Principles of digital processing of medical images (pixel, point operators, convolution, non-linear filters). Image and video Segmentation (active contours, mean shift, graph-based techniques) Partial Differential Equations and image processing (eg. diffusion, –) 2D motion (optic flow, object tracking -Lukas-Kanade, Meanshift, Kalman) Parameter estimation (μετασχ. Hough, μέθοδος ελαχίστων τετραγώνων, RANSAC, active shape models) Geometric tansformations (affine, projective, local-elastic), image registration 3D visualization (3D to surface/volume rendering, image fusion) Image descriptors (texture, area and border descriptors, local image structure: Hessian and Jacobian matrix), Salient points in images (Harris, SHIFT, SURF), Pattern recognition techniques Camera calibration (pinhole model, special wide angle/omnidirectional cameras). Applications: 3D clues from mono-occular and bi-occular images, shape from silhouettes Prerequisites The students should be familiar with basic concepts of Calculus, Linear Algebra, Numerical Analysis and Matlab programming