Title :
Learning Deep Neural Networks for High Dimensional Output Problems
Author :
Labbe, Bastien ; Herault, R. ; Chatelain, Clément
Author_Institution :
INSA de Rouen, St. Etienne du Rouvray, France
Abstract :
State-of-the-art pattern recognition methods have difficulties dealing with problems where the dimension of the output space is large. In this article, we propose a framework based on deep architectures (e. g. deep neural networks) in order to deal with this issue. Deep architectures have proven to be efficient for high dimensional input problems such as image classification, due to their ability to embed the input space. The main contribution of this article is the extension of the embedding procedure to both the input and output spaces to easily handle complex outputs. Using this extension, inter-output dependencies can be modelled efficiently. This provides an interesting alternative to probabilistic models such as HMM and CRF. Preliminary experiments on toy datasets and USPS character reconstruction show promising results.
Keywords :
hidden Markov models; image recognition; image segmentation; learning (artificial intelligence); neural net architecture; probability; random processes; HMM; USPS character reconstruction; conditional random field; deep architectures; deep neural network learning; high dimensional output problems; image classification; image segmentation; pattern recognition method; probabilistic models; toy datasets; Decoding; Handwriting recognition; Hidden Markov models; Image reconstruction; Image segmentation; Kernel; Learning systems; Machine learning; Neural networks; Pattern recognition; High dimensional output; Image Segmentation; Neural Networks;
Conference_Titel :
Machine Learning and Applications, 2009. ICMLA '09. International Conference on
Conference_Location :
Miami Beach, FL
Print_ISBN :
978-0-7695-3926-3
DOI :
10.1109/ICMLA.2009.48