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[FS_6G_MED] 2D Video Codecs in the 6G Media Study |
Orange, Qualcomm, Dolby |
No summary available
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No proposals available
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TR updates |
Nokia |
No summary available
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No proposals available
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LLM based services |
Nokia |
No summary available
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No proposals available
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LS response to RAN-2 |
Nokia |
No summary available
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No proposals available
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[FS_6G_MED] Use cases |
Nokia |
No summary available
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No proposals available
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(pdf)
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Draft TR 26.870 FS_6G_MED v0.2.2 |
VODAFONE Group Plc |
TR 26.870 V0.2.12 – Study on Media Aspects for 6G System (Release 20)
Overview
This is an early-stage Technical Report (SA4 study item FS_6G_MED) identifying media-related opportunities, gaps, and requirements for 6G. It is not yet approved and has no normative status. Conclusions will feed future detailed studies and normative work.
Scope and Alignment
- Aligned with SA1 service requirements (TR 22.870), SA2 architecture study (TR 23.801-01), and existing SA4 5G media specs (TS 26.501, TS 26.506, TS 26.511, TS 26.512, TS 26.114, etc.)
- Existing 5G media delivery architecture (streaming and real-time communication) is the baseline starting point
Five Work Topics Defined (all still under development)
1. WT#1 – Media Delivery Architecture: Harmonized 6G media delivery architecture building on TS 26.501/26.506; key issues include whether streaming and real-time communication architectures should be harmonized or separated, and which content delivery protocols to adopt/extend for 6G
2. WT#2 – 6G Media: Immersive/AI media trends, traffic characterization, QoE metrics, multimodal formats, AI-related media services (agents, LLMs, diffusion models), and 2D video codec updates (H.264/HEVC successors)
3. WT#3 – Media Aspects Related to SA2 Topics: Placeholder; content TBD
4. WT#4 – Media for Ubiquitous Access: Media over NTN and low-bitrate/low-power scenarios; references ULBC study (TR 26.940); key issues include NTN bitrate/latency/loss ranges and performance of existing services under such conditions
5. WT#5 – Trusted and Private Communication for Media: Placeholder; content TBD
Key Technical Observations (Annex A, partially agreed)
- AI-enabled applications generate heterogeneous, multimodal, uplink-heavy, bursty traffic with diverse latency sensitivity
- Current QoS frameworks may lack granularity and context-awareness for AI-driven traffic
- Multi-device AI service scenarios are not well addressed by existing UE-centric assumptions
- Embodied AI (robots, UAVs) may require 20–100 Mbit/s uplink with low latency and error resilience
- Temporal synchronization across modalities (video, audio, haptics, AI data) is a key challenge
Tooling Contributions (Annexes B & C)
- Network Emulator (Annex B): Linux tc/netem-based emulator with YAML-configured profiles; includes 5QI-derived profiles (5QI 1/2/7/80), scenario profiles (ideal 6G, 5G urban, satellite, cell edge, congested), and advanced impairment models (Gilbert-Elliott loss, HTB shaping). Hosted at GitHub (5G-MAG/6G-Testbed)
- AI Traffic Characterization Testbed (Annex C): End-to-end orchestration framework for AI service traffic measurement; supports OpenAI/Gemini/DeepSeek/vLLM providers; captures L3/L4 (pcap) and L7 (mitmproxy); logs TTFT, TTLT, token rate, burstiness, UL/DL bytes to SQLite. Use of TTFT/TTLT for AI traffic evaluation is FFS.
Status
Document is v0.2.12; most clause content remains under editor's notes. Findings (clause 7) and recommendations (clause 8) are empty pending completion of work topics.
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This document does not contain any explicitly marked proposals (i.e., text sections labeled "Proposal", "Proposal X:", "Proposal X.", etc.). The document is a 3GPP Technical Report (TR 26.870) in early draft stage, containing editor's notes, work topic descriptions, use cases, observations, and annexes, but no formal proposals have been included in the text.
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[FS_6G_MED] Planning AI Traffic Characteristic Inputs for other WGs |
Apple Inc. |
No summary available
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No proposals available
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[FS_6G_MED] AI Traffic Characteristic Inputs for other WGs |
Apple Inc. |
No summary available
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No proposals available
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[FS_6G_MED] Draft Reply LS to RAN2 |
QUALCOMM JAPAN LLC. |
No summary available
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No proposals available
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[FS_6G_MED] AI traffic evaluation results |
QUALCOMM JAPAN LLC. |
No summary available
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No proposals available
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[FS_6G_MED] Work Plan for Media Aspects for 6G System |
Qualcomm Incorporated (Rapporteur) |
No summary available
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No proposals available
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[FS_6G_MED] Use Case Template for WT#5 |
Qualcomm Germany |
No summary available
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No proposals available
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[FS_6G_MED] AMD Phase 2 topics possible relevant for 6G |
Qualcomm Germany |
No summary available
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No proposals available
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[FS_6G_MED] Updates to WT#4 |
Qualcomm Germany |
No summary available
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No proposals available
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[FS_6G_MED] Proposed Updates to TR: General |
Qualcomm Germany |
No summary available
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No proposals available
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[FS_6G_MED] Updates to WT#3 |
Qualcomm Germany |
No summary available
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No proposals available
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[FS_6G_MED] New work-subtopic: Traffic Characteristics in TR 26.925 |
Qualcomm Korea |
No summary available
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No proposals available
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[FS_6G_MED] AI traffic definitions |
QUALCOMM JAPAN LLC. |
No summary available
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No proposals available
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(pdf)
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pCR [FS_6G_MED] Considerations on Work Topic 1 update on 6.2 for Network-Assisted Media Processing for Video Understanding and Enhancement |
Huawei Device Co., Ltd |
pCR Summary: S4-260561 – Network-Assisted Media Processing in TR 26.870
Source: Huawei | Spec: TR 26.870 | Meeting: SA4#135-bis-e
What is Being Proposed
This pCR proposes additions to TR 26.870 (FS_6G_MED) to introduce network-assisted media processing as a study topic within the 6G media delivery architecture, motivated by the computational gap between device capabilities and AI-based video processing demands.
