AUTONOMOUS OBSTACLE AVOIDANCE AND CONTROL USING VOXEL SEGMENTATION OF 3D LIDAR DATA

Loading...
Thumbnail Image
Authors
Bracci, Justin T.
Advisors
Yun, Xiaoping
Calusdian, James
Second Readers
Subjects
light detection and ranging
lidar
3D lidar
simultaneous localization and mapping
SLAM
voxel
point cloud
autonomous navigation
segmentation
Date of Issue
2021-09
Date
Publisher
Monterey, CA; Naval Postgraduate School
Language
Abstract
The purpose of this work was to determine if a single 3D lidar sensor could provide enough data to conduct obstacle detection and avoidance for a small ground-based autonomous vehicle in an indoor environment. This work was based on previous Naval Postgraduate School work with simultaneous localization and mapping using a 2D lidar sensor and a 3D time of flight camera. A voxel-based point cloud filtering method was used to interpret data and classify objects as large, small, or negative. The data was then used as an input to a control algorithm using a potential field control model to navigate around the identified obstacles. The classification and control algorithm was proven successful through four separate experiments, and a definition for a small object was developed. Areas for future study were identified to include the development of a localization method using a single 3D lidar sensor, the implementation of the obstacle avoidance algorithm on an autonomous platform with six degrees of freedom, and the development of a path planning algorithm based on an initial point cloud.
Type
Thesis
Description
Series/Report No
Department
Electrical and Computer Engineering (ECE)
Organization
Identifiers
NPS Report Number
Sponsors
Naval Information Warfare Center Pacific
Funding
Format
Citation
Distribution Statement
Approved for public release. Distribution is unlimited.
Rights
This publication is a work of the U.S. Government as defined in Title 17, United States Code, Section 101. Copyright protection is not available for this work in the United States.
Collections