MIT Autonomous Vehicle Technology Study: Large-Scale Deep Learning Based Analysis of Driver Behavior and Interaction with Automation

11/19/2017
by   Lex Fridman, et al.
0

Today, and possibly for a long time to come, the full driving task is too complex an activity to be fully formalized as a sensing-acting robotics system that can be explicitly solved through model-based and learning-based approaches in order to achieve full unconstrained vehicle autonomy. Localization, mapping, scene perception, vehicle control, trajectory optimization, and higher-level planning decisions associated with autonomous vehicle development remain full of open challenges. This is especially true for unconstrained, real-world operation where the margin of allowable error is extremely small and the number of edge-cases is extremely large. Until these problems are solved, human beings will remain an integral part of the driving task, monitoring the AI system as it performs anywhere from just over 0 governing objectives of the MIT Autonomous Vehicle Technology (MIT-AVT) study are to (1) undertake large-scale real-world driving data collection, and (2) gain a holistic understanding of how human beings interact with vehicle automation technology. In pursuing these objectives, we have instrumented 21 Tesla Model S and Model X vehicles, 2 Volvo S90 vehicles, and 2 Range Rover Evoque vehicles for both long-term (over a year per driver) and medium term (one month per driver) naturalistic driving data collection. The recorded data streams include IMU, GPS, CAN messages, and high-definition video streams of the driver face, the driver cabin, the forward roadway, and the instrument cluster. The study is on-going and growing. To date, we have 78 participants, 7,146 days of participation, 275,589 miles, and 3.5 billion video frames. This paper presents the design of the study, the data collection hardware, the processing of the data, and the computer vision algorithms currently being used to extract actionable knowledge from the data.

READ FULL TEXT

page 1

page 2

page 3

page 5

page 10

page 11

page 13

research
05/17/2022

Data-driven Driver Model for Speed Advisory Systems in Partially Automated Vehicles

Vehicle control algorithms exploiting connectivity and automation, such ...
research
04/23/2021

Autonomous Vehicles that Alert Humans to Take-Over Controls: Modeling with Real-World Data

With increasing automation in passenger vehicles, the study of safe and ...
research
12/12/2019

Mcity Data Collection for Automated Vehicles Study

The main goal of this paper is to introduce the data collection effort a...
research
02/22/2021

Adaptive Video Configuration and Bitrate Allocation for Teleoperated Vehicles

Vehicles with autonomous driving capabilities are present on public stre...
research
04/28/2021

Driver State and Behavior Detection Through Smart Wearables

Integrating driver, in-cabin, and outside environment's contextual cues ...
research
08/30/2021

Measuring Interaction-based Secondary Task Load: A Large-Scale Approach using Real-World Driving Data

Center touchscreens are the main HMI (Human-Machine Interface) between t...
research
06/18/2020

A discrete-event simulation model for driver performance assessment: application to autonomous vehicle cockpit design optimization

The latest advances in the design of vehicles with the adaptive level of...

Please sign up or login with your details

Forgot password? Click here to reset