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- Title
Rethinking Feature Generalization in Vacant Space Detection.
- Authors
Manh, Hung-Nguyen
- Abstract
Vacant space detection is critical in modern parking lots. However, deploying a detection model as a service is not an easy task. As the camera in a new parking is set up at different heights or viewing angles from the original parking lot where the training data are collected, the performance of the vacant space detector could be degraded. Therefore, in this paper, we proposed a method to learn generalized features so that the detector can work better in different environments. In detail, the features are suitable for a vacant detection task and robust to environmental change. We use a reparameterization process to model the variance from the environment. In addition, a variational information bottleneck is used to ensure the learned feature focus on only the appearance of a car in a specific parking space. Experimental results show that performances on a new parking lot increase significantly when only data from source parking are used in the training phase.
- Subjects
PARKING lots; GENERALIZATION; PARK use; PARKING facilities; AUTOMOBILE parking; DEEP learning; DETECTORS
- Publication
Sensors (14248220), 2023, Vol 23, Issue 10, p4776
- ISSN
1424-8220
- Publication type
Article
- DOI
10.3390/s23104776