Perceptual Characterization of 3D Graphical Contents based on Attention Complexity Measures
Author(s) -
Mona Abid,
Matthieu Perreira Da Silva,
Patrick Le Callet
Publication year - 2020
Publication title -
hal (le centre pour la communication scientifique directe)
Language(s) - English
Resource type - Conference proceedings
DOI - 10.1145/3423328.3423498
Subject(s) - computer science , viewpoints , exploit , perception , graphical model , colored , eye tracking , graphical user interface , characterization (materials science) , artificial intelligence , human–computer interaction , psychology , art , materials science , computer security , composite material , neuroscience , visual arts , programming language , nanotechnology
This paper provides insights on how to perceptually characterize colored 3D Graphical Contents (3DGC). In this study, pre-defined viewpoints were considered to render static graphical objects. For perceptual characterization, we used visual attention complexity (VAC) measures. Considering a view-based approach to exploit the perceived information, an eye-tracking experiment was conducted using colored graphical objects. Based on the collected gaze data, we revised the VAC measure, suggested in 2D imaging context, and adapted it to 3DGC. We also provided an objective predictor that highly mimics the experimental attentional complexity information. This predictor can be useful in Quality of Experience (QoE) studies: to balance content selection when benchmarking 3DGC processing techniques (e.g., rendering, coding, streaming, etc.) for human panel studies or ad hoc key performance indicator, and also to optimize the user's QoE when rendering such contents.
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