论文标题
基于神经形态视觉的测量,用于在未来空间探索任务中鲁棒的相对定位
A Neuromorphic Vision-Based Measurement for Robust Relative Localization in Future Space Exploration Missions
论文作者
论文摘要
太空探索目睹了毅力漫游者登陆火星表面时的革命性变化,并证明了火星直升机的首次飞行,即在火星上的任务中,毅力漫游者和Ingenuity合作探索了火星表面,Ingenuity侦察地形信息为Rover的安全穿越性。因此,确定两个平台之间的相对姿势对于该任务的成功至关重要。在这种必要性的驱动下,这项工作提出了一个基于基于神经形态视觉测量(NVBM)和惯性测量的融合的强大相对定位系统。神经形态视觉的出现引发了计算机视觉社区的范式转变,因为其独特的工作原理由现场中发生的光强度的变化触发的异步事件划定。这意味着由于照明不变性而无法在静态场景中获取观测。为了规避这一限制,在现场插入了高频活动地标,以确保持续的事件射击。这些地标被用作促进相对定位的显着特征。开发了一种新型的基于事件的地标识别算法,使用高斯混合模型(GMM),用于匹配我们NVBM的地标对应关系。 NVBM与提议的状态估计器中的惯性测量,地标跟踪Kalman Filter(LTKF)和翻译分别为地标跟踪和相对定位的Transpation解耦的Kalman Filter(TDKF)。在各种实验中测试了所提出的系统,并且在准确性和范围方面具有优于最先进的方法。
Space exploration has witnessed revolutionary changes upon landing of the Perseverance Rover on the Martian surface and demonstrating the first flight beyond Earth by the Mars helicopter, Ingenuity. During their mission on Mars, Perseverance Rover and Ingenuity collaboratively explore the Martian surface, where Ingenuity scouts terrain information for rover's safe traversability. Hence, determining the relative poses between both the platforms is of paramount importance for the success of this mission. Driven by this necessity, this work proposes a robust relative localization system based on a fusion of neuromorphic vision-based measurements (NVBMs) and inertial measurements. The emergence of neuromorphic vision triggered a paradigm shift in the computer vision community, due to its unique working principle delineated with asynchronous events triggered by variations of light intensities occurring in the scene. This implies that observations cannot be acquired in static scenes due to illumination invariance. To circumvent this limitation, high frequency active landmarks are inserted in the scene to guarantee consistent event firing. These landmarks are adopted as salient features to facilitate relative localization. A novel event-based landmark identification algorithm using Gaussian Mixture Models (GMM) is developed for matching the landmarks correspondences formulating our NVBMs. The NVBMs are fused with inertial measurements in proposed state estimators, landmark tracking Kalman filter (LTKF) and translation decoupled Kalman filter (TDKF) for landmark tracking and relative localization, respectively. The proposed system was tested in a variety of experiments and has outperformed state-of-the-art approaches in accuracy and range.