Spacecraft pose estimation is an essential computer vision application that can improve the autonomy of in-orbit operations. An ESA/Stanford competition brought out solutions that seem hardly compatible with the constraints imposed on spacecraft onboard computers. URSONet is among the best in the competition for its generalization capabilities but at the cost of a tremendous number of parameters and high computational complexity. In this paper, we propose Mobile-URSONet: a spacecraft pose estimation convolutional neural network with 178 times fewer parameters while degrading accuracy by no more than four times compared to URSONet.
翻译:空间飞行器构成的估算是一种重要的计算机视觉应用,可以提高轨道运行的自主性。欧空局/斯坦福的竞赛提出了似乎很难与航天器在机载计算机上所受限制相容的解决办法。URSONET是竞争其一般化能力的最佳办法之一,但以大量参数和高计算复杂性为代价。我们在本文件中建议移动卫星:航天器构成的参数比URSONET少178倍的革命性神经网络,而其精确度却比URSONET低不到4倍。