SPLGNov 4, 2025

RIS-Assisted 3D Spherical Splatting for Object Composition Visualization using Detection Transformers

arXiv:2511.02573v2h-index: 87
AI Analysis

This addresses the problem of object visualization under occlusion or low illumination for multimedia applications, representing an incremental advance in RF-based sensing.

This work tackles 3D object reconstruction from radio-frequency sensing by combining reconfigurable intelligent surfaces with a detection transformer, achieving 79.35% accuracy in geometry approximation and material classification.

The pursuit of immersive and structurally aware multimedia experiences has intensified interest in sensing modalities that reconstruct objects beyond the limits of visible light. Conventional optical pipelines degrade under occlusion or low illumination, motivating the use of radio-frequency (RF) sensing, whose electromagnetic waves penetrate materials and encode both geometric and compositional information. Yet, uncontrolled multipath propagation restricts reconstruction accuracy. Recent advances in Programmable Wireless Environments (PWEs) mitigate this limitation by enabling software-defined manipulation of propagation through Reconfigurable Intelligent Surfaces (RISs), thereby providing controllable illumination diversity. Building on this capability, this work introduces a PWE-driven RF framework for three-dimensional object reconstruction using material-aware spherical primitives. The proposed approach combines RIS-enabled field synthesis with a Detection Transformer (DETR) that infers spatial and material parameters directly from extracted RF features. Simulation results confirm the framework's ability to approximate object geometries and classify material composition with an overall accuracy of 79.35%, marking an initial step toward programmable and physically grounded RF-based 3D object composition visualization.

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