Becker David, Cain Stephen
Appl Opt. 2018 May 10;57(14):3968-3975. doi: 10.1364/AO.57.003968.
Space object detection is of great importance in the highly dependent yet competitive and congested space domain. The detection algorithms employed play a crucial role in fulfilling the detection component in the space situational awareness mission to detect, track, characterize, and catalog unknown space objects. Many current space detection algorithms use a matched filter or a spatial correlator on long-exposure data to make a detection decision at a single pixel point of a spatial image based on the assumption that the data follow a Gaussian distribution. Long-exposure imaging is critical to detection performance in these algorithms; however, for imaging under daylight conditions, it becomes necessary to create a long-exposure image as the sum of many short-exposure images. This paper explores the potential for increasing detection capabilities for small and dim space objects in a stack of short-exposure images dominated by a bright background. The algorithm proposed in this paper improves the traditional stack and average method of forming a long-exposure image by selectively removing short-exposure frames of data that do not positively contribute to the overall signal-to-noise ratio of the averaged image. The performance of the algorithm is compared to a traditional matched filter detector using data generated in MATLAB as well as laboratory-collected data. The results are illustrated on a receiver operating characteristic curve to highlight the increased probability of detection associated with the proposed algorithm.
在高度依赖却又竞争激烈且拥挤的空间领域中,空间物体检测至关重要。所采用的检测算法在完成空间态势感知任务中的检测部分起着关键作用,该任务旨在检测、跟踪、表征和编目未知空间物体。许多当前的空间检测算法在长曝光数据上使用匹配滤波器或空间相关器,基于数据服从高斯分布的假设,在空间图像的单个像素点做出检测决策。长曝光成像对于这些算法的检测性能至关重要;然而,对于日光条件下的成像,有必要将许多短曝光图像相加来创建长曝光图像。本文探讨了在以明亮背景为主的短曝光图像堆栈中提高对小而暗的空间物体检测能力的潜力。本文提出的算法通过有选择地去除对平均图像的整体信噪比没有正向贡献的数据短曝光帧,改进了形成长曝光图像的传统堆栈平均方法。使用在MATLAB中生成的数据以及实验室收集的数据,将该算法的性能与传统匹配滤波器检测器进行了比较。结果在接收器操作特性曲线上进行了说明,以突出与所提出算法相关的检测概率的增加。