Data-driven bandwidth prediction models and automated model selection for low latency

عنوان Data-driven bandwidth prediction models and automated model selection for low latency
نویسنده Bentaleb, A., Beğen, Ali Cengiz, Harous, S., Zimmermann, R.
تاریخ انتشار: 2021
محل انتشار - IEEE
موضوع ABR, Bandwidth prediction, Chunked transfer encoding, CMAF, DASH, HTTP adaptive streaming, Low latency
نوع دوره ای
زبان انگلیسی
دیجیتال بله
نسخه خطی خیر
کتابخانه: دانشگاه اوزیغین
شناسه دارایی کتابخانه 1520-9210
شماره ثبت 9aaecf4c-1bc3-4d85-88c3-12a3e8592da4
محل کتابخانه Computer Science
تاریخ 2021
یادداشت‌ها Ministry of Education, Singapore ; UAE University
متن نمونه Today's HTTP adaptive streaming solutions use a variety of algorithms to measure the available network bandwidth and predict its future values. Bandwidth prediction, which is already a difficult task, must be more accurate when lower latency is desired due to the shorter time available to react to bandwidth changes, and when mobile networks are involved due to their inherently more frequent and potentially larger bandwidth fluctuations. Any inaccuracy in bandwidth prediction results in flawed adaptation decisions, which will in turn translate into a diminished viewer experience. We propose an Automated Model for Prediction (AMP) that encompasses techniques for bandwidth prediction and model auto-selection specifically designed for low-latency live steaming with chunked transfer encoding. We first study statistical and computational intelligence techniques to implement a suite of bandwidth prediction models that can work accurately under a broad range of network conditions, and second, we introduce an automated prediction model selection method. We confirm the effectiveness of our solution through trace-driven live streaming experiments.
DOI 10.1109/TMM.2020.3013387
Cilt 23
مشاهده در منبع دانشگاه اوزیغین دانشگاه اوزیغین - موتور جستجوی نسخه های خطی عثمانی
دانشگاه اوزیغین - موتور جستجوی نسخه های خطی عثمانی دانشگاه اوزیغین

Data-driven bandwidth prediction models and automated model selection for low latency

نویسنده Bentaleb, A., Beğen, Ali Cengiz, Harous, S., Zimmermann, R.
تاریخ انتشار 2021
محل انتشار - IEEE
موضوع ABR, Bandwidth prediction, Chunked transfer encoding, CMAF, DASH, HTTP adaptive streaming, Low latency
نوع دوره ای
زبان انگلیسی
دیجیتال بله
نسخه خطی خیر
کتابخانه دانشگاه اوزیغین
شناسه دارایی کتابخانه 1520-9210
شماره ثبت 9aaecf4c-1bc3-4d85-88c3-12a3e8592da4
محل کتابخانه Computer Science
تاریخ 2021
یادداشت‌ها Ministry of Education, Singapore ; UAE University
متن نمونه Today's HTTP adaptive streaming solutions use a variety of algorithms to measure the available network bandwidth and predict its future values. Bandwidth prediction, which is already a difficult task, must be more accurate when lower latency is desired due to the shorter time available to react to bandwidth changes, and when mobile networks are involved due to their inherently more frequent and potentially larger bandwidth fluctuations. Any inaccuracy in bandwidth prediction results in flawed adaptation decisions, which will in turn translate into a diminished viewer experience. We propose an Automated Model for Prediction (AMP) that encompasses techniques for bandwidth prediction and model auto-selection specifically designed for low-latency live steaming with chunked transfer encoding. We first study statistical and computational intelligence techniques to implement a suite of bandwidth prediction models that can work accurately under a broad range of network conditions, and second, we introduce an automated prediction model selection method. We confirm the effectiveness of our solution through trace-driven live streaming experiments.
DOI 10.1109/TMM.2020.3013387
Cilt 23
دانشگاه اوزیغین - موتور جستجوی نسخه های خطی عثمانی
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