| Literature DB >> 33260864 |
Jeng-Lun Shieh1, Qazi Mazhar Ul Haq1, Muhamad Amirul Haq1, Said Karam1, Peter Chondro2, De-Qin Gao2, Shanq-Jang Ruan1.
Abstract
Object detection is an important aspect for autonomous driving vehicles (ADV), which may comprise of a machine learning model that detects a range of classes. As the deployment of ADV widens globally, the variety of objects to be detected may increase beyond the designated range of classes. Continual learning for object detection essentially ensure a robust adaptation of a model to detect additional classes on the fly. This study proposes a novel continual learning method for object detection that learns new object class(es) along with cumulative memory of classes from prior learning rounds to avoid any catastrophic forgetting. The results of PASCAL VOC 2007 have suggested that the proposed ER method obtains 4.3% of mAP drop compared against the all-classes learning, which is the lowest amongst other prior arts.Entities:
Keywords: autonomous driving vehicles; continual learning; one-stage object detection
Year: 2020 PMID: 33260864 PMCID: PMC7730714 DOI: 10.3390/s20236777
Source DB: PubMed Journal: Sensors (Basel) ISSN: 1424-8220 Impact factor: 3.576