TY - GEN
T1 - Is decaf good enough for accurate image classification?
AU - Cai, Yajuan
AU - Zhong, Guoqiang
AU - Zheng, Yuchen
AU - Huang, Kaizhu
AU - Dong, Junyu
N1 - Publisher Copyright:
© Springer International Publishing Switzerland 2015.
PY - 2015
Y1 - 2015
N2 - In recent years, deep learning has attracted much interest for addressing complex AI tasks. However, most of the deep learning models need to be trained for a long time in order to obtain good results. To overcome this problem, the deep convolutional activation feature (DeCAF) was proposed, which is directly extracted from the activation of a well trained deep convolutional neural network. Nevertheless, the dimensionality of DeCAF is simply fixed to a constant number. In this case, one may ask whether DeCAF is good enough for image classification applications and whether we can further improve its performance? To answer these two questions, we propose a new model called RS-DeCAF based on “reducing” and “stretching” the dimensionality of DeCAF. In the implementation of RS-DeCAF, we reduce the dimensionality of DeCAF using dimensionality reduction methods, such as PCA, and meanwhile increase the dimensionality by stretching the weight matrix between successive layers. RS-DeCAF is aimed to discover the effective representations of data for classification tasks. As there is no back propagation is needed for network training, RS-DeCAF is very efficient and can be easily applied to large scale problems. Extensive experiments on image classification show that RS-DeCAF not only slightly im proves DeCAF, but dramatically outperforms previous “stretching” and other state-ofthe-art approaches. Hence, RS-DeCAF can be considered as an effective substitute for previous DeCAF and “stretching” approaches.
AB - In recent years, deep learning has attracted much interest for addressing complex AI tasks. However, most of the deep learning models need to be trained for a long time in order to obtain good results. To overcome this problem, the deep convolutional activation feature (DeCAF) was proposed, which is directly extracted from the activation of a well trained deep convolutional neural network. Nevertheless, the dimensionality of DeCAF is simply fixed to a constant number. In this case, one may ask whether DeCAF is good enough for image classification applications and whether we can further improve its performance? To answer these two questions, we propose a new model called RS-DeCAF based on “reducing” and “stretching” the dimensionality of DeCAF. In the implementation of RS-DeCAF, we reduce the dimensionality of DeCAF using dimensionality reduction methods, such as PCA, and meanwhile increase the dimensionality by stretching the weight matrix between successive layers. RS-DeCAF is aimed to discover the effective representations of data for classification tasks. As there is no back propagation is needed for network training, RS-DeCAF is very efficient and can be easily applied to large scale problems. Extensive experiments on image classification show that RS-DeCAF not only slightly im proves DeCAF, but dramatically outperforms previous “stretching” and other state-ofthe-art approaches. Hence, RS-DeCAF can be considered as an effective substitute for previous DeCAF and “stretching” approaches.
KW - DeCAF
KW - Deep convolutional neural network
KW - Feature learning
KW - Image classification
KW - Stretching
UR - http://www.scopus.com/inward/record.url?scp=84951735292&partnerID=8YFLogxK
U2 - 10.1007/978-3-319-26535-3_41
DO - 10.1007/978-3-319-26535-3_41
M3 - Conference Proceeding
AN - SCOPUS:84951735292
SN - 9783319265346
T3 - Lecture Notes in Computer Science (including subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics)
SP - 354
EP - 363
BT - Neural Information Processing - 22nd International Conference, ICONIP 2015, Proceedings
A2 - Lai, Weng Kin
A2 - Liu, Qingshan
A2 - Huang, Tingwen
A2 - Arik, Sabri
PB - Springer Verlag
T2 - 22nd International Conference on Neural Information Processing, ICONIP 2015
Y2 - 9 November 2015 through 12 November 2015
ER -