E2EGS: Event-to-Edge Gaussian Splatting for Pose-Free 3D Reconstruction
Yunsoo Kim, Changki Sung, Dasol Hong, Hyun Myung

TL;DR
E2EGS introduces a pose-free, event-based 3D reconstruction method that leverages edge information from event streams to achieve high-quality results without requiring known camera poses.
Contribution
The paper proposes a novel pose-free framework using event streams and edge extraction to improve 3D reconstruction and trajectory estimation in challenging conditions.
Findings
Outperforms existing methods in reconstruction quality
Achieves accurate trajectory estimation without known poses
Effective in real-world dynamic scenes
Abstract
The emergence of neural radiance fields (NeRF) and 3D Gaussian splatting (3DGS) has advanced novel view synthesis (NVS). These methods, however, require high-quality RGB inputs and accurate corresponding poses, limiting robustness under real-world conditions such as fast camera motion or adverse lighting. Event cameras, which capture brightness changes at each pixel with high temporal resolution and wide dynamic range, enable precise sensing of dynamic scenes and offer a promising solution. However, existing event-based NVS methods either assume known poses or rely on depth estimation models that are bounded by their initial observations, failing to generalize as the camera traverses previously unseen regions. We present E2EGS, a pose-free framework operating solely on event streams. Our key insight is that edge information provides rich structural cues essential for accurate trajectory…
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Taxonomy
TopicsAdvanced Memory and Neural Computing · Neural Networks and Reservoir Computing · Advanced Neural Network Applications
