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内蒙古自治区呼和浩特市赛罕区大学西街235号 邮编: 010021
作者机构:Univ Calif San Diego La Jolla CA 92093 USA
出 版 物:《IEEE ROBOTICS AND AUTOMATION LETTERS》 (IEEE Robot. Autom.)
年 卷 期:2020年第5卷第2期
页 面:1484-1491页
核心收录:
学科分类:0808[工学-电气工程] 08[工学] 0811[工学-控制科学与工程]
基 金:National Science Foundation [IIS-1720713 IIP-1724982 IIS-1734482]
主 题:Object detection segmentation and categorization computer vision for other robotic applications
摘 要:A key challenge in robotics is the capability to perceive unseen objects, which can improve a robot s ability to learn from and adapt to its surroundings. One approach is to employ unsupervised, salient object discovery methods, which has shown promise in the computer vision literature. However, most state-of-the-art methods are unsuitable for robotics because they are limited to processing whole video segments before discovering objects, which can constrain real-time perception. To address these gaps, we introduce Unsupervised Foraging of Objects (UFO), a novel, unsupervised, salient object discovery method designed for monocular robot vision. We designed UFO with a parallel discover-prediction paradigm, permitting it to discover arbitrary, salient objects on a frame-by-frame basis, which can help robots to engage in scalable object learning. We compared UFO to the two fastest and most accurate methods for unsupervised salient object discovery (Fast Segmentation and Saliency-Aware Geodesic), and show that UFO 6.5 times faster, achieving state-of-the-art precision, recall, and accuracy. Furthermore our evaluation suggests that UFO is robust to real-world perception challenges encountered by robots, including moving cameras and moving objects, motion blur, and occlusion. It is our goal that this work will be used with other robot perception methods, to design robots that can learn novel object concepts, leading to improved autonomy.