. 2021 Ninth International Symposium on Computing and Networking Workshops (CANDARW). :405–411.
IoT honeypots that mimic the behavior of IoT devices for threat analysis are becoming increasingly important. Existing honeypot systems use devices with a specific version of firmware installed to monitor cyber attacks. However, honeypots frequently receive requests targeting devices and firmware that are different from themselves. When honeypots return an error response to such a request, the attack is terminated, and the monitoring fails.To solve this problem, we introduce FirmPot, a framework that automatically generates intelligent-interaction honeypots using firmware. This framework has a firmware emulator optimized for honeypot generation and learns the behavior of embedded applications by using machine learning. The generated honeypots continue to interact with attackers by a mechanism that returns the best from the emulated responses to the attack request instead of an error response.We experimented on embedded web applications of wireless routers based on the open-source OpenWrt. As a result, our framework generated honeypots that mimicked the embedded web applications of eight vendors and ten different CPU architectures. Furthermore, our approach to the interaction improved the session length with attackers compared to existing ones.
Shyla, Shyla, Bhatnagar, Vishal.
2021.
The Geo-Spatial Distribution of Targeted Attacks sources using Honeypot Networks. 2021 11th International Conference on Cloud Computing, Data Science Engineering (Confluence). :600–604.
The extensive utilization of network by smart devices, computers and servers makes it vulnerable to malicious activities where intruders and attackers tends to violate system security policies and authenticity to slither essential information. Honeypots are designed to create a virtual trap against hackers. The trap is to attract intruders and gather information about attackers and attack features. Honeypots mimics as a computer application, billing systems, webpages and client server-based applications to understand attackers behavior by gathering attack features and common foot prints used by hackers to forge information. In this papers, authors analyse amazon web services honeypot (AWSH) data to determine geo-spatial distribution of targeted attacks originated from different locations. The categorization of attacks is made on the basis of internet protocols and frequency of attack occurrences worldwide.
You, Jianzhou, Lv, Shichao, Sun, Yue, Wen, Hui, Sun, Limin.
2021.
HoneyVP: A Cost-Effective Hybrid Honeypot Architecture for Industrial Control Systems. ICC 2021 - IEEE International Conference on Communications. :1–6.
As a decoy for hackers, honeypots have been proved to be a very valuable tool for collecting real data. However, due to closed source and vendor-specific firmware, there are significant limitations in cost for researchers to design an easy-to-use and high-interaction honeypot for industrial control systems (ICSs). To solve this problem, it’s necessary to find a cost-effective solution. In this paper, we propose a novel honeypot architecture termed HoneyVP to support a semi-virtual and semi-physical honeypot design and implementation to enable high cost performance. Specially, we first analyze cyber-attacks on ICS devices in view of different interaction levels. Then, in order to deal with these attacks, our HoneyVP architecture clearly defines three basic independent and cooperative components, namely, the virtual component, the physical component, and the coordinator. Finally, a local-remote cooperative ICS honeypot system is implemented to validate its feasibility and effectiveness. Our experimental results show the advantages of using the proposed architecture compared with the previous honeypot solutions. HoneyVP provides a cost-effective solution for ICS security researchers, making ICS honeypots more attractive and making it possible to capture physical interactions.
Sethi, Tanmay, Mathew, Rejo.
2021.
A Study on Advancement in Honeypot based Network Security Model. 2021 Third International Conference on Intelligent Communication Technologies and Virtual Mobile Networks (ICICV). :94–97.
Throughout the years, honeypots have been very useful in tracking down attackers and preventing different types of cyber attacks on a very large scale. It's been almost 3 decades since the discover of honeypots and still more than 80% of the companies rely on this system because of intrusion detection features and low false positive rate. But with time, the attackers tend to start discovering loopholes in the system. Hence it is very important to be up to date with the technology when it comes to protecting a computing device from the emerging cyber attacks. Timely advancements in the security model provided by the honeypots helps in a more efficient use of the resource and also leads to better innovations in that field. The following paper reviews different methods of honeypot network and also gives an insight about the problems that those techniques can face along with their solution. Further it also gives the detail about the most preferred solution among all of the listed techniques in the paper.
