Robust and Resource-efficient Machine Learning Aided Viewport Prediction in Virtual Reality
Yuang Jiang, Konstantinos Poularakis, Diego Kiedanski, Sastry, Kompella, Leandros Tassiulas

TL;DR
This paper introduces a meta learning approach for viewport prediction in VR videos, improving robustness and accuracy for diverse users and unseen videos, thereby reducing resource consumption in streaming.
Contribution
It proposes a novel meta learning framework with two models for viewport prediction, enhancing adaptability and robustness over traditional pre-trained models.
Findings
Meta models adapt quickly to individual users.
Significant improvement in worst-case prediction accuracy.
Enhanced resource efficiency in VR video streaming.
Abstract
360-degree panoramic videos have gained considerable attention in recent years due to the rapid development of head-mounted displays (HMDs) and panoramic cameras. One major problem in streaming panoramic videos is that panoramic videos are much larger in size compared to traditional ones. Moreover, the user devices are often in a wireless environment, with limited battery, computation power, and bandwidth. To reduce resource consumption, researchers have proposed ways to predict the users' viewports so that only part of the entire video needs to be transmitted from the server. However, the robustness of such prediction approaches has been overlooked in the literature: it is usually assumed that only a few models, pre-trained on past users' experiences, are applied for prediction to all users. We observe that those pre-trained models can perform poorly for some users because they might…
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Taxonomy
TopicsImage and Video Quality Assessment · Video Coding and Compression Technologies · Multimedia Communication and Technology
