Monocular Semidirect Visual Odometry for Large-Scale Outdoor Localization
To achieve large-scale outdoor real-time localization, a semidirect visual odometry method for a monocular camera is proposed. In this method, the performance of the features from the accelerated segment test (FAST) algorithm is improved to detect corners with good tracking and distribution properti...
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doaj-dbc515a5a582458a82d14500a33494fa2021-03-29T22:54:14ZengIEEEIEEE Access2169-35362019-01-017579275794210.1109/ACCESS.2019.29140338703146Monocular Semidirect Visual Odometry for Large-Scale Outdoor LocalizationQi Naixin0https://orcid.org/0000-0002-2976-7390Yang Xiaogang1Li Chuanxiang2Li Xiaofeng3Zhang Shengxiu4Cao Lijia5Department of Control Engineering, Xi’an Research Institute of High-Tech, Xi’an, ChinaDepartment of Control Engineering, Xi’an Research Institute of High-Tech, Xi’an, ChinaDepartment of Control Engineering, Xi’an Research Institute of High-Tech, Xi’an, ChinaDepartment of Control Engineering, Xi’an Research Institute of High-Tech, Xi’an, ChinaDepartment of Control Engineering, Xi’an Research Institute of High-Tech, Xi’an, ChinaCollege of Automation and Information Engineering, Sichuan University of Science and Engineering, Zigong, ChinaTo achieve large-scale outdoor real-time localization, a semidirect visual odometry method for a monocular camera is proposed. In this method, the performance of the features from the accelerated segment test (FAST) algorithm is improved to detect corners with good tracking and distribution properties. A multiscale Lucas-Kanade (LK) approach is presented to build the correspondence between features and map points robustly and efficiently. Thereafter, a semidirect visual odometry system is put forward to achieve long-distance and large-scale localization for the ground vehicle. The main contribution of this method is that it integrates the robustness and efficiency advantages of feature-based methods and the accuracy virtue of direct methods into one visual odometry system. As a result, the proposed method can be applied to localize long-distance and large-scale outdoor scenes, without loop closing and global BA. Several experiments illustrate the performances of the improved FAST algorithm, the multiscale LK approach, and our semidirect visual odometry system. The experimental results demonstrate that our semidirect visual odometry system can be operated on the KITTI benchmark accurately and efficiently. The average computational time for a single frame is below 60 ms on a general notebook computer with a CPU.https://ieeexplore.ieee.org/document/8703146/Visual odometrysemidirectmultiscale LKFASTV-SLAM |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Qi Naixin Yang Xiaogang Li Chuanxiang Li Xiaofeng Zhang Shengxiu Cao Lijia |
spellingShingle |
Qi Naixin Yang Xiaogang Li Chuanxiang Li Xiaofeng Zhang Shengxiu Cao Lijia Monocular Semidirect Visual Odometry for Large-Scale Outdoor Localization IEEE Access Visual odometry semidirect multiscale LK FAST V-SLAM |
author_facet |
Qi Naixin Yang Xiaogang Li Chuanxiang Li Xiaofeng Zhang Shengxiu Cao Lijia |
author_sort |
Qi Naixin |
title |
Monocular Semidirect Visual Odometry for Large-Scale Outdoor Localization |
title_short |
Monocular Semidirect Visual Odometry for Large-Scale Outdoor Localization |
title_full |
Monocular Semidirect Visual Odometry for Large-Scale Outdoor Localization |
title_fullStr |
Monocular Semidirect Visual Odometry for Large-Scale Outdoor Localization |
title_full_unstemmed |
Monocular Semidirect Visual Odometry for Large-Scale Outdoor Localization |
title_sort |
monocular semidirect visual odometry for large-scale outdoor localization |
publisher |
IEEE |
series |
IEEE Access |
issn |
2169-3536 |
publishDate |
2019-01-01 |
description |
To achieve large-scale outdoor real-time localization, a semidirect visual odometry method for a monocular camera is proposed. In this method, the performance of the features from the accelerated segment test (FAST) algorithm is improved to detect corners with good tracking and distribution properties. A multiscale Lucas-Kanade (LK) approach is presented to build the correspondence between features and map points robustly and efficiently. Thereafter, a semidirect visual odometry system is put forward to achieve long-distance and large-scale localization for the ground vehicle. The main contribution of this method is that it integrates the robustness and efficiency advantages of feature-based methods and the accuracy virtue of direct methods into one visual odometry system. As a result, the proposed method can be applied to localize long-distance and large-scale outdoor scenes, without loop closing and global BA. Several experiments illustrate the performances of the improved FAST algorithm, the multiscale LK approach, and our semidirect visual odometry system. The experimental results demonstrate that our semidirect visual odometry system can be operated on the KITTI benchmark accurately and efficiently. The average computational time for a single frame is below 60 ms on a general notebook computer with a CPU. |
topic |
Visual odometry semidirect multiscale LK FAST V-SLAM |
url |
https://ieeexplore.ieee.org/document/8703146/ |
work_keys_str_mv |
AT qinaixin monocularsemidirectvisualodometryforlargescaleoutdoorlocalization AT yangxiaogang monocularsemidirectvisualodometryforlargescaleoutdoorlocalization AT lichuanxiang monocularsemidirectvisualodometryforlargescaleoutdoorlocalization AT lixiaofeng monocularsemidirectvisualodometryforlargescaleoutdoorlocalization AT zhangshengxiu monocularsemidirectvisualodometryforlargescaleoutdoorlocalization AT caolijia monocularsemidirectvisualodometryforlargescaleoutdoorlocalization |
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1724190605745061888 |