人口稠密环境下的视觉SLAM: YOLO与Mask R-CNN准确率与速度的权衡

J. C. V. Soares, M. Gattass, M. Meggiolaro
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引用次数: 12

摘要

同时定位与映射(SLAM)是移动机器人中的一个基本问题。然而,大多数Visual SLAM算法假设一个静态场景,限制了它们在现实环境中的适用性。在Visual SLAM中处理动态内容仍然是一个开放的问题,解决方案通常依赖于直接或基于特征的方法。深度学习技术可以在具有先验动态对象的环境中改进SLAM解决方案,提供场景的高级信息。本文提出了一种利用基于深度学习的技术在人口密集环境中实现SLAM的新方法。该系统建立在ORB-SLAM2上,这是一种最先进的SLAM系统。所提出的方法使用基准数据集进行评估,在高动态场景中优于其他Visual SLAM方法。
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Visual SLAM in Human Populated Environments: Exploring the Trade-off between Accuracy and Speed of YOLO and Mask R-CNN
Simultaneous Localization and Mapping (SLAM) is a fundamental problem in mobile robotics. However, the majority of Visual SLAM algorithms assume a static scenario, limiting their applicability in real-world environments. Dealing with dynamic content in Visual SLAM is still an open problem, with solutions usually relying on direct or feature-based methods. Deep learning techniques can improve the SLAM solution in environments with a priori dynamic objects, providing high-level information of the scene. This paper presents a new approach to SLAM in human populated environments using deep learning-based techniques. The system is built on ORB-SLAM2, a state-of-the-art SLAM system. The proposed methodology is evaluated using a benchmark dataset, outperforming other Visual SLAM methods in highly dynamic scenarios.
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