Predicting the Driver's Focus of Attention: the DR(eye)VE Project Andrea Palazzi, Davide Abati, Simone Calderara, Francesco Solera, Rita Cucchiara (Submitted on 10 May 2017 (v1), last revised 6 Jun 2018 (this version, v3)) In this work we aim to predict the driver's focus of attention. The goal is to estimate what a person would pay attention to while driving, and which part of the scene around the vehicle is more critical for the task. To this end we propose a new computer vision model based on a multi-branch deep architecture that integrates three sources of information: raw video, motion and scene semantics. We also introduce DR(eye)VE, the largest dataset of driving scenes for which eye-tracking annotations are available. This dataset f...
Long before humans will completely trust fully automated vehicles, partial and conditional automatio...
Face of a person conveys a wealth of information about his /her attentive state. Particularly, head ...
This study explores how drivers of an automated vehicle distribute their attention as a function of ...
Predicting the Driver's Focus of Attention: the DR(eye)VE Project Andrea Palazzi, Davide Abati, Sim...
Despite the advent of autonomous cars, it's likely - at least in the near future - that human attent...
Autonomous and assisted driving are undoubtedly hot topics in computer vision. However, the driving ...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Robust driver attention prediction for critical situations is a challenging computer vision problem,...
We introduce HammerDrive, a novel architecture for task-aware visual attention prediction in driving...
Despite many supporting systems, so-called advanced driver assistance systems (ADAS), human error is...
Eye tracking (ET) has been used extensively in driver attention research. Amongst other findings, ET...
Human drivers use their attentional mechanisms to focus on critical objects and make decisions while...
Despite the exciting progress in computer vision in the field of autonomous driving, understanding e...
Recent research progress on the topic of human visual attention allocation in scene perception and i...
Abstract — This paper introduces a system for estimating the attention of a driver wearing a first p...
Long before humans will completely trust fully automated vehicles, partial and conditional automatio...
Face of a person conveys a wealth of information about his /her attentive state. Particularly, head ...
This study explores how drivers of an automated vehicle distribute their attention as a function of ...
Predicting the Driver's Focus of Attention: the DR(eye)VE Project Andrea Palazzi, Davide Abati, Sim...
Despite the advent of autonomous cars, it's likely - at least in the near future - that human attent...
Autonomous and assisted driving are undoubtedly hot topics in computer vision. However, the driving ...
Thesis: M. Eng., Massachusetts Institute of Technology, Department of Electrical Engineering and Com...
Robust driver attention prediction for critical situations is a challenging computer vision problem,...
We introduce HammerDrive, a novel architecture for task-aware visual attention prediction in driving...
Despite many supporting systems, so-called advanced driver assistance systems (ADAS), human error is...
Eye tracking (ET) has been used extensively in driver attention research. Amongst other findings, ET...
Human drivers use their attentional mechanisms to focus on critical objects and make decisions while...
Despite the exciting progress in computer vision in the field of autonomous driving, understanding e...
Recent research progress on the topic of human visual attention allocation in scene perception and i...
Abstract — This paper introduces a system for estimating the attention of a driver wearing a first p...
Long before humans will completely trust fully automated vehicles, partial and conditional automatio...
Face of a person conveys a wealth of information about his /her attentive state. Particularly, head ...
This study explores how drivers of an automated vehicle distribute their attention as a function of ...