Title :
Energy-Based Models in Document Recognition and Computer Vision
Author :
LeCun, Yann ; Chopra, Sumit ; Ranzato, Marc´Aurelio ; Huang, Fu-Jie
Author_Institution :
New York Univ., New York
Abstract :
The machine learning and pattern recognition communities are facing two challenges: solving the normalization problem, and solving the deep learning problem. The normalization problem is related to the difficulty of training probabilistic models over large spaces while keeping them properly normalized. In recent years, the ML and natural language communities have devoted considerable efforts to circumventing this problem by developing "un-normalized" learning models for tasks in which the output is highly structured (e.g. English sentences). This class of models was in fact originally developed during the 90\´s in the handwriting recognition community, and includes graph transformer networks, conditional random fields, hidden Markov SVMs, and maximum margin Markov networks. We describe these models within the unifying framework of "energy-based models" (EBM). The deep learning problem is related to the issue of training all the levels of a recognition system (e.g. segmentation, feature extraction, recognition, etc) in an integrated fashion. We first consider " traditional" methods for deep learning, such as convolutional networks and back-propagation, and show that, although they produce very low error rates for handwriting and object recognition, they require many training samples. We show that using unsupervised learning to initialize the layers of a deep network dramatically reduces the required number of training samples, particularly for such tasks as the recognition of everyday objects at the category level.
Keywords :
backpropagation; computer vision; document image processing; handwriting recognition; natural language processing; unsupervised learning; backpropagation; computer vision; conditional random fields; deep learning problem; document recognition; energy-based models; graph transformer networks; hidden Markov SVM; machine learning; maximum margin Markov networks; natural language; normalization problem; pattern recognition; probabilistic models; unsupervised learning; Computer vision; Error analysis; Feature extraction; Handwriting recognition; Hidden Markov models; Machine learning; Markov random fields; Natural languages; Object recognition; Pattern recognition;
Conference_Titel :
Document Analysis and Recognition, 2007. ICDAR 2007. Ninth International Conference on
Conference_Location :
Parana
Print_ISBN :
978-0-7695-2822-9
DOI :
10.1109/ICDAR.2007.4378728