Robotic Mapping Approach under Illumination-Variant Environments at Planetary Construction Sites

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초록

In planetary construction, the semiautonomous teleoperation of robots is expected to perform complex tasks for site preparation and infrastructure emplacement. A highly detailed 3D map is essential for construction planning and management. However, the planetary surface imposes mapping restrictions due to rugged and homogeneous terrains. Additionally, changes in illumination conditions cause the mapping result (or 3D point-cloud map) to have inconsistent color properties that hamper the understanding of the topographic properties of a worksite. Therefore, this paper proposes a robotic construction mapping approach robust to illumination-variant environments. The proposed approach leverages a deep learning-based low-light image enhancement (LLIE) method to improve the mapping capabilities of the visual simultaneous localization and mapping (SLAM)-based robotic mapping method. In the experiment, the robotic mapping system in the emulated planetary worksite collected terrain images during the daytime from noon to late afternoon. Two sets of point-cloud maps, which were created from original and enhanced terrain images, were examined for comparison purposes. The experiment results showed that the LLIE method in the robotic mapping method significantly enhanced the brightness, preserving the inherent colors of the original terrain images. The visibility and the overall accuracy of the point-cloud map were consequently increased.

키워드

planetary constructionrobotic mappingSLAMlow-light enhancement3D point-cloud mapdeep learningIMAGE-ENHANCEMENTWATER ICEMOONLOCALIZATIONBRIGHTNESSRETINEXSTEREOSLAM
제목
Robotic Mapping Approach under Illumination-Variant Environments at Planetary Construction Sites
저자
Hong, SungchulShyam, PranjayBangunharcana, AntyantaShin, Hyuseoung
DOI
10.3390/rs14041027
발행일
2022-02
유형
Article
저널명
Remote Sensing
14
4