计算机软件新技术国家重点实验室(南京大学)
南京大学计算机科学与技术系
南京大学软件学院
南京大学人工智能学院
摘 要:
Given a convolutional neural network (CNN) architecture, its network
parameters are determined by backpropagation (BP) nowadays. The underlying
mechanism remains to be a black-box after a large amount of theoretical
investigation. In this talk, I describe a new interpretable feedforward (FF)
design with the LeNet-5 as an example. The FF-designed CNN is a data-centric
approach that derives network parameters based on training data statistics
layer by layer in one pass. To build the convolutional layers, we develop a new
signal transform, called the Saab (Subspace approximation with adjusted bias)
transform. The bias in filter weights is chosen to annihilate nonlinearity of
the activation function. To build the fully-connected (FC) layers, we adopt a
label-guided linear least squared regression (LSR) method. To generalize the FF
design idea furthermore, we present the notion of “successive subspace learning
(SSL)” and present a couple of concrete methods for image and point cloud
classification. Extensive experimental results are given to demonstrate the
competitive performance of the SSL-based systems. Similarities and differences
between SSL and deep learning (DL) are discussed.
报告人简介:
Dr. C.-C. Jay Kuo received his Ph.D. degree from the Massachusetts
Institute of Technology in 1987. He is now with the University of Southern
California (USC) as Director of the Media Communications Laboratory and
Distinguished Professor of Electrical Engineering and Computer Science. His
research interests are in the areas of media processing, compression and
understanding. Dr. Kuo was the Editor-in-Chief for the IEEE Trans. on
Information Forensics and Security in 2012-2014. Dr. Kuo is a Fellow of AAAS,
IEEE and SPIE. He has guided 150 students to their Ph.D. degrees and supervised
29 postdoctoral research fellows. Dr. Kuo is a co-author of 280 journal papers,
920 conference papers and 14 books. Dr. Kuo received the 2016 IEEE Computer
Society Taylor L. Booth Education Award, the 2016 IEEE Circuits and Systems
Society John Choma Education Award, the 2016 IS&T Raymond C. Bowman Award,
the 2017 IEEE Leon K. Kirchmayer Graduate Teaching Award, the 2017 IEEE Signal
Processing Society Education Award, and the 2019 IEEE Computer Society Edward
J. McCluskey Technical Achievement Award.
时间:10月8日(星期二)10:30-11:30 地点:计算机科学技术楼111室
|