ITLGMMSPJan 1, 2024

Point Cloud in the Air

arXiv:2401.00658v111 citationsh-index: 21IEEE Commun Mag
Originality Synthesis-oriented
AI Analysis

This addresses the need for reliable and low-latency wireless transmission of 3D spatial data, but it appears incremental as it builds on existing solutions with new frameworks.

The paper tackles the problem of efficiently transmitting point clouds over wireless networks for applications like autonomous vehicles and augmented reality, proposing four solution frameworks to address challenges such as spectrum congestion and irregular data structures.

Acquisition and processing of point clouds (PCs) is a crucial enabler for many emerging applications reliant on 3D spatial data, such as robot navigation, autonomous vehicles, and augmented reality. In most scenarios, PCs acquired by remote sensors must be transmitted to an edge server for fusion, segmentation, or inference. Wireless transmission of PCs not only puts on increased burden on the already congested wireless spectrum, but also confronts a unique set of challenges arising from the irregular and unstructured nature of PCs. In this paper, we meticulously delineate these challenges and offer a comprehensive examination of existing solutions while candidly acknowledging their inherent limitations. In response to these intricacies, we proffer four pragmatic solution frameworks, spanning advanced techniques, hybrid schemes, and distributed data aggregation approaches. In doing so, our goal is to chart a path toward efficient, reliable, and low-latency wireless PC transmission.

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