TY - GEN
T1 - Visual Navigation for Autonomous Vehicles
T2 - 12th IEEE Integrated STEM Education Conference, ISEC 2022
AU - Carlone, Luca
AU - Khosoussi, Kasra
AU - Tzoumas, Vasileios
AU - Habibi, Golnaz
AU - Ryll, Markus
AU - Talak, Rajat
AU - Shi, Jingnan
AU - Antonante, Pasquale
N1 - Publisher Copyright:
© 2022 IEEE.
PY - 2022
Y1 - 2022
N2 - This paper reports on the development, execution, and open-sourcing of a new robotics course at MIT. The course is a modern take on 'Visual Navigation for Autonomous Vehicles' (VNAV) and targets first-year graduate students and senior undergraduates with prior exposure to robotics. VNAV has the goal of preparing the students to perform research in robotics and vision-based navigation, with emphasis on drones and self-driving cars. The course spans the entire autonomous navigation pipeline; as such, it covers a broad set of topics, including geometric control and trajectory optimization, 2D and 3D computer vision, visual and visual-inertial odometry, place recognition, simultaneous localization and mapping, and geometric deep learning for perception. VNAV has three key features. First, it bridges traditional computer vision and robotics courses by exposing the challenges that are specific to embodied intelligence, e.g., limited computation and need for just-in-time and robust perception to close the loop over control and decision making. Second, it strikes a balance between depth and breadth by combining rigorous technical notes (including topics that are less explored in typical robotics courses, e.g., on-manifold optimization) with slides and videos showcasing the latest research results. Third, it provides a compelling approach to hands-on robotics education by leveraging a physical drone platform (mostly suitable for small residential courses) and a photo-realistic Unity-based simulator (open-source and scalable to large online courses). VNAV has been offered at MIT in the Falls of 2018-2021 and is now publicly available on MIT OpenCourseWare (OCW) and at vnav.mit.edu/.
AB - This paper reports on the development, execution, and open-sourcing of a new robotics course at MIT. The course is a modern take on 'Visual Navigation for Autonomous Vehicles' (VNAV) and targets first-year graduate students and senior undergraduates with prior exposure to robotics. VNAV has the goal of preparing the students to perform research in robotics and vision-based navigation, with emphasis on drones and self-driving cars. The course spans the entire autonomous navigation pipeline; as such, it covers a broad set of topics, including geometric control and trajectory optimization, 2D and 3D computer vision, visual and visual-inertial odometry, place recognition, simultaneous localization and mapping, and geometric deep learning for perception. VNAV has three key features. First, it bridges traditional computer vision and robotics courses by exposing the challenges that are specific to embodied intelligence, e.g., limited computation and need for just-in-time and robust perception to close the loop over control and decision making. Second, it strikes a balance between depth and breadth by combining rigorous technical notes (including topics that are less explored in typical robotics courses, e.g., on-manifold optimization) with slides and videos showcasing the latest research results. Third, it provides a compelling approach to hands-on robotics education by leveraging a physical drone platform (mostly suitable for small residential courses) and a photo-realistic Unity-based simulator (open-source and scalable to large online courses). VNAV has been offered at MIT in the Falls of 2018-2021 and is now publicly available on MIT OpenCourseWare (OCW) and at vnav.mit.edu/.
KW - Open-source Course Material
KW - Project-based Learning
KW - Robotics and Computer Vision Education
UR - http://www.scopus.com/inward/record.url?scp=85148330281&partnerID=8YFLogxK
U2 - 10.1109/ISEC54952.2022.10025287
DO - 10.1109/ISEC54952.2022.10025287
M3 - Conference contribution
AN - SCOPUS:85148330281
T3 - 2022 IEEE Integrated STEM Education Conference, ISEC 2022
SP - 177
EP - 184
BT - 2022 IEEE Integrated STEM Education Conference, ISEC 2022
PB - Institute of Electrical and Electronics Engineers Inc.
Y2 - 26 March 2022
ER -