IVCVJun 26, 2025

PhotonSplat: 3D Scene Reconstruction and Colorization from SPAD Sensors

arXiv:2506.21680v1h-index: 8ICCP
Originality Incremental advance
AI Analysis

This addresses the problem of 3D reconstruction under motion blur for applications like segmentation and editing, but it is incremental as it adapts neural rendering to a new sensor type.

The paper tackles 3D scene reconstruction from SPAD sensor binary images, which are noisy but high-speed, by introducing PhotonSplat to handle noise and blur trade-offs, achieving improved reconstruction in motion-blurred scenarios.

Advances in 3D reconstruction using neural rendering have enabled high-quality 3D capture. However, they often fail when the input imagery is corrupted by motion blur, due to fast motion of the camera or the objects in the scene. This work advances neural rendering techniques in such scenarios by using single-photon avalanche diode (SPAD) arrays, an emerging sensing technology capable of sensing images at extremely high speeds. However, the use of SPADs presents its own set of unique challenges in the form of binary images, that are driven by stochastic photon arrivals. To address this, we introduce PhotonSplat, a framework designed to reconstruct 3D scenes directly from SPAD binary images, effectively navigating the noise vs. blur trade-off. Our approach incorporates a novel 3D spatial filtering technique to reduce noise in the renderings. The framework also supports both no-reference using generative priors and reference-based colorization from a single blurry image, enabling downstream applications such as segmentation, object detection and appearance editing tasks. Additionally, we extend our method to incorporate dynamic scene representations, making it suitable for scenes with moving objects. We further contribute PhotonScenes, a real-world multi-view dataset captured with the SPAD sensors.

Foundations

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

Your Notes