Artificial neural networks

Results: 1630



#Item
111Computational neuroscience / Computer vision / Artificial neural networks / Cybernetics / Applied mathematics / Convolutional neural network / Neuroscience / Image processing / Image segmentation / RGB color model / Deep learning

23rd European Symposium on Artificial Neural Networks (ESANN), Bruges, Belgium, AprilDepth and Height Aware Semantic RGB-D Perception with Convolutional Neural Networks Hannes Schulz, Nico H¨ oft, and Sven Behnk

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Source URL: www.ais.uni-bonn.de

Language: English - Date: 2015-02-24 15:40:22
112Artificial intelligence / Statistics / Machine learning / Learning / Computational neuroscience / Artificial neural networks / Lasso / Word embedding / Language model / Structured sparsity regularization / Matrix regularization

Sparse Models of Natural Language Text Dani Yogatama CMU-LTILanguage Technologies Institute School of Computer Science

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Source URL: www.cs.cmu.edu

Language: English - Date: 2015-08-18 01:45:01
113Chemistry / Statistics / Applied mathematics / Artificial neural networks / Computational neuroscience / Raman scattering / Mathematical psychology / Self-organizing map / Chemometrics / Raman spectroscopy / Salt / Inverse problem

2nd Student Workshop on Ecology and Optics of Coastal Zones, 2016 Kaliningrad, Russia, 19-23 JulyCLUSTER-BASED APPROACH TO THE SOLUTION OF THE INVERSE

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Source URL: www.earsel.org

Language: English - Date: 2016-06-28 13:11:01
114Computational linguistics / Humancomputer interaction / Machine learning / Artificial intelligence / Speech recognition / Speech synthesis / Recurrent neural network / Artificial neural network / Acoustic model / Digital News Network / Hidden Markov model

Minimum trajectory error training for deep neural networks, combined with stacked bottleneck features Zhizheng Wu Simon King

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Source URL: www.cstr.inf.ed.ac.uk

Language: English
115Statistics / Artificial neural networks / Multivariate statistics / Applied mathematics / Signal processing / Machine learning / Computational neuroscience / Computational statistics / Independent component analysis / Factorial code / Sepp Hochreiter / Backpropagation

LOCOCODE PERFORMS NONLINEAR ICA WITHOUT KNOWING THE NUMBER OF SOURCES Sepp Hochreiter Jurgen Schmidhuber

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Source URL: www.bioinf.jku.at

Language: English - Date: 2013-01-23 02:21:28
116Artificial neural networks / Applied mathematics / Cybernetics / Artificial intelligence / Deep learning / Vanishing gradient problem / Recurrent neural network / Long short-term memory / Rectifier / Sepp Hochreiter / Activation function / Feature learning

Workshop track - ICLRU NDERSTANDING VERY DEEP NETWORKS VIA VOLUME CONSERVATION Thomas Unterthiner & Sepp Hochreiter Institute of Bioinformatics

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Source URL: www.bioinf.jku.at

Language: English - Date: 2016-04-06 05:13:16
117Software / Computing / Linguistics / Computational linguistics / Artificial neural networks / Cognitive science / Applied linguistics / Semantics / Twitter / Word2vec / Word embedding / Machine translation

That’s So Annoying!!!: A Lexical and Frame-Semantic Embedding Based Data Augmentation Approach to Automatic Categorization of Annoying Behaviors using #petpeeve Tweets ∗ William Yang Wang and Diyi Yang Language Techn

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Source URL: www.emnlp2015.org

Language: English - Date: 2015-12-05 04:39:08
118Computational neuroscience / 3D computer graphics / Imaging / Artificial neural networks / Cybernetics / Neuroscience / Visual effects / Computer vision / Convolutional neural network / Deep learning / Receptive field / 3D modeling

arXiv:1607.05695v3 [cs.CV] 2 AugFusionNet: 3D Object Classification Using Multiple Data Representations Vishakh Hegde Stanford and Matroid

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Source URL: matroid.com

Language: English - Date: 2016-08-06 03:04:23
119Computational neuroscience / Artificial intelligence / Cybernetics / Neuroscience / Artificial neural networks / Formal sciences / Machine learning / Computer vision / Convolutional neural network / Deep learning / Robotics / Pattern recognition

A deep-network solution towards model-less obstacle avoidance Lei Tai1 , Shaohua Li2 , Ming Liu1,2 Abstract— Obstacle avoidance is the core problem for mobile robots. Its objective is to allow mobile robots to explore

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Source URL: ram-lab.com

Language: English - Date: 2016-08-03 06:46:08
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