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Published on Oct 18, 2011
The Fourth Conference on Artificial General Intelligence Mountain View, California, USA August 3-6, 2011
Jürgen Schmidhuber's short talk on fast deep neural networks at AGI 2011 at Google Headquarters, CA. Co-authors: Dan Ciresan, Ueli Meier, Jonathan Masci, Alex Graves.
The deep / recurrent neural networks of Schmidhuber's team keep winning important visual pattern recognition competitions, and are starting to achieve human-competitive results:
9. August 2011: IJCNN 2011 on-site Traffic Sign Recognition Competition (0.56% error rate, nearly three times better than 2nd best algorithm - the only method outperforming humans) 8. June 2011: ICDAR 2011 offline Chinese Handwriting Recognition Competition (1st & 2nd rank) 7. MNIST Handwritten Digit Recognition Benchmark (perhaps the most famous machine learning benchmark). New record (0.35% error rate) in 2010, improved to 0.31% in March 2011, then 0.27% for ICDAR 2011 6. NORB Object Recognition Benchmark. New record (2.53% error rate) in 2011 5. CIFAR-10 Object Recognition Benchmark. New records in 2011, now down to 12% error rate 4. January 2011: Online German Traffic Sign Recognition Contest (1st & 2nd rank; 1.02% error rate) 3. ICDAR 2009 Arabic Connected Handwriting Competition, like the others below won by LSTM recurrent nets (deep by nature). 2. ICDAR 2009 Handwritten Farsi/Arabic Character Recognition Competition 1. ICDAR 2009 French Connected Handwriting Competition based on data from the RIMES campaign
Overview sites with more information and scientific papers: