The goal of the Mars Sample Return campaign is to collect soil samples from the surface of Mars and return them to Earth for further study. The samples will be acquired and stored in metal tubes by the Perseverance rover and deposited on the Martian surface. As part of this campaign, it is expected that the Sample Fetch Rover will be in charge of localizing and gathering up to 35 sample tubes over 150 Martian sols. Autonomous capabilities are critical for the success of the overall campaign and for the Sample Fetch Rover in particular. This work proposes a novel system architecture for the autonomous detection and pose estimation of the sample tubes. For the detection stage, a Deep Neural Network and transfer learning from a synthetic dataset are proposed. The dataset is created from photorealistic 3D simulations of Martian scenarios. Additionally, the sample tubes poses are estimated using Computer Vision techniques such as contour detection and line fitting on the detected area. Finally, laboratory tests of the Sample Localization procedure are performed using the ExoMars Testing Rover on a Mars-like testbed. These tests validate the proposed approach in different hardware architectures, providing promising results related to the sample detection and pose estimation.
翻译:火星取样返回运动的目标是从火星表面收集土壤样品,并将这些样品送回地球进一步研究。这些样品将由远洋巡洋流采集并储存在金属管中,作为这一运动的一部分,样品回收路弗将负责定位和收集超过150火星索尔的35个样品管。自主能力对整个运动的成功至关重要,特别是样品回收路弗至关重要。这项工作提出了自主探测和估计样品管的新型系统结构。在探测阶段,提出了深神经网络和从合成数据集中学习的转移。数据集是利用火星情景的光真3D模拟生成的。此外,样品管还利用计算机视觉技术,如对所探测区域进行定点探测和线安装。最后,利用火星式试验床的Exomars测试路过进行取样的实验室测试。这些测试验证了不同硬件结构中的拟议方法,提供了与样品探测和样品图象有关的有希望的结果。