首页> 外文会议>AIAA space forum >SPOC: Deep Learning-based Terrain Classification for Mars Rover Missions
【24h】

SPOC: Deep Learning-based Terrain Classification for Mars Rover Missions

机译:SPOC:Mars Rover任务的深度学习地形分类

获取原文

摘要

This paper presents Soil Property and Object Classification (SPOC), a novel software capability that can visually identify terrain types (e.g., sand, bedrock) as well as terrain features (e.g., scarps, ridges) on a planetary surface. SPOC works on both orbital and ground-bases images. Built upon a deep convolutional neural network (CNN), SPOC employs a machine learning approach, where it learns from a small volume of examples provided by human experts, and applies the learned model to a significant volume of data very efficiently. SPOC is important since terrain type is essential information for evaluating the traversability for rovers, yet manual terrain classification is very labor intensive. This paper presents the technology behind SPOC, as well as two successful applications to Mars rover missions. The first is the landing site traversability analysis for the Mars 2020 Rover (M2020) mission. SPOC identifies 17 terrain classes on full-resolution (25 cm/pixel) HiRISE (High Resolution Imaging Science Experiment) images for all eight candidate landing sites, each of which spans over ~ 100km~2. The other application is slip prediction for the Mars Science Laboratory (MSL) mission. SPOC processed several thousand NAVCAM (Navigation camera) images taken by the Curiosity rover. Predicted terrain classes were then correlated with observed wheel slip and slope angles to build a slip prediction model. In addition, SPOC was integrated into the MSL downlink pipeline to automatically process all NAVCAM images. These tasks were impractical, if not impossible, to perform manually. SPOC opens the door for big data analysis in planetary exploration. It has a promising potential for a wider range of future applications, such as the automated discovery of scientifically important terrain features on existing Mars orbital imagery, as well as traversability analysis for future surface missions to small bodies and icy worlds.
机译:本文介绍了土壤性质和对象分类(SPOC),一种新型软件能力,可视地识别地形类型(例如,沙子,基岩)以及行星表面上的地形特征(例如,稀纱,脊)。 SPOC适用于轨道和地基图像。 SPOC建立在深度卷积神经网络(CNN)上,采用机器学习方法,其中它从人类专家提供的少量示例中学习,并且非常有效地将学习模型应用于大量数据。 SPOC是重要的,因为地形类型是评估流动性的重要信息,但是手动地形分类是非常劳动密集的。本文介绍了SPOC背后的技术,以及两个成功的Mars Rover任务的应用程序。首先是火星2020流动站(M2020)任务的着陆网站遍历分析。 SPOC在全分辨率(25厘米/像素)HIRISE(高分辨率成像科学实验)图像上识别17个地形课程,所有八个候选地段的图像(每个候选人着陆站点)均超过100km〜2的跨度。另一个应用是MARS Science实验室(MSL)使命的滑动预测。 SPOC处理了大量流动站拍摄的数千名NavCam(导航摄像机)图像。然后,预测地形课程与观察到的车轮滑动和斜率角度相关,以构建滑动预测模型。此外,SPOC已集成到MSL下行链路管道中,以自动处理所有NavCAM图像。如果不是不可能的话,这些任务是不切实际的,可以手动执行。 SPOC在行星勘探中打开了大数据分析的门。它有更广泛的应用前景,如科学重要的地形特征对现有火星轨道图像的自动发现,以及对未来的表面特派团小天体和冰冷的世界通行性分析看好的潜力。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号