A Systematic Review on Computer Vision-Based Parking Lot Management
Applied on Public Datasets
- URL: http://arxiv.org/abs/2203.06463v1
- Date: Sat, 12 Mar 2022 15:35:29 GMT
- Title: A Systematic Review on Computer Vision-Based Parking Lot Management
Applied on Public Datasets
- Authors: Paulo Ricardo Lisboa de Almeida, Jeovane Hon\'orio Alves, Rafael Stubs
Parpinelli and Jean Paul Barddal
- Abstract summary: We surveyed and compared robust publicly available image datasets crafted to test computer vision-based methods for parking lot management approaches.
The literature review identified relevant gaps that require further research.
- Score: 5.379463265037841
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Computer vision-based parking lot management methods have been extensively
researched upon owing to their flexibility and cost-effectiveness. To evaluate
such methods authors often employ publicly available parking lot image
datasets. In this study, we surveyed and compared robust publicly available
image datasets specifically crafted to test computer vision-based methods for
parking lot management approaches and consequently present a systematic and
comprehensive review of existing works that employ such datasets. The
literature review identified relevant gaps that require further research, such
as the requirement of dataset-independent approaches and methods suitable for
autonomous detection of position of parking spaces. In addition, we have
noticed that several important factors such as the presence of the same cars
across consecutive images, have been neglected in most studies, thereby
rendering unrealistic assessment protocols. Furthermore, the analysis of the
datasets also revealed that certain features that should be present when
developing new benchmarks, such as the availability of video sequences and
images taken in more diverse conditions, including nighttime and snow, have not
been incorporated.
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