Saputro, Elang Dwi, Purwanto, Yudha, Ruriawan, Muhammad Faris.
2021.
Medium Interaction Honeypot Infrastructure on The Internet of Things. 2020 IEEE International Conference on Internet of Things and Intelligence System (IoTaIS). :98–102.
New technologies from day to day are submitted with many vulnerabilities that can make data exploitation. Nowadays, IoT is a target for Cybercrime attacks as it is one of the popular platforms in the century. This research address the IoT security problem by carried a medium-interaction honeypot. Honeypot is one of the solutions that can be done because it is a system feed for the introduction of attacks and fraudulent devices. This research has created a medium interaction honeypot using Cowrie, which is used to maintain the Internet of Things device from malware attacks or even attack patterns and collect information about the attacker's machine. From the result analysis, the honeypot can record all trials and attack activities, with CPU loads averagely below 6,3%.
Khalimov, Gennady, Sievierinov, Oleksandr, Khalimova, Svitlana, Kotukh, Yevgen, Chang, Sang-Yoon, Balytskyi, Yaroslav.
2021.
Encryption Based on the Group of the Hermitian Function Field and Homomorphic Encryption. 2021 IEEE 8th International Conference on Problems of Infocommunications, Science and Technology (PIC S T). :465–469.
The article proposes a general approach to the implementation of encryption schemes based on the group of automorphisms of the Hermitian functional field. The three-parameter group is used with logarithmic captions outside the center of the group. This time we applied for an encryption scheme based on a Hermitian function field with homomorphic encryption. The use of homomorphic encryption is an advantage of this implementation. The complexity of the attack and the size of the encrypted message depends on the strength of the group.
Shoba, V., Parameswari, R..
2021.
Data Security and Privacy Preserving with Augmented Homomorphic Re-Encryption Decryption (AHRED) Algorithm in Big Data Analytics. 2021 Third International Conference on Inventive Research in Computing Applications (ICIRCA). :451–457.
The process of Big data storage has become challenging due to the expansion of extensive data; data providers will offer encrypted data and upload to Big data. However, the data exchange mechanism is unable to accommodate encrypted data. Particularly when a large number of users share the scalable data, the scalability becomes extremely limited. Using a contemporary privacy protection system to solve this issue and ensure the security of encrypted data, as well as partially homomorphic re-encryption and decryption (PHRED). This scheme has the flexibility to share data by ensuring user's privacy with partially trusted Big Data. It can access to strong unforgeable scheme it make the transmuted cipher text have public and private key verification combined identity based Augmented Homomorphic Re Encryption Decryption(AHRED) on paillier crypto System with Laplacian noise filter the performance of the data provider for privacy preserving big data.
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.
Sujatha, G., Raj, Jeberson Retna.
2021.
Digital Data Identification for Deduplication Process using Cryptographic Hashing Techniques. 2021 International Conference on Intelligent Technologies (CONIT). :1–4.
The cloud storage system is a very big boon for the organizations and individuals who are all in the need of storage space to accommodate huge volume of digital data. The cloud storage space can handle various types of digital data like text, image, video and audio. Since the storage space can be shared among different users, it is possible to have duplicate copies of data in the storage space. An efficient mechanism is required to identify the digital data uniquely in order to check the duplicity. There are various ways by which the digital data can be identified. One among such technique is hash-based identification. Using cryptographic hashing algorithms, every data can be uniquely identified. The unique property of hashing algorithm helps to identify the data uniquely. In this research work, we are going to discuss the advantage of using cryptographic hashing algorithm for digital data identification and the comparison of various hashing algorithms.
Zhang, QianQian, Liu, Yazhou, Sun, Quansen.
2021.
Object Classification of Remote Sensing Images Based on Optimized Projection Supervised Discrete Hashing. 2020 25th International Conference on Pattern Recognition (ICPR). :9507–9513.
