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speech-recognition
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A 6 mW, 5,000-word real-time speech recognizer using WFST models - 2015.pdf
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4 years ago
2.84 MB
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A bottom-up modular search approach to large vocabulary continuous speech recognition - 2013.pdf
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4 years ago
1.30 MB
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A character-level decoder without explicit segmentation for neural machine translation - 2016.pdf
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4 years ago
670.93 kB
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A comprehensive study of deep bidirectional LSTM RNNs for acoustic modeling in speech recognition - 2016.pdf
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4 years ago
217.81 kB
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A lecture transcription system combining neural network acoustic and language models - slides - 2013.pdf
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4 years ago
2.24 MB
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A segmental framework for fully-unsupervised large-vocabulary speech recognition - 2016.pdf
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4 years ago
1.03 MB
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A wavenet for speech denoising - 2017.pdf
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4 years ago
685.45 kB
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Achieving human parity in conversational speech recognition - Microsoft - 2016.pdf
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4 years ago
292.11 kB
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Advances in all-neural speech recognition - 2016.pdf
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4 years ago
96.45 kB
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An empirical exploration of CTC acoustic models - 2016.pdf
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4 years ago
148.08 kB
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An overview of speech recognition and synthesis.pdf
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4 years ago
2.74 MB
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Automatic speech recognition and machine translation system for MIT english lectures using MIT and TED corpus - 2013.pdf
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4 years ago
651.05 kB
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Calibration of phone likelihoods in automatic speech recognition - 2016.pdf
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4 years ago
887.13 kB
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Can neural machine translation do simultaneous translation? - 2016.pdf
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4 years ago
642.26 kB
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Character-based neural machine translation - 2015.pdf
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4 years ago
369.96 kB
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Character-level incremental speech recognition with recurrent neural networks - 2016.pdf
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4 years ago
125.44 kB
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Convolutional, long short-term memory, fully connected deep neural networks - Google - 2015.pdf
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4 years ago
172.00 kB
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Deep LSTM for large vocabulary continuous speech recognition - 2017.pdf
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4 years ago
163.88 kB
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Deep neural networks for acoustic modeling in speech recognition - 2012.pdf
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4 years ago
266.96 kB
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Deep speech 2: End-to-end speech recognition in English and Mandarin - 2015.pdf
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4 years ago
857.08 kB
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Deep speech: Scaling up end-to-end speech recognition - Baidu - 2014.pdf
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4 years ago
514.25 kB
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Directly comparing the listening strategies of humans and machines - 2016.pdf
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4 years ago
6.37 MB
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Effective approaches to attention-based neural machine translation - 2015.pdf
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4 years ago
243.97 kB
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End-to-end continuous speech recognition using attention-based recurrent NN: first results - 2014.pdf
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4 years ago
424.75 kB
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End-to-end deep neural network for automatic speech recognition - 2015.pdf
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4 years ago
7.74 kB
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Environmental noise embeddings for robust speech recognition - 2016.pdf
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4 years ago
1.07 MB
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Exploiting deep neural networks for detection-based speech recognition - 2013.pdf
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4 years ago
1.05 MB
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Factored recurrent neural network language model in TED lecture transcription - 2012.pdf
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4 years ago
657.60 kB
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Fast and accurate recurrent neural network acoustic models for speech recognition - 2015.pdf
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4 years ago
322.16 kB
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Formalizing knowledge used in spectrogram reading: Acoustic and perceptual evidence from stops - 1988.pdf
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4 years ago
14.28 MB
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Generating adversarial examples for speech recognition.pdf
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4 years ago
506.02 kB
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Improving searchability of automatically transcribed lectures through dynamic language modelling - dissertation - wikipedia - 2012.pdf
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4 years ago
2.71 MB
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Integrated adaptation with multi-factor joint-learning for far-field speech recognition - 2016.pdf
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4 years ago
304.00 kB
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Intrinsic spectral analysis - 2013.pdf
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4 years ago
1.93 MB
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Intrinsic spectral analysis for zero and high resource speech recognition.pdf
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4 years ago
95.20 kB
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Introducing CURRENNT: The Munich open-source CUDA recurrent neural network toolkit - 2015.pdf
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4 years ago
285.94 kB
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Kaldi PDNN: Building DNN-based ASR systems with kaldi and PDNN - 2014.pdf
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4 years ago
156.67 kB
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Knowledge-based approach to consonant recognition.pdf
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4 years ago
44.12 kB
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Landmark detection for distinctive feature‐based speech recognition - 1996.pdf
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4 years ago
279.80 kB
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Language model adaptation for academic lectures using character recognition result of presentation slides - 2015.pdf
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4 years ago
9.03 kB
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Leveraging large amounts of loosely transcribed corporate videos for acoustic model training - 2011.pdf
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4 years ago
92.02 kB
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Librispeech: an ASR corpus based on public domain audiobooks - 2015.pdf
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4 years ago
94.62 kB
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Lightly supervised acoustic model training for imprecisely and asynchronously transcribed speech - 2013.pdf
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4 years ago
432.71 kB
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Listen, attend and spell - Google - RNNs without CTC not CLDNN-HMM - 2015.pdf
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4 years ago
2.18 MB
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Multi-task recurrent model for speech and speaker recognition - 2016.pdf
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4 years ago
332.71 kB
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Neural machine translation of rare words with subword units - 2015.pdf
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4 years ago
188.69 kB
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Optimizing performance of recurrent neural networks on GPUs - 2016.pdf
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4 years ago
93.06 kB
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Recent progress in the MIT spoken lecture processing project - 2007.pdf
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4 years ago
189.28 kB
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Recurrent support vector machines for speech recognition - 2016.pdf
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4 years ago
109.65 kB
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Robust coherence-based spectral enhancement for speech recognition in adverse real-world environments - 2016.pdf
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4 years ago
326.60 kB
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