Entropy and orthogonality based deep discriminative feature learning for object recognition

作者:

Highlights:

• We propose a novel discriminative feature learning method of CNNs by enforcing the learned feature vectors to have class-selectivity.

• We propose the entropy–orthogonality loss (EOL) to explicitly enforce that each dimension of the feature vectors only responds strongly to as few classes as possible, and the feature vectors from different classes are as orthogonal as possible.

• We provide the optimization algorithm based on mini-batch for the proposed framework.

• Comprehensive experimental evaluations with both the image classification and face verification tasks demonstrate the effectiveness of the proposed method.

摘要

•We propose a novel discriminative feature learning method of CNNs by enforcing the learned feature vectors to have class-selectivity.•We propose the entropy–orthogonality loss (EOL) to explicitly enforce that each dimension of the feature vectors only responds strongly to as few classes as possible, and the feature vectors from different classes are as orthogonal as possible.•We provide the optimization algorithm based on mini-batch for the proposed framework.•Comprehensive experimental evaluations with both the image classification and face verification tasks demonstrate the effectiveness of the proposed method.

论文关键词:Convolutional neural network (CNN),Discriminative feature learning,Entropy,Orthogonality,Object recognition

论文评审过程:Received 25 July 2017, Revised 2 March 2018, Accepted 27 March 2018, Available online 28 March 2018, Version of Record 6 April 2018.

论文官网地址:https://doi.org/10.1016/j.patcog.2018.03.036