Keypoint Detection and Description through Deep Learning in Unstructured Environments

IF 2.9 Q2 ROBOTICS
Robotics Pub Date : 2023-09-30 DOI:10.3390/robotics12050137
Georgios Petrakis, Panagiotis Partsinevelos
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引用次数: 0

Abstract

Feature extraction plays a crucial role in computer vision and autonomous navigation, offering valuable information for real-time localization and scene understanding. However, although multiple studies investigate keypoint detection and description algorithms in urban and indoor environments, far fewer studies concentrate in unstructured environments. In this study, a multi-task deep learning architecture is developed for keypoint detection and description, focused on poor-featured unstructured and planetary scenes with low or changing illumination. The proposed architecture was trained and evaluated using a training and benchmark dataset with earthy and planetary scenes. Moreover, the trained model was integrated in a visual SLAM (Simultaneous Localization and Maping) system as a feature extraction module, and tested in two feature-poor unstructured areas. Regarding the results, the proposed architecture provides a mAP (mean Average Precision) in a level of 0.95 in terms of keypoint description, outperforming well-known handcrafted algorithms while the proposed SLAM achieved two times lower RMSE error in a poor-featured area with low illumination, compared with ORB-SLAM2. To the best of the authors’ knowledge, this is the first study that investigates the potential of keypoint detection and description through deep learning in unstructured and planetary environments.
基于深度学习的非结构化环境下关键点检测与描述
特征提取在计算机视觉和自主导航中起着至关重要的作用,为实时定位和场景理解提供了有价值的信息。然而,尽管有许多研究对城市和室内环境中的关键点检测和描述算法进行了研究,但集中在非结构化环境中的研究要少得多。在本研究中,开发了一种多任务深度学习架构,用于关键点检测和描述,重点关注低照度或不断变化的低特征非结构化和行星场景。使用地球和行星场景的训练和基准数据集对所提出的架构进行了训练和评估。此外,将训练好的模型作为特征提取模块集成到视觉SLAM (Simultaneous Localization and mapping)系统中,并在两个特征缺乏的非结构化区域进行测试。结果表明,在关键点描述方面,本文提出的架构提供了0.95的mAP (mean Average Precision),优于知名的手工算法,而在低光照条件下特征较差的区域,与ORB-SLAM2相比,本文提出的SLAM的RMSE误差降低了两倍。据作者所知,这是第一项通过深度学习在非结构化和行星环境中调查关键点检测和描述潜力的研究。
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来源期刊
Robotics
Robotics Mathematics-Control and Optimization
CiteScore
6.70
自引率
8.10%
发文量
114
审稿时长
11 weeks
期刊介绍: Robotics publishes original papers, technical reports, case studies, review papers and tutorials in all the aspects of robotics. Special Issues devoted to important topics in advanced robotics will be published from time to time. It particularly welcomes those emerging methodologies and techniques which bridge theoretical studies and applications and have significant potential for real-world applications. It provides a forum for information exchange between professionals, academicians and engineers who are working in the area of robotics, helping them to disseminate research findings and to learn from each other’s work. Suitable topics include, but are not limited to: -intelligent robotics, mechatronics, and biomimetics -novel and biologically-inspired robotics -modelling, identification and control of robotic systems -biomedical, rehabilitation and surgical robotics -exoskeletons, prosthetics and artificial organs -AI, neural networks and fuzzy logic in robotics -multimodality human-machine interaction -wireless sensor networks for robot navigation -multi-sensor data fusion and SLAM
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