Institute of Neural Information Processing (Prof. Heiko Neumann •

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Presentation transcript:

Vision Science @ Ulm University Institute of Neural Information Processing (Prof. Heiko Neumann • email: heiko.neumann@uni-ulm.de) Computer Vision – Developing core technology for intelligent analysis of sensor data and automation How does the brain control behavior? How can technology emulate biological intelligence? Psychophysics Computational vision Neural modeling Neurophysiology Bioinspired robotics Imaging Computational neuroscience Human-computer interaction Neuroscience Computer Science & Engineering

Neural Modeling Psychophysics Computational Vision Neurophysiology Motion perception Aperture problem Motion segmentation Spatial navigation Attention and visual search Surface boundary detection Feature extraction (Illusory) contours Texture segregation Stereopsis Psychophysics Form & motion perception Eye tracking Computational Vision Multi-scale process. Boundary grouping Motion analysis Neurophysiology ERP for figure-ground analysis Bioinspired Robotics Space-variant active vision Robot navigation Imaging (fMRI) Feature contrast in texture boundaries Human-Computer Interaction Emotion recognition View direction