The 4th Workshop on Emerging Multimedia Systems (EMS) 2026

The 4th Workshop on Emerging Multimedia Systems (EMS) 2026

 EMS 2023  |  EMS 2024  | EMS 2025

Multimedia has played a significant role in driving Internet usage and has led to a range of technological advancements, such as content delivery networks, compression algorithms, and streaming protocols. With emerging applications, including (but not limited to) augmented, virtual, and extended reality (XR), real-time telepresence, AI-generated content, video analytics, and the usage of AI in multimedia systems in general, multimedia is undergoing a fundamental shift in sharing experiences online and continues to drive the future of the Internet. As these next-generation ultra-low-latency, interactive, and immersive technologies evolve, it is crucial to revisit developed techniques for new formats and representations, not only to enhance performance and interactivity but also to improve energy efficiency and maintain high Quality of Experience (QoE). This workshop will bring together experts from diverse fields, including video streaming research, source video coding, analytics, rate adaptation algorithms, networked systems, immersive media such as 3D and volumetric video streaming, AR/VR applications, as well as energy-efficient systems and QoE optimization, to exchange ideas on identifying challenges and opportunities in designing advanced networked systems for these emerging multimedia technologies (more details)

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Cross-Layer Dynamics in Live Low-Latency: A Dataset of ABR, CC, and AQM Interactions

Cross-Layer Dynamics in Live Low-Latency: A Dataset of ABR, CC, and AQM Interactions

18th International Conference on Quality of Multimedia Experience

Cardiff, UK, June 29th – July 3rd, 2026

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Md Tariqul Islam (UNICAMP, Brazil),  Farzad Tashtarian (AAU, Austria),  Christian Esteve Rothenberg (UNICAMP, Brazil), Christian Timmerer (AAU, Austria)

Low-latency video streaming, such as Low-Latency DASH (LL-DASH), requires maintaining high Quality of Experience (QoE) under varying network conditions. In LL-DASH, QoE is jointly influenced not only by Adaptive Bitrate (ABR) decisions, but also by transport-layer Congestion Control (CC) and network-layer Active Queue Management (AQM), whose interactions remain insufficiently characterized due to limited cross-layer experimentation. Therefore, we present a large-scale LL-DASH dataset comprising approximately 2,000 controlled sessions across three dash.js ABR algorithms (L2A, Dynamic, LoLP), three CC schemes (CUBIC, BBRv1, Prague) across both TCP and QUIC transport protocols, four AQM configurations (FIFO, FQ-CoDel, CAKE, DualPI2), and multiple congestion scenarios. The dataset supports QoE-aware cross-layer analysis and ABR benchmarking under diverse network configurations and is available at: https://github.com/cd-athena/ ll-dash-crosslayer-dataset

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EVLM: Intent-Driven Edge Vision Language Model for UAV-Based Power Line Inspection

EVLM: Intent-Driven Edge Vision Language Model for UAV-Based Power Line Inspection

2026 IEEE International Conference on Edge Computing and Communications (IEEE EDGE 2026)

Reza Farahani (TU Wien, Austria), Zoha Azimi (AAU, Austria), Ilir Murturi (University of Prishtina, Kosovo), Arda Goknil (SINTEF, Norway), Sagar Sen (SINTEF, Norway), Christian Timmerer (AAU, Austria), Schahram Dustdar (TU Wien, Austria)

Abstract: Inspection of critical infrastructure, such as power lines, is increasingly conducted using unmanned aerial vehicles (UAVs) that capture aerial video for subsequent human review. Although recent edge-based approaches deploy onboard object detectors to identify predefined defect classes, these pipelines remain closed-set, task-specific, and largely decoupled from operator intent and edge resource constraints. This paper introduces EVLM, an intent-driven vision-language framework for onboard UAV-based power line inspection. Given a high-level operator intent, EVLM (i) leverages lightweight histogram-based frame filtering to extract salient key frames under bounded compute budgets, (ii) executes a domain-adapted vision language model (VLM) directly on the UAV for intent-conditioned multimodal reasoning, and (iii) synthesizes structured inspection reports together with a minimal set of evidence frames, replacing continuous raw video transmission with compact semantic outputs. To align the VLM with infrastructure inspection semantics while preserving edge efficiency, we perform parameter-efficient fine-tuning using Low-Rank Adaptation (LoRA), enabling domain specialization without updating the full model parameters. We implement and fully deploy EVLM on an NVIDIA Jetson device representative of UAV-class onboard hardware and evaluate it using 20 publicly released power line inspection video sequences spanning 8 heterogeneous environments and 5 operational intent categories. Experimental results show a data reduction of 94.8 %, with transmitted data decreasing from 485 kB to 25 kB per 4 s segment, corresponding to 72.75 MB versus 3.75 MB over a 10 min inspection mission. EVLM operates feasibly on embedded hardware, maintaining moderate CPU/GPU utilization and bounded power consumption (5.6 W), while producing interpretable, intent-aligned inspection outputs with richer semantic insights than detection-centric baselines.