Recently, with the increasing number of large-scale remote sensing images, the demand for large-scale remote sensing image object classification is growing and attracting the interest of many researchers. Hashing, because of its low memory requirements and high time efficiency, has widely solve the problem of large-scale remote sensing image. Supervised hashing methods mainly leverage the label information of remote sensing image to learn hash function, however, the similarity of the original feature space cannot be well preserved, which can not meet the accurate requirements for object classification of remote sensing image. To solve the mentioned problem, we propose a novel method named Optimized Projection Supervised Discrete Hashing(OPSDH), which jointly learns a discrete binary codes generation and optimized projection constraint model. It uses an effective optimized projection method to further constraint the supervised hash learning and generated hash codes preserve the similarity based on the data label while retaining the similarity of the original feature space. The experimental results show that OPSDH reaches improved performance compared with the existing hash learning methods and demonstrate that the proposed method is more efficient for operational applications.
Souror, Samia, El-Fishawy, Nawal, Badawy, Mohammed.
2021.
SCKHA: A New Stream Cipher Algorithm Based on Key Hashing and Splitting Technique. 2021 International Conference on Electronic Engineering (ICEEM). :1–7.
Cryptographic algorithms are playing an important role in the information security field. Strong and unbreakable algorithms provide high security and good throughput. The strength of any encryption algorithm is basically based on the degree of difficulty to obtain the encryption key by such cyber-attacks as brute. It is supposed that the bigger the key size, the more difficult it is to compute the key. But increasing the key size will increase both the computational complexity and the processing time of algorithms. In this paper, we proposed a reliable, effective, and more secure symmetric stream cipher algorithm for encryption and decryption called Symmetric Cipher based on Key Hashing Algorithm (SCKHA). The idea of this algorithm is based on hashing and splitting the encryption symmetric key. Hashing the key will hide the encrypted key to prevent any intruder from forging the hash code, and, thus, it satisfies the purpose of security, authentication, and integrity for a message on the network. In addition, the algorithm is secure against a brute-force attack by increasing the resources it takes for testing each possible key. Splitting the hashed value of the encryption key will divide the hashed key into two key chunks. The encryption process performed using such one chunk based on some calculations on the plaintext. This algorithm has three advantages that are represented in computational simplicity, security and efficiency. Our algorithm is characterized by its ability to search on the encrypted data where the plaintext character is represented by two ciphertext characters (symbols).
Fang, Shiwei, Huang, Jin, Samplawski, Colin, Ganesan, Deepak, Marlin, Benjamin, Abdelzaher, Tarek, Wigness, Maggie B..
2021.
Optimizing Intelligent Edge-clouds with Partitioning, Compression and Speculative Inference. MILCOM 2021 - 2021 IEEE Military Communications Conference (MILCOM). :892–896.
Internet of Battlefield Things (IoBTs) are well positioned to take advantage of recent technology trends that have led to the development of low-power neural accelerators and low-cost high-performance sensors. However, a key challenge that needs to be dealt with is that despite all the advancements, edge devices remain resource-constrained, thus prohibiting complex deep neural networks from deploying and deriving actionable insights from various sensors. Furthermore, deploying sophisticated sensors in a distributed manner to improve decision-making also poses an extra challenge of coordinating and exchanging data between the nodes and server. We propose an architecture that abstracts away these thorny deployment considerations from an end-user (such as a commander or warfighter). Our architecture can automatically compile and deploy the inference model into a set of distributed nodes and server while taking into consideration of the resource availability, variation, and uncertainties.
Gupta, Ragini, Nahrstedt, Klara, Suri, Niranjan, Smith, Jeffrey.
2021.
SVAD: End-to-End Sensory Data Analysis for IoBT-Driven Platforms. 2021 IEEE 7th World Forum on Internet of Things (WF-IoT). :903–908.
