Convex Hull Prediction Methods for Bitrate Ladder Construction: Design, Evaluation, and Comparison
Ahmed Telili, Wassim Hamidouche, Hadi Amirpour, Sid Ahmed Fezza, Luce, Morin, and Christian Timmerer

TL;DR
This paper reviews and benchmarks convex hull prediction methods for optimizing bitrate ladders in HTTP adaptive streaming, comparing traditional and deep learning approaches across multiple codecs and a large UHD video dataset.
Contribution
It offers a comprehensive review and benchmarking of convex hull prediction techniques, including new insights and baseline performance metrics for content-optimized bitrate ladder construction.
Findings
Deep learning methods outperform handcrafted approaches in prediction accuracy.
Content-based convex hull prediction improves bitrate ladder efficiency.
Benchmark results establish baseline performance across codecs and standards.
Abstract
HTTP adaptive streaming (HAS) has emerged as a prevalent approach for over-the-top (OTT) video streaming services due to its ability to deliver a seamless user experience. A fundamental component of HAS is the bitrate ladder, which comprises a set of encoding parameters (e.g., bitrate-resolution pairs) used to encode the source video into multiple representations. This adaptive bitrate ladder enables the client's video player to dynamically adjust the quality of the video stream in real-time based on fluctuations in network conditions, ensuring uninterrupted playback by selecting the most suitable representation for the available bandwidth. The most straightforward approach involves using a fixed bitrate ladder for all videos, consisting of pre-determined bitrate-resolution pairs known as one-size-fits-all. Conversely, the most reliable technique relies on intensively encoding all…
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Taxonomy
TopicsImage and Video Quality Assessment · Video Coding and Compression Technologies · Multimedia Communication and Technology
