Infrastructure-Based Object Detection and Tracking for Cooperative
Driving Automation: A Survey
- URL: http://arxiv.org/abs/2201.11871v1
- Date: Fri, 28 Jan 2022 00:55:24 GMT
- Title: Infrastructure-Based Object Detection and Tracking for Cooperative
Driving Automation: A Survey
- Authors: Zhengwei Bai, Guoyuan Wu, Xuewei Qi, Yongkang Liu, Kentaro Oguchi,
Matthew J. Barth
- Abstract summary: Infrastructure-based object detection and tracking systems can enhance the perception capability for connected vehicles.
Discussions conducted to point out current opportunities, open problems, and anticipated future trends.
- Score: 16.20885642028316
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Object detection plays a fundamental role in enabling Cooperative Driving
Automation (CDA), which is regarded as the revolutionary solution to addressing
safety, mobility, and sustainability issues of contemporary transportation
systems. Although current computer vision technologies could provide
satisfactory object detection results in occlusion-free scenarios, the
perception performance of onboard sensors could be inevitably limited by the
range and occlusion. Owing to flexible position and pose for sensor
installation, infrastructure-based detection and tracking systems can enhance
the perception capability for connected vehicles and thus quickly become one of
the most popular research topics. In this paper, we review the research
progress for infrastructure-based object detection and tracking systems.
Architectures of roadside perception systems based on different types of
sensors are reviewed to show a high-level description of the workflows for
infrastructure-based perception systems. Roadside sensors and different
perception methodologies are reviewed and analyzed with detailed literature to
provide a low-level explanation for specific methods followed by Datasets and
Simulators to draw an overall landscape of infrastructure-based object
detection and tracking methods. Discussions are conducted to point out current
opportunities, open problems, and anticipated future trends.
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