Simultaneous localisation and mapping (SLAM) is the problem of autonomous robots to construct or update a map of an undetermined unstructured environment while simultaneously estimate the pose in it. The current trend towards self-driving vehicles has influenced the development of robust SLAM techniques over the last 30 years. This problem is addressed by using a standard sensor or a sensor array (Ultrasonic sensor, LIDAR, Camera, Kinect RGB-D) with sensor fusion techniques to achieve the perception step. Sensing method is determined by considering the specifications of the environment to extract the features. Then the usage of classical Filter-based approaches, the global optimisation approach which is a popular method for visual-based SLAM and convolutional neural network-based methods such as deep learning-based SLAM are discussed whereas considering how to overcome the localisation and mapping issues. The robustness and scalability in long-term autonomy, performance and other new directions in the algorithms compared with each other to sort out. This paper is looking at the published previous work with a judgemental perspective from sensors to algorithm development while discussing open challenges and new research frontiers.
翻译:同时定位和绘图(SLAM)是自主机器人建造或更新未定的无结构环境地图同时估计其构成情况的问题。目前自驾驶车辆的趋势影响了过去30年来稳健的SLAM技术的发展。这个问题通过使用标准传感器或传感器阵列(Ultrasonic传感器、LIDAR、Camera、Kinect RGB-D)和传感器聚变技术来加以解决,以达到感知步骤。测量方法是通过考虑环境规格来提取特征来确定的。然后使用经典过滤法,即全球优化法,这是以视觉为基础的SLAM和以革命神经网络为基础的方法流行的一种方法,例如深层次的学习型SLAM,目前正在讨论如何克服定位和绘图问题。长期自主性、性能和其他算法新方向的稳健性和可缩缩性,以便相互解析。本文在讨论开放的挑战和新的研究领域时,从传感器到算法发展的判断性角度审视了以前出版的工作。