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An Event-Based Solution to the Perspective-n-Point Problem

机译:基于事件的视角n点问题解决方案

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摘要

The goal of the Perspective-n-Point problem (PnP) is to find the relative pose between an object and a camera from a set of n pairings between 3D points and their corresponding 2D projections on the focal plane. Current state of the art solutions, designed to operate on images, rely on computationally expensive minimization techniques. For the first time, this work introduces an event-based PnP algorithm designed to work on the output of a neuromorphic event-based vision sensor. The problem is formulated here as a least-squares minimization problem, where the error function is updated with every incoming event. The optimal translation is then computed in closed form, while the desired rotation is given by the evolution of a virtual mechanical system whose energy is proven to be equal to the error function. This allows for a simple yet robust solution of the problem, showing how event-based vision can simplify computer vision tasks. The approach takes full advantage of the high temporal resolution of the sensor, as the estimated pose is incrementally updated with every incoming event. Two approaches are proposed: the Full and the Efficient methods. These two methods are compared against a state of the art PnP algorithm both on synthetic and on real data, producing similar accuracy in addition of being faster.
机译:透视n点问题(PnP)的目标是从3D点及其在焦平面上的对应2D投影之间的n对对中找到对象和相机之间的相对姿势。设计为对图像进行操作的最新技术解决方案依赖于计算上昂贵的最小化技术。这项工作首次引入了一种基于事件的PnP算法,该算法旨在处理基于神经形态事件的视觉传感器的输出。该问题在这里被表述为最小二乘最小化问题,其中误差函数随每个传入事件而更新。然后以闭合形式计算最佳平移,而所需旋转由虚拟机械系统的演化给出,该虚拟机械系统的能量被证明等于误差函数。这允许对问题进行简单而强大的解决方案,从而说明基于事件的视觉如何简化计算机视觉任务。该方法充分利用了传感器的高时间分辨率,因为估计的姿态随每个进入的事件而逐渐更新。提出了两种方法:完全方法和高效方法。在合成和真实数据上,将这两种方法与最新的PnP算法进行比较,除了速度更快之外,还产生相似的精度。

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