Face Verification via Class Sparsity Based Supervised Encoding | IEEE Journals & Magazine | IEEE Xplore

Face Verification via Class Sparsity Based Supervised Encoding


Abstract:

Autoencoders are deep learning architectures that learn feature representation by minimizing the reconstruction error. Using an autoencoder as baseline, this paper presen...Show More

Abstract:

Autoencoders are deep learning architectures that learn feature representation by minimizing the reconstruction error. Using an autoencoder as baseline, this paper presents a novel formulation for a class sparsity based supervised encoder, termed as CSSE. We postulate that features from the same class will have a common sparsity pattern/support in the latent space. Therefore, in the formulation of the autoencoder, a supervision penalty is introduced as a jointsparsity promoting l2;1-norm. The formulation of CSSE is derived for a single hidden layer and it is applied for multiple hidden layers using a greedy layer-bylayer learning approach. The proposed CSSE approach is applied for learning face representation and verification experiments are performed on the LFW and PaSC face databases. The experiments show that the proposed approach yields improved results compared to autoencoders and comparable results with state-ofthe-art face recognition algorithms.
Page(s): 1273 - 1280
Date of Publication: 17 May 2016

ISSN Information:

PubMed ID: 27214891

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