Knowledge-Based Ultra-Low-Latency Semantic Communications for Robotic Edge Intelligence
Qunsong Zeng, Zhanwei Wang, You Zhou, Hai Wu, Lin Yang, Kaibin Huang

TL;DR
This paper introduces a knowledge-based semantic communication framework for robotic edge systems in 6G networks, focusing on ultra-low-latency transmission and robust knowledge-guided task execution.
Contribution
It proposes a novel protocol and transmission approach leveraging classifier robustness to achieve ultra-low-latency communication in robotic edge intelligence.
Findings
Achieves significant latency reduction in semantic communications.
Demonstrates robustness of the approach with real datasets.
Provides system requirements for ultra-low-latency feature transmission.
Abstract
The 6G mobile networks will feature the widespread deployment of AI algorithms at the network edge, which provides a platform for supporting robotic edge intelligence systems. In such a system, a large-scale knowledge graph (KG) is operated at an edge server as a "remote brain" to guide remote robots on environmental exploration or task execution. In this paper, we present a new air-interface framework targeting the said systems, called knowledge-based robotic semantic communications (SemCom), which consists of a protocol and relevant transmission techniques. First, the proposed robotic SemCom protocol defines a sequence of system operations for executing a given robotic task. They include identification of all task-relevant knowledge paths (KPs) on the KG, semantic matching between KG and object classifier, and uploading of robot's observations for objects recognition and feasible KP…
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Taxonomy
TopicsRobotics and Automated Systems · Cognitive Computing and Networks · Brain Tumor Detection and Classification
