Spatio-Temporal Convolutional Sparse Auto-Encoder for Sequence Classification
Author(s) -
Moez Baccouche,
Franck Mamalet,
Christian Wolf,
Christophe García,
Atilla Baskurt
Publication year - 2012
Language(s) - English
Resource type - Conference proceedings
DOI - 10.5244/c.26.124
Subject(s) - computer science , artificial intelligence , pattern recognition (psychology) , feature learning , autoencoder , convolutional neural network , encoder , feature vector , sequence (biology) , feature (linguistics) , deep learning , mnist database , representation (politics) , recurrent neural network , invariant (physics) , artificial neural network , mathematics , politics , biology , genetics , linguistics , philosophy , political science , law , operating system , mathematical physics
International audienceWe present in this paper a novel learning-based approach for video sequence classication. Contrary to the dominant methodology, which relies on hand-crafted features that are manually engineered to be optimal for a specic task, our neural model automatically learns a sparse shift-invariant representation of the local 2D+t salient information, without any use of prior knowledge. To that aim, a spatio-temporal convolutional sparse auto-encoder is trained to project a given input in a feature space, and to reconstruct it from its projection coordinates. Learning is performed in an unsupervised manner by minimizing a global parametrized objective function. The sparsity is ensured by adding a sparsifying logistic between the encoder and the decoder, while the shift-invariance is handled by including an additional hidden variable to the objective function. The temporal evolution of the obtained sparse features is learned by a long short-term memory recurrent neural network trained to classify each sequence. We show that, since the feature learning process is problem-independent, the model achieves outstanding performances when applied to two different problems, namely human action and facial expression recognition. Obtained results are superior to the state of the art on the GEMEP-FERA dataset and among the very best on the KTH dataset
Accelerating Research
Robert Robinson Avenue,
Oxford Science Park, Oxford
OX4 4GP, United Kingdom
Address
John Eccles HouseRobert Robinson Avenue,
Oxford Science Park, Oxford
OX4 4GP, United Kingdom