Search Results for author: Aamir Hasan

Found 7 papers, 3 papers with code

PeRP: Personalized Residual Policies For Congestion Mitigation Through Co-operative Advisory Systems

no code implementations1 Aug 2023 Aamir Hasan, Neeloy Chakraborty, Haonan Chen, Jung-Hoon Cho, Cathy Wu, Katherine Driggs-Campbell

To this end, we develop a co-operative advisory system based on PC policies with a novel driver trait conditioned Personalized Residual Policy, PeRP.

DRAGON: A Dialogue-Based Robot for Assistive Navigation with Visual Language Grounding

1 code implementation13 Jul 2023 Shuijing Liu, Aamir Hasan, Kaiwen Hong, Runxuan Wang, Peixin Chang, Zachary Mizrachi, Justin Lin, D. Livingston McPherson, Wendy A. Rogers, Katherine Driggs-Campbell

Motivated by recent advances in visual-language grounding and semantic navigation, we propose DRAGON, a guiding robot powered by a dialogue system and the ability to associate the environment with natural language.

Towards Co-operative Congestion Mitigation

no code implementations17 Feb 2023 Aamir Hasan, Neeloy Chakraborty, Cathy Wu, Katherine Driggs-Campbell

The effects of traffic congestion are widespread and are an impedance to everyday life.

CoCAtt: A Cognitive-Conditioned Driver Attention Dataset (Supplementary Material)

no code implementations8 Jul 2022 Yuan Shen, Niviru Wijayaratne, Pranav Sriram, Aamir Hasan, Peter Du, Katherine Driggs-Campbell

In addition, the attention data in our dataset is captured in both manual and autopilot modes using eye-tracking devices of different resolutions.

Driver Attention Monitoring

Meta-path Analysis on Spatio-Temporal Graphs for Pedestrian Trajectory Prediction

1 code implementation27 Feb 2022 Aamir Hasan, Pranav Sriram, Katherine Driggs-Campbell

We employ MESRNN for pedestrian trajectory prediction, utilizing these meta-path based features to capture the relationships between the trajectories of pedestrians at different points in time and space.

Action Recognition Pedestrian Trajectory Prediction +2

CoCAtt: A Cognitive-Conditioned Driver Attention Dataset

no code implementations19 Nov 2021 Yuan Shen, Niviru Wijayaratne, Pranav Sriram, Aamir Hasan, Peter Du, Katie Driggs-Campbell

In addition, the attention data in our dataset is captured in both manual and autopilot modes using eye-tracking devices of different resolutions.

Driver Attention Monitoring

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