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Neuromorphic Event-Based 3D Pose Estimation

机译:基于神经形态事件的3D姿势估计

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Pose estimation is a fundamental step in many artificial vision tasks. It consists of estimating the 3D pose of an object with respect to a camera from the object's 2D projection. Current state of the art implementations operate on images. These implementations are computationally expensive, especially for real-time applications. Scenes with fast dynamics exceeding 30–60 Hz can rarely be processed in real-time using conventional hardware. This paper presents a new method for event-based 3D object pose estimation, making full use of the high temporal resolution (1 μs) of asynchronous visual events output from a single neuromorphic camera. Given an initial estimate of the pose, each incoming event is used to update the pose by combining both 3D and 2D criteria. We show that the asynchronous high temporal resolution of the neuromorphic camera allows us to solve the problem in an incremental manner, achieving real-time performance at an update rate of several hundreds kHz on a conventional laptop. We show that the high temporal resolution of neuromorphic cameras is a key feature for performing accurate pose estimation. Experiments are provided showing the performance of the algorithm on real data, including fast moving objects, occlusions, and cases where the neuromorphic camera and the object are both in motion.
机译:姿势估计是许多人工视觉任务中的基本步骤。它包括根据对象的2D投影估算对象相对于摄像机的3D姿势。当前技术水平的实现对图像进行操作。这些实现在计算上是昂贵的,特别是对于实时应用。快速动态超过30–60 Hz的场景很少可以使用常规硬件进行实时处理。本文提出了一种基于事件的3D对象姿态估计的新方法,该方法充分利用了从单个神经形态相机输出的异步视觉事件的高时间分辨率(1μs)。给定姿势的初始估计值,每个传入事件都通过组合3D和2D标准来更新姿势。我们表明,神经形态相机的异步高时间分辨率使我们能够以增量方式解决问题,在传统笔记本电脑上以数百kHz的更新速率实现实时性能。我们表明神经形态相机的高时间分辨率是执行准确的姿势估计的关键功能。提供的实验显示了该算法对真实数据的性能,包括快速移动的对象,遮挡以及神经形态相机和对象都处于运动状态的情况。

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