CVOct 15, 2025

STT-GS: Sample-Then-Transmit Edge Gaussian Splatting with Joint Client Selection and Power Control

arXiv:2510.13186v12 citationsh-index: 10IEEE Trans Cogn Commun Netw
Originality Incremental advance
AI Analysis

This work addresses resource management for scene reconstruction in edge computing, offering an incremental improvement over traditional methods by focusing on GS quality.

The paper tackles the problem of maximizing scene reconstruction quality in edge Gaussian splatting by formulating a GS-oriented objective function and proposing a sample-then-transmit strategy with joint client selection and power control. The result shows accurate prediction with low sampling ratios (e.g., 10%) and outperforms existing benchmarks on real-world datasets.

Edge Gaussian splatting (EGS), which aggregates data from distributed clients and trains a global GS model at the edge server, is an emerging paradigm for scene reconstruction. Unlike traditional edge resource management methods that emphasize communication throughput or general-purpose learning performance, EGS explicitly aims to maximize the GS qualities, rendering existing approaches inapplicable. To address this problem, this paper formulates a novel GS-oriented objective function that distinguishes the heterogeneous view contributions of different clients. However, evaluating this function in turn requires clients' images, leading to a causality dilemma. To this end, this paper further proposes a sample-then-transmit EGS (or STT-GS for short) strategy, which first samples a subset of images as pilot data from each client for loss prediction. Based on the first-stage evaluation, communication resources are then prioritized towards more valuable clients. To achieve efficient sampling, a feature-domain clustering (FDC) scheme is proposed to select the most representative data and pilot transmission time minimization (PTTM) is adopted to reduce the pilot overhead.Subsequently, we develop a joint client selection and power control (JCSPC) framework to maximize the GS-oriented function under communication resource constraints. Despite the nonconvexity of the problem, we propose a low-complexity efficient solution based on the penalty alternating majorization minimization (PAMM) algorithm. Experiments unveil that the proposed scheme significantly outperforms existing benchmarks on real-world datasets. It is found that the GS-oriented objective can be accurately predicted with low sampling ratios (e.g.,10%), and our method achieves an excellent tradeoff between view contributions and communication costs.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes