基于仿生视觉的SLAM数据转换

Mingzhu Li, Weimin Zhang, Yongliang Shi, Z. Yao, Zhenshuo Liang, Qiang Huang
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引用次数: 0

摘要

同时定位与绘图(SLAM)是大多数移动机器人实现自主导航的关键功能。传统的视觉SLAM是通过摄像头获取数据,构建稀疏或密集的三维地图,方便机器人定位,但难以实现避障和自主导航。为此,本文提出了一种基于仿生视觉特征的数据转换算法,该算法可以构建用于室内导航的二维精确地图。该算法有两个主要并行线程:地面检测和数据转换。地面检测线程对地面进行实时检测,并基于几何不变性得到摄像机到地面的变换矩阵。数据转换线程首先对深度数据进行过滤,然后提出一种基于人类视觉特征的变分辨率模型,在不影响精度的前提下将转换时间保持在较低水平。每组实验都表明,该算法转换的数据具有较高的精度,可以准确地用于构建导航地图。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bionic Visual-based Data Conversion for SLAM
Simultaneous localization and mapping (SLAM) is the key function for most mobile robots to achieve autonomous navigation. The traditional visual SLAM uses the camera to acquire data and constructs a sparse or dense 3D map, which is convenient for robot localization but difficult for obstacle avoidance and autonomous navigation. Thus, we propose an innovative data conversion algorithm based on bionic visual characteristics which can construct a two-dimensional accurate map for indoor navigation in this paper. The algorithm has two main parallel threads: Ground Detection and Data Conversion. The ground detection thread detects the ground in real time, and gets the transformation matrix from the camera to the ground based on the geometrical invariability. The data conversion thread first filters the depth data, and then proposes a variable-resolution model based on human visual characteristics, which can keep the conversion time consumption at a low level without affecting the accuracy. Each group of experiments shows that the data converted by our algorithm have high-precision, and can be used to construct the map for navigation accurately.
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