DocumentCode
3748901
Title
Geometry-Aware Deep Transform
Author
Jiaji Huang;Qiang Qiu;Robert Calderbank;Guillermo Sapiro
Author_Institution
Duke Univ., Durham, NC, USA
fYear
2015
Firstpage
4139
Lastpage
4147
Abstract
Many recent efforts have been devoted to designing sophisticated deep learning structures, obtaining revolutionary results on benchmark datasets. The success of these deep learning methods mostly relies on an enormous volume of labeled training samples to learn a huge number of parameters in a network; therefore, understanding the generalization ability of a learned deep network cannot be overlooked, especially when restricted to a small training set, which is the case for many applications. In this paper, we propose a novel deep learning objective formulation that unifies both the classification and metric learning criteria. We then introduce a geometry-aware deep transform to enable a non-linear discriminative and robust feature transform, which shows competitive performance on small training sets for both synthetic and real-world data. We further support the proposed framework with a formal (K, ϵ)-robustness analysis.
Keywords
"Training","Measurement","Transforms","Testing","Robustness","Machine learning","Neural networks"
Publisher
ieee
Conference_Titel
Computer Vision (ICCV), 2015 IEEE International Conference on
Electronic_ISBN
2380-7504
Type
conf
DOI
10.1109/ICCV.2015.471
Filename
7410828
Link To Document