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2017-12-27
Kotel, S., Sbiaa, F., Zeghid, M., Machhout, M., Baganne, A., Tourki, R..  2016.  Efficient Hybrid Encryption System Based on Block Cipher and Chaos Generator. 2016 IEEE International Conference on Computer and Information Technology (CIT). :375–382.

In recent years, more and more multimedia data are generated and transmitted in various fields. So, many encryption methods for multimedia content have been put forward to satisfy various applications. However, there are still some open issues. Each encryption method has its advantages and drawbacks. Our main goal is expected to provide a solution for multimedia encryption which satisfies the target application constraints and performs metrics of the encryption algorithm. The Advanced Encryption Standard (AES) is the most popular algorithm used in symmetric key cryptography. Furthermore, chaotic encryption is a new research direction of cryptography which is characterized by high initial-value sensitivity and good randomness. In this paper we propose a hybrid video cryptosystem which combines two encryption techniques. The proposed cryptosystem realizes the video encryption through the chaos and AES in CTR mode. Experimental results and security analysis demonstrate that this cryptosystem is highly efficient and a robust system for video encryption.

2017-03-08
Prinosil, J., Krupka, A., Riha, K., Dutta, M. K., Singh, A..  2015.  Automatic hair color de-identification. 2015 International Conference on Green Computing and Internet of Things (ICGCIoT). :732–736.

A process of de-identification used for privacy protection in multimedia content should be applied not only for primary biometric traits (face, voice) but for soft biometric traits as well. This paper deals with a proposal of the automatic hair color de-identification method working with video records. The method involves image hair area segmentation, basic hair color recognition, and modification of hair color for real-looking de-identified images.