The Simultaneous Localization and Mapping (SLAM) problem addresses the possibility of a robot to localize itself in an unknown environment and simultaneously build a consistent map of this environment. Recently, cameras have been successfully used to get the environment's features to perform SLAM, which is referred to as visual SLAM (VSLAM). However, classical VSLAM algorithms can be easily induced to fail when either the motion of the robot or the environment is too challenging. Although new approaches based on Deep Neural Networks (DNNs) have achieved promising results in VSLAM, they still are unable to outperform traditional methods. To leverage the robustness of deep learning to enhance traditional VSLAM systems, we propose to combine the potential of deep learning-based feature descriptors with the traditional geometry-based VSLAM, building a new VSLAM system called LIFT-SLAM. Experiments conducted on KITTI and Euroc datasets show that deep learning can be used to improve the performance of traditional VSLAM systems, as the proposed approach was able to achieve results comparable to the state-of-the-art while being robust to sensorial noise. We enhance the proposed VSLAM pipeline by avoiding parameter tuning for specific datasets with an adaptive approach while evaluating how transfer learning can affect the quality of the features extracted.
翻译:同步本地化和绘图(SLAM)问题解决了机器人在未知环境中自我定位并同时绘制这种环境的地图的可能性。最近,摄影机成功地利用了环境特性来进行SLAM,称为视觉SLAM(VSLAM),但传统的VSLAM算法很容易在机器人运动或环境太具挑战性时导致失败。虽然基于深神经网络(DNNS)的新办法在VSLAM取得了可喜的成果,但它们仍然无法超越传统方法。为了利用深层次学习的强健性来增强传统的VSLAM系统,我们提议将深层次学习特征标本的潜力与传统的VSLAM(VSLAM)相结合,建立一个名为LIFT-SAM(LAM)的新的VSLAM系统。在KITTI和欧洲各数据集上进行的实验表明,可以利用深层次的学习来改进传统VSLAM系统的性能,因为拟议的办法能够取得与州级技术相近的结果。我们提议,在对具体传感器噪音进行稳健的升级改造的同时,可以改进VSLSL系统的质量参数。我们建议,同时通过对不断的升级的升级的方法来提高对具体传感器噪音进行升级。