Event-Based Photometric Bundle Adjustment

IF 18.6
Shuang Guo;Guillermo Gallego
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Abstract

We tackle the problem of bundle adjustment (i.e., simultaneous refinement of camera poses and scene map) for a purely rotating event camera. Starting from first principles, we formulate the problem as a classical non-linear least squares optimization. The photometric error is defined using the event generation model directly in the camera rotations and the semi-dense scene brightness that triggers the events. We leverage the sparsity of event data to design a tractable Levenberg-Marquardt solver that handles the very large number of variables involved. To the best of our knowledge, our method, which we call Event-based Photometric Bundle Adjustment (EPBA), is the first event-only photometric bundle adjustment method that works on the brightness map directly and exploits the space-time characteristics of event data, without having to convert events into image-like representations. Comprehensive experiments on both synthetic and real-world datasets demonstrate EPBA’s effectiveness in decreasing the photometric error (by up to 90%), yielding results of unparalleled quality. The refined maps reveal details that were hidden using prior state-of-the-art rotation-only estimation methods. The experiments on modern high-resolution event cameras show the applicability of EPBA to panoramic imaging in various scenarios (without map initialization, at multiple resolutions, and in combination with other methods, such as IMU dead reckoning or previous event-based rotation estimation methods). We make the source code publicly available.
基于事件的光度束调整
我们解决了一个纯旋转事件相机的束调整问题(即,同时改进相机姿势和场景地图)。从第一性原理出发,将该问题表述为经典的非线性最小二乘优化问题。光度误差是直接使用相机旋转中的事件生成模型和触发事件的半密集场景亮度来定义的。我们利用事件数据的稀疏性来设计一个易于处理的Levenberg-Marquardt求解器,它可以处理涉及的大量变量。据我们所知,我们的方法,我们称之为基于事件的光度束调整(EPBA),是第一个只针对事件的光度束调整方法,它直接作用于亮度图,利用事件数据的时空特征,而不必将事件转换为类似图像的表示。在合成数据集和真实数据集上的综合实验表明,EPBA在降低光度误差(高达90%)方面的有效性,产生了无与伦比的质量结果。精细的地图揭示了先前使用最先进的旋转估计方法隐藏的细节。在现代高分辨率事件相机上的实验表明,EPBA适用于各种场景的全景成像(没有地图初始化,在多种分辨率下,以及与其他方法(如IMU航位推算或先前基于事件的旋转估计方法)相结合)。我们公开源代码。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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