TY - JOUR
T1 - Context Model for Pedestrian Intention Prediction Using Factored Latent-Dynamic Conditional Random Fields
AU - Neogi, Satyajit
AU - Hoy, Michael
AU - Dang, Kang
AU - Yu, Hang
AU - Dauwels, Justin
N1 - Publisher Copyright:
© 2000-2011 IEEE.
PY - 2021/11/1
Y1 - 2021/11/1
N2 - Smooth handling of pedestrian interactions is a key requirement for Autonomous Vehicles (AV) and Advanced Driver Assistance Systems (ADAS). Such systems call for early and accurate prediction of a pedestrian's crossing/not-crossing behaviour in front of the vehicle. Existing approaches to pedestrian behaviour prediction make use of pedestrian motion, his/her location in a scene and static context variables such as traffic lights, zebra crossings etc. We stress on the necessity of early prediction for smooth operation of such systems. We introduce the influence of vehicle interactions on pedestrian intention for this purpose. In this paper, we show a discernible advance in prediction time aided by the inclusion of such vehicle interaction context. We apply our methods to two different datasets, one in-house collected-NTU dataset and another public real-life benchmark-JAAD dataset. We also propose a generalization of the Latent-Dynamic Conditional Random Fields (LDCRF), called Factored LDCRF (FLDCRF), for improved sequence prediction performance. FLDCRF outperforms Long Short-Term Memory (LSTM) networks across the datasets over identical time-series features. While the existing best system predicts pedestrian stopping behaviour with 70% accuracy 0.38 seconds before the actual events, our system achieves such accuracy at least 0.9 seconds on an average before the actual events across datasets.
AB - Smooth handling of pedestrian interactions is a key requirement for Autonomous Vehicles (AV) and Advanced Driver Assistance Systems (ADAS). Such systems call for early and accurate prediction of a pedestrian's crossing/not-crossing behaviour in front of the vehicle. Existing approaches to pedestrian behaviour prediction make use of pedestrian motion, his/her location in a scene and static context variables such as traffic lights, zebra crossings etc. We stress on the necessity of early prediction for smooth operation of such systems. We introduce the influence of vehicle interactions on pedestrian intention for this purpose. In this paper, we show a discernible advance in prediction time aided by the inclusion of such vehicle interaction context. We apply our methods to two different datasets, one in-house collected-NTU dataset and another public real-life benchmark-JAAD dataset. We also propose a generalization of the Latent-Dynamic Conditional Random Fields (LDCRF), called Factored LDCRF (FLDCRF), for improved sequence prediction performance. FLDCRF outperforms Long Short-Term Memory (LSTM) networks across the datasets over identical time-series features. While the existing best system predicts pedestrian stopping behaviour with 70% accuracy 0.38 seconds before the actual events, our system achieves such accuracy at least 0.9 seconds on an average before the actual events across datasets.
KW - Autonomous vehicles
KW - conditional random fields
KW - context models
KW - intention prediction
KW - probabilistic graphical models
UR - http://www.scopus.com/inward/record.url?scp=85118859324&partnerID=8YFLogxK
U2 - 10.1109/TITS.2020.2995166
DO - 10.1109/TITS.2020.2995166
M3 - Article
AN - SCOPUS:85118859324
SN - 1524-9050
VL - 22
SP - 6821
EP - 6832
JO - IEEE Transactions on Intelligent Transportation Systems
JF - IEEE Transactions on Intelligent Transportation Systems
IS - 11
ER -