SlideShare a Scribd company logo
ABSTRACT
Video streaming services account for the majority of today’s traffic on the Internet and this share is expected to continue growing. Given this broad utilization, research in HTTP Adaptive
Streaming (HAS) is recently moving towards energy-aware approaches to reduce the energy consumption of the devices involved in the streaming process. On the other side, the perception of
quality delivered to the user plays an important role, and the advent of changed the way quality is perceived, towards the Quality of Experience (QoE) of the user. The scope of this doctoral study
is within the end-users domain, referred to as the player environment, including video content consumption and interactivity. This thesis aims to investigate and develop different techniques to
increase the delivered QoE to the users and minimize the energy consumption of the end devices.
NETWORK PARADIGMS
How to exploit features of
future/emerging network
paradigms/protocols to improve QoE?
QoE- and Energy-aware
Content Consumption for HAS
AUTHOR
Daniele
Lorenzi
AFFILIATIONS
Christian Doppler Laboratory ATHENA
Alpen-Adria-Universitat Klagenfurt,
Klagenfurt, Austria
ACKNOWLEDGMENT
The financial support of the Austrian Federal Ministry for Digital and Economic Af-
fairs, the National Foundation for Research, Technology and Development, and the
Christian Doppler Research Association, is gratefully acknowledged. Christian Doppler
Laboratory ATHENA: https://athena.itec.aau.at/.
CONTACT INFORMATION
Daniele Lorenzi, M.Sc. | daniele.lorenzi@aau.at
-
https://athena.itec.aau.at/2023/03/qoe-and-energy-aware-content-
consumption-for-http-adaptive-streaming/
[1] M. Nguyen, et. al. (2020) “H2BR: An HTTP/2-based Retransmission Technique to Improve the
QoE of Adaptive Video Streaming”. In Proceedings of the 25th Packet Video Workshop. 1–7.
[2] Perna, Gianluca et. al. (2022). “A first look at HTTP/3 adoption and performance”. Computer
Communications 187, 115–124.
[3] M. Nguyen, and D. Lorenzi, et. al. (2022). DoFP+: An HTTP/3-Based Adaptive Bitrate Approach
Using Retransmission Techniques. IEEE Access 10, 109565–109579.
HTTP/2 retransmission techniques [1]
HTTP/3 in default mode [2]
State-of-the-art:
HTTP/3 features' performance analysis [3]
HTTP/3 features for request next and
improve buffered segments [3]
Research gaps:
MULTI-CODEC
How to efficiently enable multi-codec
video streaming to improve QoE?
[4] Zabrovskiy, Anatoliy, et. al. (2018) “A Practical Evaluation of Video Codecs for Large-Scale HTTP
Adaptive Streaming Services.” In 2018 25th IEEE International Conference on Image Processing
(ICIP). 998–1002.
[5] Reznik, Yuriy A., et. al. (2019) “Optimal Multi-Codec Adaptive Bitrate Streaming”. In 2019 IEEE
International Conference on Multimedia Expo Workshops (ICMEW). 348–353.
[6] D. Lorenzi, et. al. "MCOM-Live: A Multi-Codec Optimization Model at the Edge for Live Streaming",
In 29th International Conference on Multimedia Modeling (MMM), Bergen, Norway, 2023.
Video codecs’ performances analysis [4]
Multi-codec bit. ladder optimization [5]
State-of-the-art:
Content analysis for multiple codecs and
video sequences (different complexity)
Dynamic switching over time [6]
Research gaps:
ENERGY-AWARE
How to design ABR techniques to
increase the QoE and reduce the energy
consumption of the end-device?
[7] Varghese, Benoy, et. al. (2017) “e-DASH: Modelling an energy-aware DASH player”. In IEEE 18th
International Symposium on A World of Wireless, Mobile and Multimedia Networks (WoWMoM).
[8] M. Uitto, et. al. (2018) “Towards Energy-Efficient Adaptive Mpeg-Dash Streaming Using Hevc”.
In IEEE International Conference on Multimedia Expo Workshops (ICMEW).
Segment selection based on bitrate and
video brightness [7]
Encode and deliver HEVC segments [8]
State-of-the-art:
Energy consumption factors analysis
Video relighting techniques to reduce
display brightness
Energy-aware ABR selection
Research gaps:
ML-ENHANCEMENT
How to exploit machine learning
techniques on the client to enhance
video content and improve the QoE?
[9] Robin Rombach et al. “High-Resolution Image Synthesis with Latent Diffusion Models”. In:
Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition (CVPR). 2022.
[10] Minh Nguyen, and Ekrem Çetinkaya, et. al. (2022) “Super-Resolution Based Bitrate Adaptation
for HTTP Adaptive Streaming for Mobile Devices”. In Proceedings of the 1st Mile-High Video
Conference (Denver, Colorado) (MHV ’22). Association for Computing Machinery, New York, NY,
USA, 70–76.
LDMs for T2I synthesis, in-paint
modification, and super-resolution [9]
SR in HAS for mobile devices [10]
State-of-the-art:
ML-based video frame interpolation for
HAS
Real-time SR on client/mobile phones
(HAS pipeline, RoI-based)
Research gaps:

