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PePScenes: A Novel Dataset and Baseline for Pedestrian Action Prediction
  in 3D

PePScenes: A Novel Dataset and Baseline for Pedestrian Action Prediction in 3D

14 December 2020
Amir Rasouli
Tiffany Yau
P. Lakner
Saber Malekmohammadi
Mohsen Rohani
Jun Luo
    3DPC
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Papers citing "PePScenes: A Novel Dataset and Baseline for Pedestrian Action Prediction in 3D"

4 / 4 papers shown
Title
IntentNet: Learning to Predict Intention from Raw Sensor Data
IntentNet: Learning to Predict Intention from Raw Sensor Data
Sergio Casas
Wenjie Luo
R. Urtasun
3DPC
166
365
0
20 Jan 2021
Multi-Modal Hybrid Architecture for Pedestrian Action Prediction
Multi-Modal Hybrid Architecture for Pedestrian Action Prediction
Amir Rasouli
Tiffany Yau
Mohsen Rohani
Jun Luo
31
43
0
16 Nov 2020
Autonomous Vehicles that Interact with Pedestrians: A Survey of Theory
  and Practice
Autonomous Vehicles that Interact with Pedestrians: A Survey of Theory and Practice
Amir Rasouli
John K. Tsotsos
65
606
0
30 May 2018
Agreeing to Cross: How Drivers and Pedestrians Communicate
Agreeing to Cross: How Drivers and Pedestrians Communicate
Amir Rasouli
Iuliia Kotseruba
John K. Tsotsos
3DV
58
198
0
12 Feb 2017
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