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Training a Binary Weight Object Detector by Knowledge Transfer for
  Autonomous Driving
v1v2 (latest)

Training a Binary Weight Object Detector by Knowledge Transfer for Autonomous Driving

17 April 2018
Jiaolong Xu
Peng Wang
Hengzhang Yang
Antonio M. López
    MQ
ArXiv (abs)PDFHTML

Papers citing "Training a Binary Weight Object Detector by Knowledge Transfer for Autonomous Driving"

6 / 6 papers shown
Designing Object Detection Models for TinyML: Foundations, Comparative Analysis, Challenges, and Emerging Solutions
Designing Object Detection Models for TinyML: Foundations, Comparative Analysis, Challenges, and Emerging SolutionsACM Computing Surveys (ACM Comput. Surv.), 2025
Christophe El Zeinaty
W. Hamidouche
Glenn Herrou
D. Ménard
ObjD
211
0
0
11 Aug 2025
Hardware-Aware DNN Compression for Homogeneous Edge Devices
Hardware-Aware DNN Compression for Homogeneous Edge Devices
Kunlong Zhang
Guiying Li
Ning Lu
Peng Yang
Shengcai Liu
341
2
0
25 Jan 2025
Delving into Multi-modal Multi-task Foundation Models for Road Scene
  Understanding: From Learning Paradigm Perspectives
Delving into Multi-modal Multi-task Foundation Models for Road Scene Understanding: From Learning Paradigm PerspectivesIEEE Transactions on Intelligent Vehicles (TIV), 2024
Sheng Luo
Wei Chen
Wanxin Tian
Rui Liu
Luanxuan Hou
...
Ling Shao
Yi Yang
Bojun Gao
Qun Li
Guobin Wu
478
37
0
05 Feb 2024
Deep Transfer Learning for Intelligent Vehicle Perception: a Survey
Deep Transfer Learning for Intelligent Vehicle Perception: a SurveyGreen Energy and Intelligent Transportation (GEIT), 2023
Xinyi Liu
Jinlong Li
Jin Ma
Huiming Sun
Zhigang Xu
Tianyu Zhang
Hongkai Yu
409
54
0
26 Jun 2023
LIGA-Stereo: Learning LiDAR Geometry Aware Representations for
  Stereo-based 3D Detector
LIGA-Stereo: Learning LiDAR Geometry Aware Representations for Stereo-based 3D Detector
Xiaoyang Guo
Shaoshuai Shi
Xiaogang Wang
Jiaming Song
3DPC
250
131
0
18 Aug 2021
Accelerating deep neural networks for efficient scene understanding in
  automotive cyber-physical systems
Accelerating deep neural networks for efficient scene understanding in automotive cyber-physical systemsIndustrial Cyber-Physical Systems (ICPS), 2021
Stavros Nousias
Erion-Vasilis M. Pikoulis
C. Mavrokefalidis
Aris S. Lalos
AI4CE
187
4
0
19 Jul 2021
1
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