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Dive into the research topics where David Warde-Farley is active.

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Featured researches published by David Warde-Farley.


international conference on multimodal interfaces | 2013

Combining modality specific deep neural networks for emotion recognition in video

Samira Ebrahimi Kahou; Chris Pal; Xavier Bouthillier; Pierre Froumenty; Caglar Gulcehre; Roland Memisevic; Pascal Vincent; Aaron C. Courville; Yoshua Bengio; Raul Chandias Ferrari; Mehdi Mirza; Sébastien Jean; Pierre-Luc Carrier; Yann N. Dauphin; Nicolas Boulanger-Lewandowski; Abhishek Aggarwal; Jeremie Zumer; Pascal Lamblin; Jean-Philippe Raymond; Guillaume Desjardins; Razvan Pascanu; David Warde-Farley; Atousa Torabi; Arjun Sharma; Emmanuel Bengio; Myriam Côté; Kishore Reddy Konda; Zhenzhou Wu

In this paper we present the techniques used for the University of Montréals team submissions to the 2013 Emotion Recognition in the Wild Challenge. The challenge is to classify the emotions expressed by the primary human subject in short video clips extracted from feature length movies. This involves the analysis of video clips of acted scenes lasting approximately one-two seconds, including the audio track which may contain human voices as well as background music. Our approach combines multiple deep neural networks for different data modalities, including: (1) a deep convolutional neural network for the analysis of facial expressions within video frames; (2) a deep belief net to capture audio information; (3) a deep autoencoder to model the spatio-temporal information produced by the human actions depicted within the entire scene; and (4) a shallow network architecture focused on extracted features of the mouth of the primary human subject in the scene. We discuss each of these techniques, their performance characteristics and different strategies to aggregate their predictions. Our best single model was a convolutional neural network trained to predict emotions from static frames using two large data sets, the Toronto Face Database and our own set of faces images harvested from Google image search, followed by a per frame aggregation strategy that used the challenge training data. This yielded a test set accuracy of 35.58%. Using our best strategy for aggregating our top performing models into a single predictor we were able to produce an accuracy of 41.03% on the challenge test set. These compare favorably to the challenge baseline test set accuracy of 27.56%.


neural information processing systems | 2014

Generative Adversarial Nets

Ian J. Goodfellow; Jean Pouget-Abadie; Mehdi Mirza; Bing Xu; David Warde-Farley; Sherjil Ozair; Aaron C. Courville; Yoshua Bengio


international conference on machine learning | 2013

Maxout Networks

Ian J. Goodfellow; David Warde-Farley; Mehdi Mirza; Aaron C. Courville; Yoshua Bengio


arXiv: Symbolic Computation | 2012

Theano: new features and speed improvements

Frédéric Bastien; Pascal Lamblin; Razvan Pascanu; James Bergstra; Ian J. Goodfellow; Arnaud Bergeron; Nicolas Bouchard; David Warde-Farley; Yoshua Bengio


Medical Image Analysis | 2017

Brain tumor segmentation with Deep Neural Networks

Mohammad Havaei; Axel Davy; David Warde-Farley; Antoine Biard; Aaron C. Courville; Yoshua Bengio; Chris Pal; Pierre-Marc Jodoin; Hugo Larochelle


Proceedings of the 9th Python in Science Conference | 2010

Theano: A CPU and GPU Math Compiler in Python

James Bergstra; Olivier Breuleux; Frédéric Bastien; Pascal Lamblin; Razvan Pascanu; Guillaume Desjardins; Joseph P. Turian; David Warde-Farley; Yoshua Bengio


arXiv: Machine Learning | 2013

Pylearn2: a machine learning research library.

Ian J. Goodfellow; David Warde-Farley; Pascal Lamblin; Vincent Dumoulin; Mehdi Mirza; Razvan Pascanu; James Bergstra; Frédéric Bastien; Yoshua Bengio


Archive | 2012

Theano: Deep Learning on GPUs with Python

James Bergstra; Frédéric Bastien; Olivier Breuleux; Pascal Lamblin; Razvan Pascanu; Olivier Delalleau; Guillaume Desjardins; David Warde-Farley; Ian J. Goodfellow; Arnaud Bergeron; Yoshua Bengio


international conference on machine learning | 2012

Unsupervised and Transfer Learning Challenge: a Deep Learning Approach

Grégoire Mesnil; Yann N. Dauphin; Xavier Glorot; Salah Rifai; Yoshua Bengio; Ian J. Goodfellow; Erick Lavoie; Xavier Muller; Guillaume Desjardins; David Warde-Farley; Pascal Vincent; Aaron C. Courville; James Bergstra


Journal on Multimodal User Interfaces | 2016

EmoNets: Multimodal deep learning approaches for emotion recognition in video

Samira Ebrahimi Kahou; Xavier Bouthillier; Pascal Lamblin; Caglar Gulcehre; Vincent Michalski; Kishore Reddy Konda; Sébastien Jean; Pierre Froumenty; Yann N. Dauphin; Nicolas Boulanger-Lewandowski; Raul Chandias Ferrari; Mehdi Mirza; David Warde-Farley; Aaron C. Courville; Pascal Vincent; Roland Memisevic; Chris Pal; Yoshua Bengio

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Yoshua Bengio

Université de Montréal

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James Bergstra

Université de Montréal

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Mehdi Mirza

Université de Montréal

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Pascal Lamblin

Université de Montréal

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Pascal Vincent

Université de Montréal

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