 

 

 

 

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Hadi Amirpour has been elevated to IEEE Senior Member

Assistant Prof. Dr. Hadi Amirpour has been elevated to IEEE Senior Member in recognition of his contributions to multimedia streaming systems.

IEEE Senior Member is the highest professional grade for which an IEEE member can apply. This distinction requires extensive professional experience and demonstrated accomplishments that reflect technical expertise, leadership, and professional maturity. Fewer than 10% of IEEE’s nearly half a million members worldwide have achieved this honor.

 

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Christian Timmerer Named ACM Senior Member

The Association for Computing Machinery (ACM) has recognized Christian Timmerer as a Senior Member, honoring his professional achievements and contributions to the field of computing.

The ACM Senior Member designation is awarded to individuals who have demonstrated significant performance and commitment within the computing profession. This distinction highlights Christian Timmerer’s ongoing engagement with the research community and his impact on advancing the discipline.

As part of this recognition, he will receive an official ACM Senior Member certificate and pin, and his name will be listed on the ACM Senior Member award page.

Christian Timmerer also expressed his sincere appreciation to colleagues, collaborators, and supporters who contributed throughout the nomination process, emphasizing that this recognition reflects a shared effort within the community.

This honor underscores both his individual accomplishments and his continued dedication to excellence in computing research and practice.

 

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Energy and Compression Efficiency in Large-Scale Video Streaming

Energy and Compression Efficiency in Large-Scale Video Streaming

IEEE International Conference on Image Processing (ICIP 2026)

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Mohammad Ghasempour (AAU, Austria), Hadi Amirpour (AAU, Austria),  and Christian Timmerer (AAU, Austria)

Abstract: The rise in large-scale video streaming has led to increased energy demands across the encoding, transmission, and decoding pipeline. While energy consumption in video streaming has been widely studied, encoding decisions are typically made without explicitly accounting for expected content demand. As a result, the impact of view count on energy consumption and compression efficiency remains largely unexplored. This limits the ability to make informed and efficient encoding decisions in real-world streaming scenarios. In this paper, we propose EcoEncode, an analytical framework to evaluate the impact of view count on codec-level encoding decisions and the resulting trade-offs between energy consumption and compression efficiency. We further show that these decisions depend on video content characteristics and encoding configurations. Based on our findings, we provide practical insights to guide the selection of codecs and presets. Experimental results show that view count is a key factor in codec-level decisions. For low-popularity videos, EcoEncode achieves up to 99% energy savings with only 1-4 VMAF points of quality loss. Across all scenarios, the selected configurations lie on or near the Pareto frontier, and EcoEncode improves quality by up to 14 VMAF points over the least energy-consuming configuration.

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How Video Streaming Works: Insights from FÄKT (German Video)

As part of the “FÄKT” initiative by the Austrian Academy of Sciences, which produces science videos for audiences aged 10 to 14, a recent episode highlights insights into the world of video streaming: Christian Timmerer, head of the Christian Doppler Laboratory for Adaptive Streaming over HTTP and Emerging Network-based Multimedia Services at the University of Klagenfurt and a two-time Technology & Engineering Emmy® Award recipient, explains how video streaming works on a global scale and how it is continuously optimized.

The short video provides an accessible overview of the technologies behind modern streaming services and demonstrates how research contributes to improving the quality and efficiency of video delivery. Please note that the video is currently available in German only.

Links

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