Optimal Representations for Adaptive Streaming in Interactive Multi-View Video Systems
Laura Toni, Pascal Frossard

TL;DR
This paper introduces an optimization method for multi-view video representations in adaptive streaming systems to enhance navigation quality and reduce resource use, addressing the challenge of delivering personalized 3D scene views.
Contribution
It formulates the multi-view representation selection as an NP-hard problem and proposes an efficient ILP-based solution that balances quality and resource constraints.
Findings
Optimal representation sets improve navigation quality.
Proposed method reduces computational complexity.
Simulation shows gains over existing standards.
Abstract
Interactive multi-view video streaming (IMVS) services permit to remotely immerse within a 3D scene. This is possible by transmitting a set of reference camera views (anchor views), which are used by the clients to freely navigate in the scene and possibly synthesize additional viewpoints of interest. From a networking perspective, the big challenge in IMVS systems is to deliver to each client the best set of anchor views that maximizes the navigation quality, minimizes the view-switching delay and yet satisfies the network constraints. Integrating adaptive streaming solutions in free-viewpoint systems offers a promising solution to deploy IMVS in large and heterogeneous scenarios, as long as the multi-view video representations on the server are properly selected. We therefore propose to optimize the multi-view data at the server by minimizing the overall resource requirements, yet…
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Taxonomy
TopicsVideo Coding and Compression Technologies · Image and Video Quality Assessment · Advanced Vision and Imaging
