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Title Semantic Fusion-Based Pedestrian Detection For Supporting Autonomous Vehicles
ID_Doc 48231
Authors Sha M.; Boukerche A.
Year 2020
Published Proceedings - IEEE Symposium on Computers and Communications, 2020-July
DOI http://dx.doi.org/10.1109/ISCC50000.2020.9219723
Abstract To increase traffic safety and transportation efficiency, adopting intelligent transportation systems (ITS) has become a trend. As an important component of ITS, one essential task of autonomous vehicles is to detect pedestrians accurately, which is of great significance for improving traffic safety and building a smart city. In this paper, we propose an anchor-free pedestrian detection model named Bi-Center Network (BCNet) by fusing the full body center and visible part center for each pedestrian. Experimental results show that the performance of pedestrian detection can be improved with a strengthened heatmap, which combines the full body with the visible part semantic. We compare our BCNet with state-of-the-art models on the CityPersons dataset and the ETH dataset, which shows that our approach is effective. Compared to the backbone model, our BCNet improves the detection accuracy by 1.2% on the Reasonable setup and Partial Setup of the CityPersons dataset. © 2020 IEEE.
Author Keywords autonomous vehicle; convolutional neural network; Intelligent transportation system; pedestrian detection


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