Proposing a Privacy Protection Model in Case of Civilian Drone

Technology-based products are meant for improving the people's quality of life. Since drones or more precisely Unmanned Aerial Vehicle's UAVs were permitted to be used for civilian purposes and applications, many lucrative reasons such as low price, mobility and ease of deployment have captured the attention of commercial organizations. These reasons have motivated the commercial organizations to involve and adopt UAVs in their company's operational body structure which will be positively reflected on the services provided to their clients. UAVs have influential features that can be used to infringe on the privacy of individuals if they are deliberately misused, therefor the commercial organizations willingness and the precious services going to be offered to clients should not be at the cost of privacy. This research will present a privacy detection model to guarantee the success of UAV commercial adoption as well as securing the individual privacy. Proposed model will be implemented in near future to escort the privacy protection of civilian in case of commercial drone.

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