Technical Rationale
- Video LLMs (e.g., Qwen3-VL-8B, InternVL3.5) require 270–1950 TFLOPS per image at 1080p; current mobile devices offer ~40 TFLOPS — making on-device video understanding infeasible
- Video pre-processing tasks (deblurring via DeblurGAN/MPRNet, super-resolution via ESRGAN/SwinIR, low-light enhancement via Zero-DCE/RetinexNet) require 0.5–3.5 TFLOPS/frame — also challenging for lightweight devices (AR glasses, etc.)
- Motivation drawn from SA1 TR 22.870 use cases: AI-based video analysis (6.19), mobile embodied AI offloading (6.28), AI for disability support (6.38), XR rendering offload (9.4)
Proposed Changes to TR 26.870
- Clause 6.2.1.1 – Adds "network-assisted media processing for compute-intensive tasks" to the list of architectural aspects to be studied
- New Clause 6.2.1.X – Introduces "Media Functional Entities for Network-Assisted Processing," covering: network-side video understanding (analysis, scene recognition, object detection), network-side video pre-processing (deblurring, super-resolution, low-light enhancement), and dynamic offloading decisions based on device/network conditions
- Clause 6.2.1.5 (Key Issues) – Adds a new key issue: how Media Functional Entities can be enhanced to support network-assisted media processing for resource-constrained devices
- New Annex A.2.x – Documents the SA1 use cases and observations/proposals as study background for multi-modal data processing
Proposals/Conclusions
- Observation 1: Network side should undertake compute-intensive video understanding (videoLLMs) on behalf of devices
- Observation 2: Network side should handle video pre-processing for lightweight devices
- Proposal 1: Explore architectural impacts of introducing videoLLMs into the media delivery architecture
- Proposal 2: Explore enhancements to Media Functional Entities to support video pre-processing capabilities
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Proposal 1: Explore the potential impacts on the media delivery architecture to introducing the videoLLMs.
Proposal 2: Explore the potential enhancement to the Media Functional Entities to support the video pre-processing capabilities (e.g. deblurring, super-resolution, low-light enhancement and etc.).
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(pdf)
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pCR [FS_6G_MED] Considerations on Work Topic 1 update on 6.2.1.5 for architecture harmonization |
Huawei Device Co., Ltd |
pCR Summary: TR 26.870 – Key Issue 1 Update on Media Delivery Architecture Harmonization
Source: Huawei | Spec: TR 26.870 | Meeting: SA4#135-bis-e
What is being proposed:
- A partial CR (pCR) to update Section 6.2.1.5 of TR 26.870 (FS_6G_MED study item), adding discussion directions under Key Issue 1.
Changes made:
- Two study questions are added to Section 6.2.1.5:
1. Whether the media delivery architecture for streaming and real-time communication services should be harmonized or separated, and what the trade-offs are between shared components vs. service-specific optimization.
2. Which existing and emerging content delivery protocols map to the 5G Media Delivery architecture, and what extensions/simplifications are applicable for 6G Media Delivery.
Context:
- The starting point for discussion is the existing 5G Media Delivery architecture.
- The study aims to address a diverse set of media applications and traffic patterns under the 6G media delivery framework.
Nature of change: Editorial/structural — adds scoping questions to guide further study; no normative technical decisions are made.
Action requested: Approval.
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Proposal It is proposed to agree the following changes to 3GPP TR 26.870
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pCR [FS_6G_MED]Considerations on Work Topic 1 update on 6.2 for Multi-Modal Intent Understanding |
Huawei Device Co., Ltd |
No summary available
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No proposals available
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[FS_6G_MED] correction on network profiles for evaluation in AI traffic characteristics testbed |
Huawei, HiSilicon |
No summary available
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No proposals available
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[FS_6G_MED] categorization of metrics in AI traffic characteristics testbed |
Huawei, HiSiliicon |
No summary available
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No proposals available
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[FS-6G_MED] documentation of categorized metrics collected in AI testbed in TR 26.870 |
Huawei, HiSilicon |
No summary available
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No proposals available
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[FS_6G_MED] proposal for extension of burstiness related metrics in AI testbed |
Huawei, HiSilicon |
No summary available
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No proposals available
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[FS_6G_MED] discussion on AI traffic characteristics testing setups with local and remote servers |
Huawei, HiSilicon |
No summary available
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No proposals available
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[FS_6G_MED] documentation of procedures for testing in each scenario in AI testbed |
Huawei, HiSilicon |
No summary available
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No proposals available
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Embodied AI use case and related requirements |
Huawei, HiSilicon |
No summary available
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No proposals available
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[FS_6G_MED] demonstration of real-time VLM based video analysis in AI testbed with local server |
Huawei, HiSilicon |
No summary available
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No proposals available
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