More Related Content

Similar to QoE- and Energy-aware Content Consumption for HTTP Adaptive Streaming - Poster

Content_adaptive_video_coding_for_HTTP_Adaptive_Streaming.pdf
Content_adaptive_video_coding_for_HTTP_Adaptive_Streaming.pdfContent_adaptive_video_coding_for_HTTP_Adaptive_Streaming.pdf
Content_adaptive_video_coding_for_HTTP_Adaptive_Streaming.pdf
Vignesh V Menon
 
Content-adaptive Video Coding for HTTP Adaptive Streaming
Content-adaptive Video Coding for HTTP Adaptive StreamingContent-adaptive Video Coding for HTTP Adaptive Streaming
Content-adaptive Video Coding for HTTP Adaptive Streaming
Alpen-Adria-Universität
 
The impact of jitter on the HEVC video streaming with Multiple Coding
The impact of jitter on the HEVC video streaming with  Multiple CodingThe impact of jitter on the HEVC video streaming with  Multiple Coding
The impact of jitter on the HEVC video streaming with Multiple Coding
HakimSahour
 
02 jofri quality 9051 10nov 17 edit septian2
02 jofri quality 9051 10nov 17 edit septian202 jofri quality 9051 10nov 17 edit septian2
02 jofri quality 9051 10nov 17 edit septian2
IAESIJEECS
 
Energy Consumption in Video Streaming: Components, Measurements, and Strategies
Energy Consumption in Video Streaming: Components, Measurements, and StrategiesEnergy Consumption in Video Streaming: Components, Measurements, and Strategies
Energy Consumption in Video Streaming: Components, Measurements, and Strategies
Alpen-Adria-Universität
 
Stabilization of Variable Bit Rate Video Streams Using Linear Lyapunov Functi...
Stabilization of Variable Bit Rate Video Streams Using Linear Lyapunov Functi...Stabilization of Variable Bit Rate Video Streams Using Linear Lyapunov Functi...
Stabilization of Variable Bit Rate Video Streams Using Linear Lyapunov Functi...
ijait
 
Research hatem abou-zeid
Research   hatem abou-zeidResearch   hatem abou-zeid
Research hatem abou-zeid
Hatem Abou-zeid
 
Overview of Selected Current MPEG Activities
Overview of Selected Current MPEG ActivitiesOverview of Selected Current MPEG Activities
Overview of Selected Current MPEG Activities
Alpen-Adria-Universität
 
Overview of Selected Current MPEG Activities
Overview of Selected Current MPEG ActivitiesOverview of Selected Current MPEG Activities
Overview of Selected Current MPEG Activities
Alpen-Adria-Universität
 

Similar to QoE- and Energy-aware Content Consumption for HTTP Adaptive Streaming - Poster (20)

