Traditional monocular Visual Simultaneous Localization and Mapping (vSLAM) systems can be divided into three categories: those that use features, those that rely on the image itself, and hybrid models. In the case of feature-based methods, new research has evolved to incorporate more information from their environment using geometric primitives beyond points, such as lines and planes. This is because in many environments, which are man-made environments, characterized as Manhattan world, geometric primitives such as lines and planes occupy most of the space in the environment. The exploitation of these schemes can lead to the introduction of algorithms capable of optimizing the trajectory of a Visual SLAM system and also helping to construct an exuberant map. Thus, we present a real-time monocular Visual SLAM system that incorporates real-time methods for line and VP extraction, as well as two strategies that exploit vanishing points to estimate the robot's translation and improve its rotation.Particularly, we build on ORB-SLAM2, which is considered the current state-of-the-art solution in terms of both accuracy and efficiency, and extend its formulation to handle lines and VPs to create two strategies the first optimize the rotation and the second refine the translation part from the known rotation. First, we extract VPs using a real-time method and use them for a global rotation optimization strategy. Second, we present a translation estimation method that takes advantage of last-stage rotation optimization to model a linear system. Finally, we evaluate our system on the TUM RGB-D benchmark and demonstrate that the proposed system achieves state-of-the-art results and runs in real time, and its performance remains close to the original ORB-SLAM2 system
翻译:传统的单单单视同质本地化和绘图(VSLAM)系统可以分为三类:使用特征的系统,依赖图像本身的系统,以及混合模型。在基于特征的方法方面,新的研究已经发展,使用超出点数的几何原始法,例如线和平面,将更多来自环境的信息纳入到其中。这是因为在许多环境,即曼哈顿世界的人造环境中,线条和飞机等几何原始系统占据了环境的大部分空间。利用这些系统可以导致引入能够优化视觉SLAM系统轨迹的算法,并且帮助绘制一个繁荣的地图。因此,我们提出了实时单向单向视觉SLISM系统,其中纳入了线和VP提取的实时原始方法,以及利用消失点来估计机器人的翻译并改进其旋转。我们利用ORB-SAM2模型来评估当前环境中的大部分空间。从精确和效率的角度来考虑当前最先进的解决方案,并且将其设计扩展为精细的系统,从处理直径的直线翻译系统,到VP-P的精度翻译系统,从我们目前最精细的精细的精细的精细的精细的精细的系统,再使用两个战略。