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Deep transfer learning for intelligent vehicle perception: A survey
- Source :
- Green Energy and Intelligent Transportation, Vol 2, Iss 5, Pp 100125- (2023)
- Publication Year :
- 2023
- Publisher :
- Elsevier, 2023.
-
Abstract
- Deep learning-based intelligent vehicle perception has been developing prominently in recent years to provide a reliable source for motion planning and decision making in autonomous driving. A large number of powerful deep learning-based methods can achieve excellent performance in solving various perception problems of autonomous driving. However, these deep learning methods still have several limitations, for example, the assumption that lab-training (source domain) and real-testing (target domain) data follow the same feature distribution may not be practical in the real world. There is often a dramatic domain gap between them in many real-world cases. As a solution to this challenge, deep transfer learning can handle situations excellently by transferring the knowledge from one domain to another. Deep transfer learning aims to improve task performance in a new domain by leveraging the knowledge of similar tasks learned in another domain before. Nevertheless, there are currently no survey papers on the topic of deep transfer learning for intelligent vehicle perception. To the best of our knowledge, this paper represents the first comprehensive survey on the topic of the deep transfer learning for intelligent vehicle perception. This paper discusses the domain gaps related to the differences of sensor, data, and model for the intelligent vehicle perception. The recent applications, challenges, future researches in intelligent vehicle perception are also explored.
Details
- Language :
- English
- ISSN :
- 27731537
- Volume :
- 2
- Issue :
- 5
- Database :
- Directory of Open Access Journals
- Journal :
- Green Energy and Intelligent Transportation
- Publication Type :
- Academic Journal
- Accession number :
- edsdoj.188d8bd98c27440fa1582a53e8a4d92a
- Document Type :
- article
- Full Text :
- https://doi.org/10.1016/j.geits.2023.100125