A Semantic Communication System for Real-time 3D Reconstruction Tasks
Journal:
arXiv
Published Date:
Dec 2, 2024
Abstract
3D semantic maps have played an increasingly important role in high-precision
robot localization and scene understanding. However, real-time construction of
semantic maps requires mobile edge devices with extremely high computing power,
which are expensive and limit the widespread application of semantic mapping.
In order to address this limitation, inspired by cloud-edge collaborative
computing and the high transmission efficiency of semantic communication, this
paper proposes a method to achieve real-time semantic mapping tasks with
limited-resource mobile devices. Specifically, we design an encoding-decoding
semantic communication framework for real-time semantic mapping tasks under
limited-resource situations. In addition, considering the impact of different
channel conditions on communication, this paper designs a module based on the
attention mechanism to achieve stable data transmission under various channel
conditions. In terms of simulation experiments, based on the TUM dataset, it
was verified that the system has an error of less than 0.1% compared to the
groundtruth in mapping and localization accuracy and is superior to some novel
semantic communication algorithms in real-time performance and channel
adaptation. Besides, we implement a prototype system to verify the
effectiveness of the proposed framework and designed module in real indoor
scenarios. The results show that our system can complete real-time semantic
mapping tasks for common indoor objects (chairs, computers, people, etc.) with
a limited-resource device, and the mapping update time is less than 1 second.