ChengChun Sun, Bo Zhang, Ji-kai Wang, Cheng-Shu Zhang
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引用次数: 5
摘要
同时定位与映射(Simultaneous Localization and Mapping, SLAM)包括即时构建环境和机器人在其中的状态估计,而视觉定位与映射(Visual SLAM, VSLAM)是利用摄像头等视觉传感器进行定位与映射。VSLAM已成为未知环境下移动机器人、无人机、无人驾驶车辆等无人系统实现全尺寸导航和环境感知的重要组成部分。首先,对体系结构的原理、数学模型、研究现状和各部分的算法进行了综述。然后,从三个方面总结了VSLAM的研究热点和当前面临的挑战:(1)VSLAM与深度学习;(ii)多传感器数据处理;(iii)视/惯性导航中的VSLAM。进一步分析了VSLAM的研究趋势,包括(i)深度学习和深度估计,(ii)主动和多机器人VSLAM和(iii)语义VSLAM。最后,对VSLAM的未来发展进行了展望,为该领域的研究人员提供了一定的指导意义。
Simultaneous Localization and Mapping (SLAM) consists of the immediate construction of the environment and the state estimation of the robot in it, while Visual SLAM (VSLAM) is the use of cameras and other visual sensors for SLAM. VSLAM has become an important part of mobile robots, drones, unmanned vehicles and other unmanned systems in unknown environments to achieve full-scale navigation and environmental perception. First, the principle of architecture, the mathematical models, the current research status and the algorithms of each part have been reviewed. Then, the research hotspots and current facing challenges on VSLAM were summarized from three parts: (i) VSLAM and deep learning; (ii) data processing of multi-sensor; (iii) VSLAM in visual/inertial navigation. Moreover, the research trend of VSLAM were further analyzed, including (i) deep learning and deep estimation, (ii) active and multi-robot VSLAM and (iii) semantic VSLAM. At last, the future development of VSLAM was discussed, which may provide a certain guiding significance for researchers in this area.