A new era of space exploration and exploitation is fast approaching. A multitude of spacecraft will flow in the future decades under the propulsive momentum of the new space economy. Yet, the flourishing proliferation of deep-space assets will make it unsustainable to pilot them from ground with standard radiometric tracking. The adoption of autonomous navigation alternatives is crucial to overcoming these limitations. Among these, optical navigation is an affordable and fully ground-independent approach. Probes can triangulate their position by observing visible beacons, e.g., planets or asteroids, by acquiring their line-of-sight in deep space. To do so, developing efficient and robust image processing algorithms providing information to navigation filters is a necessary action. This paper proposes an innovative pipeline for unresolved beacon recognition and line-of-sight extraction from images for autonomous interplanetary navigation. The developed algorithm exploits the k-vector method for the non-stellar object identification and statistical likelihood to detect whether any beacon projection is visible in the image. Statistical results show that the accuracy in detecting the planet position projection is independent of the spacecraft position uncertainty. Whereas, the planet detection success rate is higher than 95% when the spacecraft position is known with a 3sigma accuracy up to 10^5 km.
翻译:空间探索与开发的新时代正在迅速逼近。未来几十年,在新的空间经济的推动动力下,大量航天器将会在新的空间经济的推动下流动。然而,由于深空资产大量扩散,从地面上以标准的辐射度跟踪进行试验将变得不可持续。采用自主导航替代方法对于克服这些限制至关重要。在这些限制中,光学导航是一种负担得起和完全依靠地面独立的方式。探险器可以通过观测可见的灯塔,例如行星或小行星,通过在深空获得其视线,对其位置进行三角定位。为此,开发高效和强大的图像处理算法,为导航过滤器提供信息是一项必要行动。本文建议建立一个创新的管道,用于尚未解决的灯塔识别和从自主行星间导航的图像中提取视线。发达的算法利用了非恒星物体识别的K-矢量方法,以及探测任何信标预测在图像中是否可见的统计可能性。统计结果显示,探测行星位置投影的准确性与航天器位置的不确定性无关。而地球探测成功率则高于95英里。当航天器的位置时,其精确度为10比95英里。