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2021-03-09
Razaque, A., Amsaad, F., Almiani, M., Gulsezim, D., Almahameed, M. A., Al-Dmour, A., Khan, M. J., Ganda, R..  2020.  Successes and Failures in Exploring Biometric Algorithms in NIST Open Source Software and Data. 2020 Seventh International Conference on Software Defined Systems (SDS). :231—234.

With the emergence of advanced technology, the user authentication methods have also been improved. Authenticating the user, several secure and efficient approaches have been introduced, but the biometric authentication method is considered much safer as compared to password-driven methods. In this paper, we explore the risks, concerns, and methods by installing well-known open-source software used in Unibiometric analysis by the partners of The National Institute of Standards and Technology (NIST). Not only are the algorithms used all open source but it comes with test data and several internal open source utilities necessary to process biometric data.

2020-12-07
Islam, M. M., Karmakar, G., Kamruzzaman, J., Murshed, M..  2019.  Measuring Trustworthiness of IoT Image Sensor Data Using Other Sensors’ Complementary Multimodal Data. 2019 18th IEEE International Conference On Trust, Security And Privacy In Computing And Communications/13th IEEE International Conference On Big Data Science And Engineering (TrustCom/BigDataSE). :775–780.
Trust of image sensor data is becoming increasingly important as the Internet of Things (IoT) applications grow from home appliances to surveillance. Up to our knowledge, there exists only one work in literature that estimates trustworthiness of digital images applied to forensic applications, based on a machine learning technique. The efficacy of this technique is heavily dependent on availability of an appropriate training set and adequate variation of IoT sensor data with noise, interference and environmental condition, but availability of such data cannot be assured always. Therefore, to overcome this limitation, a robust method capable of estimating trustworthy measure with high accuracy is needed. Lowering cost of sensors allow many IoT applications to use multiple types of sensors to observe the same event. In such cases, complementary multimodal data of one sensor can be exploited to measure trust level of another sensor data. In this paper, for the first time, we introduce a completely new approach to estimate the trustworthiness of an image sensor data using another sensor's numerical data. We develop a theoretical model using the Dempster-Shafer theory (DST) framework. The efficacy of the proposed model in estimating trust level of an image sensor data is analyzed by observing a fire event using IoT image and temperature sensor data in a residential setup under different scenarios. The proposed model produces highly accurate trust level in all scenarios with authentic and forged image data.
2020-06-01
Parikh, Sarang, Sanjay, H A, Shastry, K. Aditya, Amith, K K.  2019.  Multimodal Data Security Framework Using Steganography Approaches. 2019 International Conference on Communication and Electronics Systems (ICCES). :1997–2002.
Information or data is a very crucial resource. Hence securing the information becomes a critical task. Transfer and Communication mediums via which we send this information do not provide data security natively. Therefore, methods for data security have to be devised to protect the information from third party and unauthorized users. Information hiding strategies like steganography provide techniques for data encryption so that the unauthorized users cannot read it. This work is aimed at creating a novel method of Augmented Reality Steganography (ARSteg). ARSteg uses cloud for image and key storage that does not alter any attributes of an image such as size and colour scheme. Unlike, traditional algorithms such as Least Significant Bit (LSB) which changes the attributes of images, our approach uses well established encryption algorithm such as Advanced Encryption Standard (AES) for encryption and decryption. This system is further secured by many alternative means such as honey potting, tracking and heuristic intrusion detection that ensure that the transmitted messages are completely secure and no intrusions are allowed. The intrusions are prevented by detecting them immediately and neutralizing them.
2018-06-11
Zhang, Peng-Fei, Li, Chuan-Xiang, Liu, Meng-Yuan, Nie, Liqiang, Xu, Xin-Shun.  2017.  Semi-Relaxation Supervised Hashing for Cross-Modal Retrieval. Proceedings of the 2017 ACM on Multimedia Conference. :1762–1770.
Recently, some cross-modal hashing methods have been devised for cross-modal search task. Essentially, given a similarity matrix, most of these methods tackle a discrete optimization problem by separating it into two stages, i.e., first relaxing the binary constraints and finding a solution of the relaxed optimization problem, then quantizing the solution to obtain the binary codes. This scheme will generate large quantization error. Some discrete optimization methods have been proposed to tackle this; however, the generation of the binary codes is independent of the features in the original space, which makes it not robust to noise. To consider these problems, in this paper, we propose a novel supervised cross-modal hashing method—Semi-Relaxation Supervised Hashing (SRSH). It can learn the hash functions and the binary codes simultaneously. At the same time, to tackle the optimization problem, it relaxes a part of binary constraints, instead of all of them, by introducing an intermediate representation variable. By doing this, the quantization error can be reduced and the optimization problem can also be easily solved by an iterative algorithm proposed in this paper. Extensive experimental results on three benchmark datasets demonstrate that SRSH can obtain competitive results and outperform state-of-the-art unsupervised and supervised cross-modal hashing methods.
2017-03-08
Alotaibi, S., Furnell, S., Clarke, N..  2015.  Transparent authentication systems for mobile device security: A review. 2015 10th International Conference for Internet Technology and Secured Transactions (ICITST). :406–413.

Sensitive data such as text messages, contact lists, and personal information are stored on mobile devices. This makes authentication of paramount importance. More security is needed on mobile devices since, after point-of-entry authentication, the user can perform almost all tasks without having to re-authenticate. For this reason, many authentication methods have been suggested to improve the security of mobile devices in a transparent and continuous manner, providing a basis for convenient and secure user re-authentication. This paper presents a comprehensive analysis and literature review on transparent authentication systems for mobile device security. This review indicates a need to investigate when to authenticate the mobile user by focusing on the sensitivity level of the application, and understanding whether a certain application may require a protection or not.