DocumentCode :
70717
Title :
Good Practice in Large-Scale Learning for Image Classification
Author :
Akata, Zeynep ; Perronnin, Florent ; Harchaoui, Zaid ; Schmid, Cordelia
Author_Institution :
Xerox Res. Centre Eur., Meylan, France
Volume :
36
Issue :
3
fYear :
2014
fDate :
Mar-14
Firstpage :
507
Lastpage :
520
Abstract :
We benchmark several SVM objective functions for large-scale image classification. We consider one-versus-rest, multiclass, ranking, and weighted approximate ranking SVMs. A comparison of online and batch methods for optimizing the objectives shows that online methods perform as well as batch methods in terms of classification accuracy, but with a significant gain in training speed. Using stochastic gradient descent, we can scale the training to millions of images and thousands of classes. Our experimental evaluation shows that ranking-based algorithms do not outperform the one-versus-rest strategy when a large number of training examples are used. Furthermore, the gap in accuracy between the different algorithms shrinks as the dimension of the features increases. We also show that learning through cross-validation the optimal rebalancing of positive and negative examples can result in a significant improvement for the one-versus-rest strategy. Finally, early stopping can be used as an effective regularization strategy when training with online algorithms. Following these "good practices," we were able to improve the state of the art on a large subset of 10K classes and 9M images of ImageNet from 16.7 percent Top-1 accuracy to 19.1 percent.
Keywords :
gradient methods; image classification; learning (artificial intelligence); support vector machines; ImageNet; SVM objective functions; batch learning methods; classification accuracy; cross-validation; early stopping; large-scale image classification; large-scale learning; multiclass SVM; one-versus-rest SVM; online learning methods; ranking SVM; regularization strategy; stochastic gradient descent; support vector machines; training speed; weighted approximate ranking SVM; Accuracy; Encoding; Linear programming; Optimization; Support vector machines; Training; Visualization; Large scale; SVM; fine-grained visual categorization; image classification; ranking; stochastic learning;
fLanguage :
English
Journal_Title :
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher :
ieee
ISSN :
0162-8828
Type :
jour
DOI :
10.1109/TPAMI.2013.146
Filename :
6574852
Link To Document :
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