Authors
Jian Wei, Jianhua He, Yi Zhou, Kai Chen, Zuoyin Tang, Zhiliang Xiong
Publication date
2019/4/22
Journal
IEEE transactions on intelligent transportation systems
Volume
21
Issue
4
Pages
1572-1583
Publisher
IEEE
Description
Object detection is a critical problem for advanced driving assistance systems (ADAS). Recently, convolutional neural networks (CNN) achieved large successes on object detection, with performance improvement over traditional approaches, which use hand-engineered features. However, due to the challenging driving environment (e.g., large object scale variation, object occlusion, and bad light conditions), popular CNN detectors do not achieve very good object detection accuracy over the KITTI autonomous driving benchmark dataset. In this paper, we propose three enhancements for CNN-based visual object detection for ADAS. To address the large object scale variation challenge, deconvolution and fusion of CNN feature maps are proposed to add context and deeper features for better object detection at low feature map scales. In addition, soft non-maximal suppression (NMS) is applied across object …
Total citations
20192020202120222023202462224183119
Scholar articles
J Wei, J He, Y Zhou, K Chen, Z Tang, Z Xiong - IEEE transactions on intelligent transportation systems, 2019