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Deep learning based motion estimation from events
Optical flow estimation is the mainstay of dynamic scene understanding in robotics and computer vision. It finds application in SLAM, dynamic obstacle detection, computational photography, and beyond. However, extracting the optical flow from frames is hard due to the discrete nature of frame-based acquisition. Instead, events from an event camera indirectly provide information about optical flow in continuous time. Hence, the intuition is that event cameras are the ideal sensors for optical flow estimation. In this project, you will dig deep into optical flow estimation from events. We will make use of recent innovations in neural network architectures and insights of event camera models to push the state-of-the-art in the field
Keywords: Optical Flow, Machine Learning, Deep Learning, Event Cameras
Optical flow estimation is the mainstay of dynamic scene understanding in robotics and computer vision. It finds application in SLAM, dynamic obstacle detection, computational photography, and beyond. However, extracting the optical flow from frames is hard due to the discrete nature of frame-based acquisition. Instead, events from an event camera indirectly provide information about optical flow in continuous time. Hence, the intuition is that event cameras are the ideal sensors for optical flow estimation. In this project, you will dig deep into optical flow estimation from events. We will make use of recent innovations in neural network architectures and insights of event camera models to push the state-of-the-art in the field. Contact us for more details.
Optical flow estimation is the mainstay of dynamic scene understanding in robotics and computer vision. It finds application in SLAM, dynamic obstacle detection, computational photography, and beyond. However, extracting the optical flow from frames is hard due to the discrete nature of frame-based acquisition. Instead, events from an event camera indirectly provide information about optical flow in continuous time. Hence, the intuition is that event cameras are the ideal sensors for optical flow estimation. In this project, you will dig deep into optical flow estimation from events. We will make use of recent innovations in neural network architectures and insights of event camera models to push the state-of-the-art in the field. Contact us for more details.
The goal of this project is to develop a deep learning based method for dense optical flow estimation from events.
Strong background in computer vision and machine learning required.
The goal of this project is to develop a deep learning based method for dense optical flow estimation from events.
Strong background in computer vision and machine learning required.