IEEE Trans Pattern Anal Mach Intell. 2022 Jul;44(7):3479-3495. doi: 10.1109/TPAMI.2021.3053243. Epub 2022 Jun 3.
Event cameras are bio-inspired sensors that perform well in challenging illumination conditions and have high temporal resolution. However, their concept is fundamentally different from traditional frame-based cameras. The pixels of an event camera operate independently and asynchronously. They measure changes of the logarithmic brightness and return them in the highly discretised form of time-stamped events indicating a relative change of a certain quantity since the last event. New models and algorithms are needed to process this kind of measurements. The present work looks at several motion estimation problems with event cameras. The flow of the events is modelled by a general homographic warping in a space-time volume, and the objective is formulated as a maximisation of contrast within the image of warped events. Our core contribution consists of deriving globally optimal solutions to these generally non-convex problems, which removes the dependency on a good initial guess plaguing existing methods. Our methods rely on branch-and-bound optimisation and employ novel and efficient, recursive upper and lower bounds derived for six different contrast estimation functions. The practical validity of our approach is demonstrated by a successful application to three different event camera motion estimation problems.
事件相机是一种受生物启发的传感器,在具有挑战性的照明条件下性能良好,具有高时间分辨率。然而,它们的概念与传统的基于帧的相机有根本的不同。事件相机的像素独立且异步运行。它们测量对数亮度的变化,并以时间戳事件的高度离散形式返回,表示自上次事件以来某个数量的相对变化。需要新的模型和算法来处理这种测量。本工作研究了事件相机的几个运动估计问题。事件的流通过时空体中的一般单应性变形建模,目标是在变形事件的图像中最大化对比度。我们的核心贡献在于为这些通常非凸的问题推导出全局最优解,从而消除了困扰现有方法的良好初始猜测的依赖性。我们的方法依赖于分支定界优化,并采用为六个不同对比度估计函数推导的新颖且高效的递归上界和下界。我们的方法通过成功应用于三个不同的事件相机运动估计问题证明了其实用性。