An Introduction to Computer Vision& Pattern Recognition Group

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Presentation transcript:

An Introduction to Computer Vision& Pattern Recognition Group Chengliang Hu University of York, 15 February, 2018

Computer Vision& Pattern Recognition Group (Staff)

Computer Vision & Pattern Recognition Group ( PhD Students and their work) around 10 PhD students. Some available photos are: “3D mesh steganalysis using local shape feature” Zhengyu Li & Adrian Bors “Functional faces: Groupwise dense correspondence using functional maps” Chao Zhang et al. “3D morphable models as spatial transformer network” Anil bas et al.

Computer Vision& Pattern Recognition Group (Research and applications) Graph theory: creating new shape descriptors and shape analysis methods, graph embedding, manifold learning; complex networks; graph matching and characterisation,… Shape analysis for diffusion MR images Face recognition; shape modelling; shape from shading, shape from motion, …

Computer Vision & Pattern Recognition Group ( Selected publications)