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2020-07-09
Liu, Chuanyi, Han, Peiyi, Dong, Yingfei, Pan, Hezhong, Duan, Shaoming, Fang, Binxing.  2019.  CloudDLP: Transparent and Automatic Data Sanitization for Browser-Based Cloud Storage. 2019 28th International Conference on Computer Communication and Networks (ICCCN). :1—8.

Because cloud storage services have been broadly used in enterprises for online sharing and collaboration, sensitive information in images or documents may be easily leaked outside the trust enterprise on-premises due to such cloud services. Existing solutions to this problem have not fully explored the tradeoffs among application performance, service scalability, and user data privacy. Therefore, we propose CloudDLP, a generic approach for enterprises to automatically sanitize sensitive data in images and documents in browser-based cloud storage. To the best of our knowledge, CloudDLP is the first system that automatically and transparently detects and sanitizes both sensitive images and textual documents without compromising user experience or application functionality on browser-based cloud storage. To prevent sensitive information escaping from on-premises, CloudDLP utilizes deep learning methods to detect sensitive information in both images and textual documents. We have evaluated the proposed method on a number of typical cloud applications. Our experimental results show that it can achieve transparent and automatic data sanitization on the cloud storage services with relatively low overheads, while preserving most application functionalities.

2018-04-04
Yost, W., Jaiswal, C..  2017.  MalFire: Malware firewall for malicious content detection and protection. 2017 IEEE 8th Annual Ubiquitous Computing, Electronics and Mobile Communication Conference (UEMCON). :428–433.

The online portion of modern life is growing at an astonishing rate, with the consequence that more of the user's critical information is stored online. This poses an immediate threat to privacy and security of the user's data. This work will cover the increasing dangers and security risks of adware, adware injection, and malware injection. These programs increase in direct proportion to the number of users on the Internet. Each of these programs presents an imminent threat to a user's privacy and sensitive information, anytime they utilize the Internet. We will discuss how current ad blockers are not the actual solution to these threats, but rather a premise to our work. Current ad blocking tools can be discovered by the web servers which often requires suppression of the ad blocking tool. Suppressing the tool creates vulnerabilities in a user's system, but even when the tool is active their system is still susceptible to peril. It is possible, even when an ad blocking tool is functioning, for it to allow adware content through. Our solution to the contemporary threats is our tool, MalFire.

2018-02-21
Talreja, R., Motwani, D..  2017.  SecTrans: Enhacing user privacy on Android Platform. 2017 International Conference on Nascent Technologies in Engineering (ICNTE). :1–4.

Interchange of information through cell phones, Tabs and PDAs (Personal Digital Assistant) is the new trend in the era of digitization. In day-to-day activities, sensitive information through mobile phones is exchanged among the users. This sensitive information can be in the form of text messages, images, location, etc. The research on Android mobile applications was done at the MIT, and found that applications are leaking enormous amount of information to the third party servers. 73 percent of 55 Android applications were detected to leak personal information of the users [8]. Transmission of files securely on Android is a big issue. Therefore it is important to shield the privacy of user data on Android operating system. The main motive of this paper is to protect the privacy of data on Android Platform by allowing transmission of textual data, location, pictures in encrypted format. By doing so, we achieved intimacy and integrity of data.