Event cameras are rapidly emerging as powerful vision sensors for 3D reconstruction, uniquely capable of asynchronously capturing per-pixel brightness changes. Compared to traditional frame-based cameras, event cameras produce sparse yet temporally dense data streams, enabling robust and accurate 3D reconstruction even under challenging conditions such as high-speed motion, low illumination, and extreme dynamic range scenarios. These capabilities offer substantial promise for transformative applications across various fields, including autonomous driving, robotics, aerial navigation, and immersive virtual reality. In this survey, we present the first comprehensive review exclusively dedicated to event-based 3D reconstruction. Existing approaches are systematically categorised based on input modality into stereo, monocular, and multimodal systems, and further classified according to reconstruction methodologies, including geometry-based techniques, deep learning approaches, and neural rendering techniques such as Neural Radiance Fields (NeRF) and 3D Gaussian Splatting (3DGS). Within each category, methods are chronologically organised to highlight the evolution of key concepts and advancements. Furthermore, we provide a detailed summary of publicly available datasets specifically suited to event-based reconstruction tasks. Finally, we discuss significant open challenges in dataset availability, standardised evaluation, effective representation, and dynamic scene reconstruction, outlining insightful directions for future research. This survey aims to serve as an essential reference and provides a clear and motivating roadmap toward advancing the state of the art in event-driven 3D reconstruction.
翻译:事件相机作为一种能够异步捕获像素级亮度变化的视觉传感器,正迅速成为三维重建领域的重要工具。与传统帧式相机相比,事件相机生成稀疏但时间密度高的数据流,即使在高速运动、低光照和极端动态范围等挑战性条件下,也能实现鲁棒且精确的三维重建。这些能力为自动驾驶、机器人、空中导航和沉浸式虚拟现实等多个领域带来了变革性应用的巨大潜力。本文首次对基于事件的三维重建方法进行了全面综述。现有方法根据输入模态被系统性地分为立体、单目和多模态系统,并进一步按照重建方法进行分类,包括基于几何的技术、深度学习方法以及神经渲染技术,如神经辐射场(NeRF)和三维高斯溅射(3DGS)。在每个类别中,方法按时间顺序组织,以突显关键概念和进展的演变。此外,我们详细总结了专门适用于基于事件的重建任务的公开数据集。最后,我们讨论了数据集可用性、标准化评估、有效表示以及动态场景重建等方面存在的重大开放挑战,并指出了未来研究的深刻方向。本综述旨在作为重要参考,并为推动事件驱动三维重建技术的前沿发展提供清晰且具有启发性的路线图。