Usability of Augmented Reality in Aeronautic Maintenance, Repair and Overhaul
Communication avec acte
Abstract
Augmented Reality (AR) is a strong growing research topic in several areas including industry, training, art and entertainment. AR can help users to achieve very complex tasks by enhancing their vision with useful and well-adapted information. This paper deals with evaluating the usability of AR in aeronautic maintenance training tasks. A case study in the on-site maintenance department was conducted using an augmented reality application, involving operators at several levels of expertise. Obtained results highlighted the full efficacy of AR in the field of aeronautic maintenance.
Files in this item
Related items
Showing items related by title, author, creator and subject.
-
Article dans une revue avec comité de lectureRABAH, Souad; ASSILA, Ahlem; KHOURI, Elio; MAIER, Florian; ABABSA, Fakhreddine; BOURNY, Valéry; MAIER, Paul; MERIENNE, Frédéric (Elsevier, 2018)We are on the cusp of a technological revolution that will fundamentally change our relationships to others and the way we live and work. These changes, in their importance, scope, and complexity, is different than what ...
-
Communication avec acteIn augmented reality environments, the natural hand interaction between a virtual object and the user is a major issue to manipulate a rendered object in a convenient way. Microsoft’s HoloLens (Microsoft 2018) is an ...
-
Communication avec acteABABSA, Fakhreddine; HADJ-ABDELKADER, Hicham; BOUI, Marouane (ACM Press, 2019)This paper deals with the problem of 3D human tracking in catadioptric images using particle-filtering framework. While traditional perspective images are well exploited, only a few methods have been developed for catadioptric ...
-
Communication avec actePRUVOST, Martin; MIALOCQ, Pierre; ABABSA, Fakhreddine (2018)This paper presents an AR system architecture for assisting complex assembly work by adding visual information superimposed on the physical assembly parts.
-
Article dans une revue avec comité de lectureKHELALEF, Aziz; ABABSA, Fakhreddine; BENOUDJIT, Nabil (MAIK Nauka/Interperiodica (МАИК Наука/Интерпериодика), 2019)In this paper, we present a new deep learning-based human activity recognition technique. First, we track and extract human body from each frame of the video stream. Next, we abstract human silhouettes and use them to ...