Learning SPD-matrix-based Representation for Visual Recognition

來源:科學(xué)技術(shù)處、電子與通信工程系發(fā)布時間:2018-12-21

【講座題目】Learning SPD-matrix-based Representation for Visual Recognition

【講座時間】2018 年 12 月 24 日(星期一) 8:30

【講座地點】保定校區(qū)一校圖書館六樓報告廳

【主 講 人】王雷  副教授、博士生導(dǎo)師、澳大利亞臥龍崗大學(xué)

【主講人簡介】

Lei Wang is now Associate Professor at School of Computing and Information Technology of University of Wollongong, Australia. His research interests include machine learning, pattern recognition, and computer vision. Lei Wang has published 140+ peer-reviewed papers, including those in highly regarded journals and conferences such as IEEE TPAMI, IJCV, CVPR, ICCV and ECCV, etc. He was awarded the Early Career Researcher Award by Australian Academy of Science and Australian Research Council. He served as the General Co-Chair of DICTA 2014 and on the Technical Program Committees of 20+ international conferences and workshops. Lei Wang is senior member of IEEE.

【內(nèi)容簡介】

This talk will report our recent work on learning and designing covariance and generic symmetric positive definite matrices to achieve better recognition. The first part of this talk presents a method called discriminative Stein kernel. It integrates class label information into the Stein kernel to adjust input covariance matrices to enhance its discriminative capability. The second part explores the sparsity structure among features to compute sparse inverse covariance matrix as representation, achieving better recognition performance in the case of high-dimensional features but small sample. The third part moves beyond covariance matrix to employ kernel matrix as feature representation, and jointly learn it in deep learning framework via an end-to-end manner.


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