Adaptive video streaming systems are expected to provide the best user experience to improve service engagement. To the purpose, video players host a controller that dynamically chooses the most suitable video representation to be downloaded. It is well-known that finding one tuning of the controller's parameters which performs satisfactorily in a wide range of scenarios is very challenging. This paper studies the problem of providing users with (near) optimal Quality of Experience (QoE) for Dynamic Adaptive Streaming over HTTP (DASH) systems. We present ERUDITE, a closed-loop system to optimally tune - at run-time - the adaptive streaming controller's parameters to adapt to changing scenario's parameters. ERUDITE employs a Deep Neural Network (DNN) which continuously provides the streaming controller with estimates of optimal parameters based on measured metrics such as bandwidth samples and overall obtained QoE. The DNN is trained using a dataset that we have built by finding, for thousands of realistic scenarios, robust optimal adaptive streaming controller's parameters using a Bayesian optimization algorithm. Results, gathered considering a large number of diverse scenarios, show that ERUDITE is able to provide near optimal performances by reducing impairments due to rebuffering and video level switching.

ERUDITE: a Deep Neural Network for Optimal Tuning of Adaptive Video Streaming Controllers / De Cicco, Luca; Cilli, Giuseppe; Mascolo, Saverio. - In: IEEE TRANSACTIONS ON NETWORKING. - ISSN 2998-4157. - ELETTRONICO. - 33:3(2025), pp. 1373-1387. [10.1109/TON.2025.3532041]

ERUDITE: a Deep Neural Network for Optimal Tuning of Adaptive Video Streaming Controllers

Luca De Cicco
;
Giuseppe Cilli;Saverio Mascolo
2025

Abstract

Adaptive video streaming systems are expected to provide the best user experience to improve service engagement. To the purpose, video players host a controller that dynamically chooses the most suitable video representation to be downloaded. It is well-known that finding one tuning of the controller's parameters which performs satisfactorily in a wide range of scenarios is very challenging. This paper studies the problem of providing users with (near) optimal Quality of Experience (QoE) for Dynamic Adaptive Streaming over HTTP (DASH) systems. We present ERUDITE, a closed-loop system to optimally tune - at run-time - the adaptive streaming controller's parameters to adapt to changing scenario's parameters. ERUDITE employs a Deep Neural Network (DNN) which continuously provides the streaming controller with estimates of optimal parameters based on measured metrics such as bandwidth samples and overall obtained QoE. The DNN is trained using a dataset that we have built by finding, for thousands of realistic scenarios, robust optimal adaptive streaming controller's parameters using a Bayesian optimization algorithm. Results, gathered considering a large number of diverse scenarios, show that ERUDITE is able to provide near optimal performances by reducing impairments due to rebuffering and video level switching.
2025
ERUDITE: a Deep Neural Network for Optimal Tuning of Adaptive Video Streaming Controllers / De Cicco, Luca; Cilli, Giuseppe; Mascolo, Saverio. - In: IEEE TRANSACTIONS ON NETWORKING. - ISSN 2998-4157. - ELETTRONICO. - 33:3(2025), pp. 1373-1387. [10.1109/TON.2025.3532041]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11589/282640
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