IRJET- Internet Video Streaming Service for Social Network
IRJET- Internet Video Streaming Service for Social NetworkIRJET- Internet Video Streaming Service for Social Network
IRJET- Internet Video Streaming Service for Social Network
 
IEEE NS2 PROJECT@ DREAMWEB TECHNO SOLUTION
IEEE NS2 PROJECT@ DREAMWEB TECHNO SOLUTIONIEEE NS2 PROJECT@ DREAMWEB TECHNO SOLUTION
IEEE NS2 PROJECT@ DREAMWEB TECHNO SOLUTION
 
Content_adaptive_video_coding_for_HTTP_Adaptive_Streaming.pdf
Content_adaptive_video_coding_for_HTTP_Adaptive_Streaming.pdfContent_adaptive_video_coding_for_HTTP_Adaptive_Streaming.pdf
Content_adaptive_video_coding_for_HTTP_Adaptive_Streaming.pdf
 
Content-adaptive Video Coding for HTTP Adaptive Streaming
Content-adaptive Video Coding for HTTP Adaptive StreamingContent-adaptive Video Coding for HTTP Adaptive Streaming
Content-adaptive Video Coding for HTTP Adaptive Streaming
 
Online Bitrate ladder prediction for Adaptive VVC Streaming
Online Bitrate ladder prediction for Adaptive VVC StreamingOnline Bitrate ladder prediction for Adaptive VVC Streaming
Online Bitrate ladder prediction for Adaptive VVC Streaming
 
The impact of jitter on the HEVC video streaming with Multiple Coding
The impact of jitter on the HEVC video streaming with  Multiple CodingThe impact of jitter on the HEVC video streaming with  Multiple Coding
The impact of jitter on the HEVC video streaming with Multiple Coding
 
Analyzing Video Streaming Quality by Using Various Error Correction Methods o...
Analyzing Video Streaming Quality by Using Various Error Correction Methods o...Analyzing Video Streaming Quality by Using Various Error Correction Methods o...
Analyzing Video Streaming Quality by Using Various Error Correction Methods o...
 
02 jofri quality 9051 10nov 17 edit septian2
02 jofri quality 9051 10nov 17 edit septian202 jofri quality 9051 10nov 17 edit septian2
02 jofri quality 9051 10nov 17 edit septian2
 
Doctoral Symposium presentation.pdf
Doctoral Symposium presentation.pdfDoctoral Symposium presentation.pdf
Doctoral Symposium presentation.pdf
 
Energy Consumption in Video Streaming: Components, Measurements, and Strategies
Energy Consumption in Video Streaming: Components, Measurements, and StrategiesEnergy Consumption in Video Streaming: Components, Measurements, and Strategies
Energy Consumption in Video Streaming: Components, Measurements, and Strategies
 
Cg25492495
Cg25492495Cg25492495
Cg25492495
 
40120140504006
4012014050400640120140504006
40120140504006
 
Stabilization of Variable Bit Rate Video Streams Using Linear Lyapunov Functi...
Stabilization of Variable Bit Rate Video Streams Using Linear Lyapunov Functi...Stabilization of Variable Bit Rate Video Streams Using Linear Lyapunov Functi...
Stabilization of Variable Bit Rate Video Streams Using Linear Lyapunov Functi...
 
2 han
2 han2 han
2 han
 
904072
904072904072
904072
 
Optimal Rate Allocation and Lost Packet Retransmission in Video Streaming
Optimal Rate Allocation and Lost Packet Retransmission in Video StreamingOptimal Rate Allocation and Lost Packet Retransmission in Video Streaming
Optimal Rate Allocation and Lost Packet Retransmission in Video Streaming
 
Research hatem abou-zeid
Research   hatem abou-zeidResearch   hatem abou-zeid
Research hatem abou-zeid
 
Overview of Selected Current MPEG Activities
Overview of Selected Current MPEG ActivitiesOverview of Selected Current MPEG Activities
Overview of Selected Current MPEG Activities
 
