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用于空间态势感知的基于实时事件的无监督特征整合与跟踪

Real-Time Event-Based Unsupervised Feature Consolidation and Tracking for Space Situational Awareness.

作者信息

Ralph Nicholas, Joubert Damien, Jolley Andrew, Afshar Saeed, Tothill Nicholas, van Schaik André, Cohen Gregory

机构信息

International Centre for Neuromorphic Engineering, MARCS Institute for Brain Behaviour and Development, Western Sydney University, Werrington, NSW, Australia.

Air and Space Power Development Centre, Royal Australian Air Force, Canberra, ACT, Australia.

出版信息

Front Neurosci. 2022 May 6;16:821157. doi: 10.3389/fnins.2022.821157. eCollection 2022.

Abstract

Earth orbit is a limited natural resource that hosts a vast range of vital space-based systems that support the international community's national, commercial and defence interests. This resource is rapidly becoming depleted with over-crowding in high demand orbital slots and a growing presence of space debris. We propose the Fast Iterative Extraction of Salient targets for Tracking Asynchronously (FIESTA) algorithm as a robust, real-time and reactive approach to optical Space Situational Awareness (SSA) using Event-Based Cameras (EBCs) to detect, localize, and track Resident Space Objects (RSOs) accurately and timely. We address the challenges of the asynchronous nature and high temporal resolution output of the EBC accurately, unsupervised and with few tune-able parameters using concepts established in the neuromorphic and conventional tracking literature. We show this algorithm is capable of highly accurate in-frame RSO velocity estimation and average sub-pixel localization in a simulated test environment to distinguish the capabilities of the EBC and optical setup from the proposed tracking system. This work is a fundamental step toward accurate end-to-end real-time optical event-based SSA, and developing the foundation for robust closed-form tracking evaluated using standardized tracking metrics.

摘要

地球轨道是一种有限的自然资源,承载着大量重要的天基系统,这些系统支持国际社会的国家、商业和国防利益。随着高需求轨道位置的过度拥挤以及空间碎片的日益增多,这一资源正迅速变得枯竭。我们提出了用于异步跟踪的显著目标快速迭代提取(FIESTA)算法,作为一种稳健、实时且具有反应性的方法,用于基于事件相机(EBC)的光学空间态势感知(SSA),以准确、及时地检测、定位和跟踪在轨目标(RSO)。我们利用神经形态和传统跟踪文献中确立的概念,准确、无监督且以极少的可调整参数应对了EBC异步特性和高时间分辨率输出的挑战。我们展示了该算法在模拟测试环境中能够实现高精度的帧内RSO速度估计和平均亚像素定位,以区分EBC和光学设置与所提出跟踪系统的能力。这项工作是迈向基于光学事件的准确端到端实时SSA的重要一步,并为使用标准化跟踪指标评估的稳健闭式跟踪奠定基础。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/b4ce/9120364/b733650c029c/fnins-16-821157-g0001.jpg

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