Qian Chuang, Zhang Hongjuan, Tang Jian, Li Bijun, Liu Hui
GNSS Research Center, Wuhan University, 129 Luoyu Road, Wuhan 430079, China.
State Key Laboratory of Information Engineering in Surveying, Mapping and Remote Sensing, Wuhan University, Wuhan 430079, China.
Sensors (Basel). 2019 Apr 11;19(7):1742. doi: 10.3390/s19071742.
An indoor map is a piece of infrastructure associated with location-based services. Simultaneous Localization and Mapping (SLAM)-based mobile mapping is an efficient method to construct an indoor map. This paper proposes an SLAM algorithm based on a laser scanner and an Inertial Measurement Unit (IMU) for 2D indoor mapping. A grid-based occupancy likelihood map is chosen as the map representation method and is built from all previous scans. Scan-to-map matching is utilized to find the optimal rigid-body transformation in order to avoid the accumulation of matching errors. Map generation and update are probabilistically motivated. According to the assumption that the orthogonal is the main feature of indoor environments, we propose a lightweight segment extraction method, based on the orthogonal blurred segments (OBS) method. Instead of calculating the parameters of segments, we give the scan points contained in blurred segments a greater weight during the construction of the grid-based occupancy likelihood map, which we call the orthogonal feature weighted occupancy likelihood map (OWOLM). The OWOLM enhances the occupancy likelihood map by fusing the orthogonal features. It can filter out noise scan points, produced by objects, such as glass cabinets and bookcases. Experiments were carried out in a library, which is a representative indoor environment, consisting of orthogonal features. The experimental result proves that, compared with the general occupancy likelihood map, the OWOLM can effectively reduce accumulated errors and construct a clearer indoor map.
室内地图是一种与基于位置的服务相关联的基础设施。基于同步定位与地图构建(SLAM)的移动测绘是构建室内地图的一种有效方法。本文提出了一种基于激光扫描仪和惯性测量单元(IMU)的用于二维室内测绘的SLAM算法。选择基于网格的占用似然地图作为地图表示方法,并根据之前的所有扫描构建该地图。利用扫描到地图匹配来找到最优刚体变换,以避免匹配误差的累积。地图生成和更新基于概率。根据室内环境以正交为主要特征这一假设,我们基于正交模糊线段(OBS)方法提出了一种轻量级线段提取方法。在构建基于网格的占用似然地图时,我们不是计算线段的参数,而是给模糊线段中包含的扫描点赋予更大的权重,我们将其称为正交特征加权占用似然地图(OWOLM)。OWOLM通过融合正交特征增强了占用似然地图。它可以滤除由玻璃柜和书架等物体产生的噪声扫描点。实验在一个图书馆中进行,图书馆是一个具有正交特征的典型室内环境。实验结果证明,与一般的占用似然地图相比,OWOLM可以有效减少累积误差并构建更清晰的室内地图。