Overview of Selected Current MPEG Activities
Overview of Selected Current MPEG ActivitiesOverview of Selected Current MPEG Activities
Overview of Selected Current MPEG Activities
 
MHV'22 - Super-resolution Based Bitrate Adaptation for HTTP Adaptive Streamin...
MHV'22 - Super-resolution Based Bitrate Adaptation for HTTP Adaptive Streamin...MHV'22 - Super-resolution Based Bitrate Adaptation for HTTP Adaptive Streamin...
MHV'22 - Super-resolution Based Bitrate Adaptation for HTTP Adaptive Streamin...
 

Recently uploaded

Search and Society: Reimagining Information Access for Radical Futures
Search and Society: Reimagining Information Access for Radical FuturesSearch and Society: Reimagining Information Access for Radical Futures
Search and Society: Reimagining Information Access for Radical Futures
Bhaskar Mitra
 

Recently uploaded (20)

Custom Approval Process: A New Perspective, Pavel Hrbacek & Anindya Halder
Custom Approval Process: A New Perspective, Pavel Hrbacek & Anindya HalderCustom Approval Process: A New Perspective, Pavel Hrbacek & Anindya Halder
Custom Approval Process: A New Perspective, Pavel Hrbacek & Anindya Halder
 
Software Delivery At the Speed of AI: Inflectra Invests In AI-Powered Quality
Software Delivery At the Speed of AI: Inflectra Invests In AI-Powered QualitySoftware Delivery At the Speed of AI: Inflectra Invests In AI-Powered Quality
Software Delivery At the Speed of AI: Inflectra Invests In AI-Powered Quality
 
Kubernetes & AI - Beauty and the Beast !?! @KCD Istanbul 2024
Kubernetes & AI - Beauty and the Beast !?! @KCD Istanbul 2024Kubernetes & AI - Beauty and the Beast !?! @KCD Istanbul 2024
Kubernetes & AI - Beauty and the Beast !?! @KCD Istanbul 2024
 
From Siloed Products to Connected Ecosystem: Building a Sustainable and Scala...
From Siloed Products to Connected Ecosystem: Building a Sustainable and Scala...From Siloed Products to Connected Ecosystem: Building a Sustainable and Scala...
From Siloed Products to Connected Ecosystem: Building a Sustainable and Scala...
 
From Daily Decisions to Bottom Line: Connecting Product Work to Revenue by VP...
From Daily Decisions to Bottom Line: Connecting Product Work to Revenue by VP...From Daily Decisions to Bottom Line: Connecting Product Work to Revenue by VP...
From Daily Decisions to Bottom Line: Connecting Product Work to Revenue by VP...
 
"Impact of front-end architecture on development cost", Viktor Turskyi
"Impact of front-end architecture on development cost", Viktor Turskyi"Impact of front-end architecture on development cost", Viktor Turskyi
"Impact of front-end architecture on development cost", Viktor Turskyi
 
De-mystifying Zero to One: Design Informed Techniques for Greenfield Innovati...
De-mystifying Zero to One: Design Informed Techniques for Greenfield Innovati...De-mystifying Zero to One: Design Informed Techniques for Greenfield Innovati...
De-mystifying Zero to One: Design Informed Techniques for Greenfield Innovati...
 
Salesforce Adoption – Metrics, Methods, and Motivation, Antone Kom
Salesforce Adoption – Metrics, Methods, and Motivation, Antone KomSalesforce Adoption – Metrics, Methods, and Motivation, Antone Kom
Salesforce Adoption – Metrics, Methods, and Motivation, Antone Kom
 
Connector Corner: Automate dynamic content and events by pushing a button
Connector Corner: Automate dynamic content and events by pushing a buttonConnector Corner: Automate dynamic content and events by pushing a button
Connector Corner: Automate dynamic content and events by pushing a button
 
Behind the Scenes From the Manager's Chair: Decoding the Secrets of Successfu...
Behind the Scenes From the Manager's Chair: Decoding the Secrets of Successfu...Behind the Scenes From the Manager's Chair: Decoding the Secrets of Successfu...
Behind the Scenes From the Manager's Chair: Decoding the Secrets of Successfu...
 