The rapid advancement of IoT technologies has led to its flexible adoption in battle field networks, known as Internet of Battlefield Things (IoBT) networks. One important application of IoBT networks is the weather sensory network characterized with a variety of weather, land and environmental sensors. This data contains hidden trends and correlations, needed to provide situational awareness to soldiers and commanders. To interpret the incoming data in real-time, machine learning algorithms are required to automate strategic decision-making. Existing solutions are not well-equipped to provide the fine-grained feedback to military personnel and cannot facilitate a scalable, end-to-end platform for fast unlabeled data collection, cleaning, querying, analysis and threats identification. In this work, we present a scalable end-to-end IoBT data driven platform for SVAD (Storage, Visualization, Anomaly Detection) analysis of heterogeneous weather sensor data. Our SVAD platform includes extensive data cleaning techniques to denoise efficiently data to differentiate data from anomalies and noise data instances. We perform comparative analysis of unsupervised machine learning algorithms for multi-variant data analysis and experimental evaluation of different data ingestion pipelines to show the ability of the SVAD platform for (near) real-time processing. Our results indicate impending turbulent weather conditions that can be detected by early anomaly identification and detection techniques.
Trestioreanu, Lucian, Nita-Rotaru, Cristina, Malhotra, Aanchal, State, Radu.
2021.
SPON: Enabling Resilient Inter-Ledgers Payments with an Intrusion-Tolerant Overlay. 2021 IEEE Conference on Communications and Network Security (CNS). :92–100.
Payment systems are a critical component of everyday life in our society. While in many situations payments are still slow, opaque, siloed, expensive or even fail, users expect them to be fast, transparent, cheap, reliable and global. Recent technologies such as distributed ledgers create opportunities for near-real-time, cheaper and more transparent payments. However, in order to achieve a global payment system, payments should be possible not only within one ledger, but also across different ledgers and geographies.In this paper we propose Secure Payments with Overlay Networks (SPON), a service that enables global payments across multiple ledgers by combining the transaction exchange provided by the Interledger protocol with an intrusion-tolerant overlay of relay nodes to achieve (1) improved payment latency, (2) fault-tolerance to benign failures such as node failures and network partitions, and (3) resilience to BGP hijacking attacks. We discuss the design goals and present an implementation based on the Interledger protocol and Spines overlay network. We analyze the resilience of SPON and demonstrate through experimental evaluation that it is able to improve payment latency, recover from path outages, withstand network partition attacks, and disseminate payments fairly across multiple ledgers. We also show how SPON can be deployed to make the communication between different ledgers resilient to BGP hijacking attacks.
Chen, Xiujuan, Liu, Jing, Lu, Tiantian, Cheng, Dengfeng, Shi, Weidong, Lei, Ting, Kang, Peng.
2021.
Operation safety analysis of CMOA controllable switch under lightning intrusion wave in UHV AC substation. 2021 International Conference on Power System Technology (POWERCON). :1452–1456.
The metal oxide arrester (MOA, shortly) is installed on the line side of the substation, which is the first line of defense for the overvoltage limitation of lightning intrusion wave. In order to deeply limit the switching overvoltage and cancel the closing resistance of the circuit breaker, the arrester is replaced by the controllable metal oxide arrester (CMOA, shortly) in the new technology. The controllable switch of CMOA can be mechanical switch or thyristor switch. Thyristor switches are sensitive to the current and current change rate (di/dt) under lightning intrusion wave. If the switch cannot withstand, appropriate protective measures must be taken to ensure the safe operation of the controllable switch under this working condition. The 1000kV West Beijing to Shijiazhuang UHV AC transmission and transformation expansion project is the first project of pilot application of CMOA. CMOA were installed at both ends of the outgoing branch of Dingtai line I. In order to study the influence of lightning intrusion wave on the controllable switch of CMOA, this paper selected this project to simulate the lightning stroke on the incoming section of Dingtai line I in Beijing West substation in the process of system air closing or single-phase reclosing, and obtained the current and di/dt of the controllable switch through CMOA under this working condition. Then the performances of mechanical and thyristor control switches were checked respectively. The results showed that the mechanical switch could withstand without protective measures. The tolerance of thyristor switch to i and di/dt exceeded the limit value, and measures should be taken to protect and limit it. In this paper, the protection measures of current limiting reactor were given, and the limiting effect of the protection measures was verified by simulation and test. It could fully meet the requirements and ensure the safe operation of thyristor controllable switch.