DocumentCode :
639453
Title :
Efficient Large-Scale Structured Learning
Author :
Branson, Steve ; Beijbom, Oscar ; Belongie, Serge
Author_Institution :
Caltech, Pasadena, CA, USA
fYear :
2013
fDate :
23-28 June 2013
Firstpage :
1806
Lastpage :
1813
Abstract :
We introduce an algorithm, SVM-IS, for structured SVM learning that is computationally scalable to very large datasets and complex structural representations. We show that structured learning is at least as fast-and often much faster-than methods based on binary classification for problems such as deformable part models, object detection, and multiclass classification, while achieving accuracies that are at least as good. Our method allows problem-specific structural knowledge to be exploited for faster optimization by integrating with a user-defined importance sampling function. We demonstrate fast train times on two challenging large scale datasets for two very different problems: Image Net for multiclass classification and CUB-200-2011 for deformable part model training. Our method is shown to be 10-50 times faster than SVMstruct for cost-sensitive multiclass classification while being about as fast as the fastest 1-vs-all methods for multiclass classification. For deformable part model training, it is shown to be 50-1000 times faster than methods based on SVMstruct, mining hard negatives, and Pegasos-style stochastic gradient descent. Source code of our method is publicly available.
Keywords :
data structures; image classification; learning (artificial intelligence); object detection; optimisation; sampling methods; support vector machines; 1-vs-all methods; CUB-200-2011; Image Net; Pegasos-style stochastic gradient descent; SVM-IS; SVMstruct; binary classification; complex structural representations; cost-sensitive multiclass classification; deformable part model training; deformable part models; large datasets; large scale datasets; large-scale structured learning; mining hard negatives; object detection; optimization; problem-specific structural knowledge; structured SVM learning; user-defined importance sampling function; Approximation algorithms; Deformable models; Feature extraction; Optimization; Support vector machines; Training; Vectors; cost-sensitive SVM; deformable part models; object detection; optimization; structured learning; sub-gradient;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computer Vision and Pattern Recognition (CVPR), 2013 IEEE Conference on
Conference_Location :
Portland, OR
ISSN :
1063-6919
Type :
conf
DOI :
10.1109/CVPR.2013.236
Filename :
6619080
Link To Document :
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