Slack (or Teams) Automation for Bonterra Impact Management (fka Social Soluti...
Slack (or Teams) Automation for Bonterra Impact Management (fka Social Soluti...Slack (or Teams) Automation for Bonterra Impact Management (fka Social Soluti...
Slack (or Teams) Automation for Bonterra Impact Management (fka Social Soluti...
 
Search and Society: Reimagining Information Access for Radical Futures
Search and Society: Reimagining Information Access for Radical FuturesSearch and Society: Reimagining Information Access for Radical Futures
Search and Society: Reimagining Information Access for Radical Futures
 
AI for Every Business: Unlocking Your Product's Universal Potential by VP of ...
AI for Every Business: Unlocking Your Product's Universal Potential by VP of ...AI for Every Business: Unlocking Your Product's Universal Potential by VP of ...
AI for Every Business: Unlocking Your Product's Universal Potential by VP of ...
 
AI revolution and Salesforce, Jiří Karpíšek
AI revolution and Salesforce, Jiří KarpíšekAI revolution and Salesforce, Jiří Karpíšek
AI revolution and Salesforce, Jiří Karpíšek
 
Designing Great Products: The Power of Design and Leadership by Chief Designe...
Designing Great Products: The Power of Design and Leadership by Chief Designe...Designing Great Products: The Power of Design and Leadership by Chief Designe...
Designing Great Products: The Power of Design and Leadership by Chief Designe...
 
Integrating Telephony Systems with Salesforce: Insights and Considerations, B...
Integrating Telephony Systems with Salesforce: Insights and Considerations, B...Integrating Telephony Systems with Salesforce: Insights and Considerations, B...
Integrating Telephony Systems with Salesforce: Insights and Considerations, B...
 
ODC, Data Fabric and Architecture User Group
ODC, Data Fabric and Architecture User GroupODC, Data Fabric and Architecture User Group
ODC, Data Fabric and Architecture User Group
 
IESVE for Early Stage Design and Planning
IESVE for Early Stage Design and PlanningIESVE for Early Stage Design and Planning
IESVE for Early Stage Design and Planning
 
IOS-PENTESTING-BEGINNERS-PRACTICAL-GUIDE-.pptx
IOS-PENTESTING-BEGINNERS-PRACTICAL-GUIDE-.pptxIOS-PENTESTING-BEGINNERS-PRACTICAL-GUIDE-.pptx
IOS-PENTESTING-BEGINNERS-PRACTICAL-GUIDE-.pptx
 
Introduction to Open Source RAG and RAG Evaluation
Introduction to Open Source RAG and RAG EvaluationIntroduction to Open Source RAG and RAG Evaluation
Introduction to Open Source RAG and RAG Evaluation
 

