Review of Research on Vision-Based Parking Space Detection Method

Author:

Ma Yong1,Liu Yangguo1,Shao Shiyun2,Zhao Jiale3ORCID,Tang Jun4

Affiliation:

1. Jiangxi Normal University, China

2. Université de Montréal, Canada

3. Chongqing University, China

4. Changhong Network Technologies Co., Ltd., China

Abstract

Parking space detection is an important part of the automatic parking assistance system. How to use existing sensors to accurately and effectively detect parking spaces is the key problem that has not been solved in the automatic parking system. Advances in Artificial Intelligence and sensing technologies have motivated significant research and development in parking space detection in the automotive field. Firstly, based on extensive investigation of a lot of literature and the latest re-search results, this paper divides parking space detection methods into methods based on traditional visual features and those methods based on deep learning and introduces them separately. Secondly, the advantages and disadvantages of each parking space detection method are analyzed, compared, and summarized. And the benchmark datasets and algorithm evaluation standards commonly used in parking space detection methods are introduced. Finally, the vision-based parking space detection method is summarized, and the future development trend is prospected.

Publisher

IGI Global

Subject

Computer Networks and Communications,Information Systems,Software

Reference53 articles.

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5. Frank, R. (2014). Sensing in the ultimately safe vehicle. Convergence International Congress and Exposition on Transportation Electronics, Paper No 2004-21-0055.

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