René Vidal


René Vidal is a Chilean electrical engineer and computer scientist who is known for his research in
machine learning, computer vision,
medical image computing, robotics, and control theory. He is the Herschel L. Seder Professor of the Johns Hopkins Department of Biomedical Engineering, and the founding director of the Mathematical Institute for Data Science.

Biography

Vidal did his undergraduate studies at the Pontificia Universidad Catolica de Chile where he received his Bachelor of Science degree in 1995 and his Master of Engineering degree in 1996. After one year at DICTUC he enrolled at the University of California, Berkeley, where he was awarded an M.Sc. and a Ph.D. in Electrical Engineering and Computer Science in 2000 and 2003, respectively. Before joining Johns Hopkins University in 2004, he was a Research Scientist at the Australian National University and NICTA. Vidal is currently a Professor in the Department of Biomedical Engineering of Johns Hopkins University with secondary appointments in Applied Mathematics and Statistics, Computer Science, Electrical and Computer Engineering, and Mechanical Engineering. He is also a faculty member in the Center for Imaging Science, the Institute for Computational Medicine and the Laboratory for Computational Sensing and Robotics. In 2017, Vidal became the founding director of the Mathematical Institute for Data Science.

Honors and awards

In 2004, Vidal was recognized with the National Science Foundation CAREER Awards.
In 2009, Vidal was recognized by the Office of Naval Research with an award from the Young Investigator Program.
In 2009, Vidal was recognized with a Sloan Research Fellowship in computer science by the Alfred P. Sloan Foundation.
In 2012, Vidal was recognized by the International Association for Pattern Recognition by winning the J.K. Aggarwal Prize for outstanding contributions to generalized principal component analysis and subspace clustering in computer vision and pattern recognition.
In 2014, Vidal was elected IEEE Fellow for contributions to subspace clustering and motion segmentation in computer vision.
In 2016, Vidal was elected IAPR fellow for contributions to computer vision and pattern recognition.
In 2020, Vidal was inducted into AIMBE College of Fellows for outstanding contributions to medical image analysis and medical robotics.

Work

Vidal has been a prominent scientist in the fields of machine learning, computer vision, medical image computing, robotics and control theory since the 2000s. In machine learning, Vidal has made many contributions to subspace clustering, including his work on Generalized Principal Component Analysis, Sparse Subspace Clustering and Low Rank Subspace Clustering. Much of his work in machine learning is summarized in his book Generalized Principal Component Analysis. Currently, he is working on understanding the mathematical foundations of deep learning, specifically conditions for global optimality. In computer vision, Vidal has made many contributions to rigid motion segmentation, activity recognition and dynamic textures. In medical image computing, Vidal developed algorithms for recognition of surgical gestures. In robotics, Vidal developed algorithms for distributed control of unmanned vehicles. In control theory, Vidal studied algebraic conditions for observability of hybrid systems as well as algebraic geometric approaches for the identification of hybrid systems.