QoE- and Energy-aware Content Consumption for HTTP Adaptive Streaming - Poster

  • 1. ABSTRACT Video streaming services account for the majority of today’s traffic on the Internet and this share is expected to continue growing. Given this broad utilization, research in HTTP Adaptive Streaming (HAS) is recently moving towards energy-aware approaches to reduce the energy consumption of the devices involved in the streaming process. On the other side, the perception of quality delivered to the user plays an important role, and the advent of changed the way quality is perceived, towards the Quality of Experience (QoE) of the user. The scope of this doctoral study is within the end-users domain, referred to as the player environment, including video content consumption and interactivity. This thesis aims to investigate and develop different techniques to increase the delivered QoE to the users and minimize the energy consumption of the end devices. NETWORK PARADIGMS How to exploit features of future/emerging network paradigms/protocols to improve QoE? QoE- and Energy-aware Content Consumption for HAS AUTHOR Daniele Lorenzi AFFILIATIONS Christian Doppler Laboratory ATHENA Alpen-Adria-Universitat Klagenfurt, Klagenfurt, Austria ACKNOWLEDGMENT The financial support of the Austrian Federal Ministry for Digital and Economic Af- fairs, the National Foundation for Research, Technology and Development, and the Christian Doppler Research Association, is gratefully acknowledged. Christian Doppler Laboratory ATHENA: https://athena.itec.aau.at/. CONTACT INFORMATION Daniele Lorenzi, M.Sc. | daniele.lorenzi@aau.at - https://athena.itec.aau.at/2023/03/qoe-and-energy-aware-content- consumption-for-http-adaptive-streaming/ [1] M. Nguyen, et. al. (2020) “H2BR: An HTTP/2-based Retransmission Technique to Improve the QoE of Adaptive Video Streaming”. In Proceedings of the 25th Packet Video Workshop. 1–7. [2] Perna, Gianluca et. al. (2022). “A first look at HTTP/3 adoption and performance”. Computer Communications 187, 115–124. [3] M. Nguyen, and D. Lorenzi, et. al. (2022). DoFP+: An HTTP/3-Based Adaptive Bitrate Approach Using Retransmission Techniques. IEEE Access 10, 109565–109579. HTTP/2 retransmission techniques [1] HTTP/3 in default mode [2] State-of-the-art: HTTP/3 features' performance analysis [3] HTTP/3 features for request next and improve buffered segments [3] Research gaps: MULTI-CODEC How to efficiently enable multi-codec video streaming to improve QoE? [4] Zabrovskiy, Anatoliy, et. al. (2018) “A Practical Evaluation of Video Codecs for Large-Scale HTTP Adaptive Streaming Services.” In 2018 25th IEEE International Conference on Image Processing (ICIP). 998–1002. [5] Reznik, Yuriy A., et. al. (2019) “Optimal Multi-Codec Adaptive Bitrate Streaming”. In 2019 IEEE International Conference on Multimedia Expo Workshops (ICMEW). 348–353. [6] D. Lorenzi, et. al. "MCOM-Live: A Multi-Codec Optimization Model at the Edge for Live Streaming", In 29th International Conference on Multimedia Modeling (MMM), Bergen, Norway, 2023. Video codecs’ performances analysis [4] Multi-codec bit. ladder optimization [5] State-of-the-art: Content analysis for multiple codecs and video sequences (different complexity) Dynamic switching over time [6] Research gaps: ENERGY-AWARE How to design ABR techniques to increase the QoE and reduce the energy consumption of the end-device? [7] Varghese, Benoy, et. al. (2017) “e-DASH: Modelling an energy-aware DASH player”. In IEEE 18th International Symposium on A World of Wireless, Mobile and Multimedia Networks (WoWMoM). [8] M. Uitto, et. al. (2018) “Towards Energy-Efficient Adaptive Mpeg-Dash Streaming Using Hevc”. In IEEE International Conference on Multimedia Expo Workshops (ICMEW). Segment selection based on bitrate and video brightness [7] Encode and deliver HEVC segments [8] State-of-the-art: Energy consumption factors analysis Video relighting techniques to reduce display brightness Energy-aware ABR selection Research gaps: ML-ENHANCEMENT How to exploit machine learning techniques on the client to enhance video content and improve the QoE? [9] Robin Rombach et al. “High-Resolution Image Synthesis with Latent Diffusion Models”. In: Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition (CVPR). 2022. [10] Minh Nguyen, and Ekrem Çetinkaya, et. al. (2022) “Super-Resolution Based Bitrate Adaptation for HTTP Adaptive Streaming for Mobile Devices”. In Proceedings of the 1st Mile-High Video Conference (Denver, Colorado) (MHV ’22). Association for Computing Machinery, New York, NY, USA, 70–76. LDMs for T2I synthesis, in-paint modification, and super-resolution [9] SR in HAS for mobile devices [10] State-of-the-art: ML-based video frame interpolation for HAS Real-time SR on client/mobile phones (HAS pipeline, RoI-based) Research gaps: