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Forecasting Time-to-Collision from Monocular Video: Feasibility,
  Dataset, and Challenges

Forecasting Time-to-Collision from Monocular Video: Feasibility, Dataset, and Challenges

21 March 2019
A. Manglik
Xinshuo Weng
Eshed Ohn-Bar
Kris M. Kitani
ArXivPDFHTML

Papers citing "Forecasting Time-to-Collision from Monocular Video: Feasibility, Dataset, and Challenges"

3 / 3 papers shown
Title
Crowd Density Forecasting by Modeling Patch-based Dynamics
Crowd Density Forecasting by Modeling Patch-based Dynamics
H. Minoura
Ryo Yonetani
Mai Nishimura
Yoshitaka Ushiku
33
12
0
22 Nov 2019
3D Multi-Object Tracking: A Baseline and New Evaluation Metrics
3D Multi-Object Tracking: A Baseline and New Evaluation Metrics
Xinshuo Weng
Jianren Wang
David Held
Kris M. Kitani
VOT
3DPC
24
122
0
09 Jul 2019
Learning Spatio-Temporal Features with Two-Stream Deep 3D CNNs for
  Lipreading
Learning Spatio-Temporal Features with Two-Stream Deep 3D CNNs for Lipreading
Xinshuo Weng
Kris M. Kitani
11
71
0
04 May 2019
1