Lee Changmin, Yu Seung-Eun, Kim DaeEun
School of Electrical and Electronic Engineering, Yonsei University, 50 Yonsei-ro, Seodaemun-gu, Seoul 03722, Korea.
Sensors (Basel). 2017 Aug 22;17(8):1928. doi: 10.3390/s17081928.
A number of landmark-based navigation algorithms have been studied using feature extraction over the visual information. In this paper, we apply the distance information of the surrounding environment in a landmark navigation model. We mount a depth sensor on a mobile robot, in order to obtain omnidirectional distance information. The surrounding environment is represented as a circular form of landmark vectors, which forms a snapshot. The depth snapshots at the current position and the target position are compared to determine the homing direction, inspired by the snapshot model. Here, we suggest a holistic view of panoramic depth information for homing navigation where each sample point is taken as a landmark. The results are shown in a vector map of homing vectors. The performance of the suggested method is evaluated based on the angular errors and the homing success rate. Omnidirectional depth information about the surrounding environment can be a promising source of landmark homing navigation. We demonstrate the results that a holistic approach with omnidirectional depth information shows effective homing navigation.
已经研究了许多基于地标的导航算法,这些算法通过对视觉信息进行特征提取来实现。在本文中,我们将周围环境的距离信息应用于地标导航模型。我们在移动机器人上安装了一个深度传感器,以获取全向距离信息。周围环境被表示为地标向量的圆形形式,形成一个快照。受快照模型的启发,将当前位置和目标位置的深度快照进行比较,以确定归巢方向。在此,我们提出了一种用于归巢导航的全景深度信息的整体视图,其中每个采样点都被视为一个地标。结果显示在归巢向量的矢量图中。基于角度误差和归巢成功率对所提出方法的性能进行评估。关于周围环境的全向深度信息可能是地标归巢导航的一个有前景的来源。我们展示了具有全向深度信息的整体方法显示出有效归巢导航的结果。