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Dive into the research topics where Jesse Engel is active.

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Featured researches published by Jesse Engel.


conference of the international speech communication association | 2016

Learning Multiscale Features Directly from Waveforms.

Zhenyao Zhu; Jesse Engel; Awni Y. Hannun

Deep learning has dramatically improved the performance of speech recognition systems through learning hierarchies of features optimized for the task at hand. However, true end-to-end learning, where features are learned directly from waveforms, has only recently reached the performance of hand-tailored representations based on the Fourier transform. In this paper, we detail an approach to use convolutional filters to push past the inherent tradeoff of temporal and frequency resolution that exists for spectral representations. At increased computational cost, we show that increasing temporal resolution via reduced stride and increasing frequency resolution via additional filters delivers significant performance improvements. Further, we find more efficient representations by simultaneously learning at multiple scales, leading to an overall decrease in word error rate on a difficult internal speech test set by 20.7% relative to networks with the same number of parameters trained on spectrograms.


international conference on machine learning | 2016

Deep speech 2: end-to-end speech recognition in English and mandarin

Dario Amodei; Sundaram Ananthanarayanan; Rishita Anubhai; Jingliang Bai; Eric Battenberg; Carl Case; Jared Casper; Bryan Catanzaro; Qiang Cheng; Guoliang Chen; Jie Chen; Jingdong Chen; Zhijie Chen; Mike Chrzanowski; Adam Coates; Greg Diamos; Ke Ding; Niandong Du; Erich Elsen; Jesse Engel; Weiwei Fang; Linxi Fan; Christopher Fougner; Liang Gao; Caixia Gong; Awni Y. Hannun; Tony Han; Lappi Vaino Johannes; Bing Jiang; Cai Ju


international conference on machine learning | 2017

Neural Audio Synthesis of Musical Notes with WaveNet Autoencoders

Jesse Engel; Cinjon Resnick; Adam Roberts; Sander Dieleman; Douglas Eck; Karen Simonyan; Mohammad Norouzi


international conference on machine learning | 2016

Persistent RNNs: stashing recurrent weights on-chip

Gregory F. Diamos; Shubho Sengupta; Bryan Catanzaro; Mike Chrzanowski; Adam Coates; Erich Elsen; Jesse Engel; Awni Y. Hannun; Sanjeev Satheesh


arXiv: Sound | 2017

Onsets and Frames: Dual-Objective Piano Transcription.

Curtis Hawthorne; Erich Elsen; Jialin Song; Adam Roberts; Ian Simon; Colin Raffel; Jesse Engel; Sageev Oore; Douglas Eck


Archive | 2017

END-TO-END SPEECH RECOGNITION

Bryan Catanzaro; Jingdong Chen; Mike Chrzanowski; Erich Elsen; Jesse Engel; Christopher Fougner; Xu Han; Awni Y. Hannun; Ryan Prenger; Sanjeev Satheesh; Shubhabrata Sengupta; Dani Yogatama; Chong Wang; Jun Zhan; Zhenyao Zhu; Dario Amodei


Archive | 2017

Hierarchical Variational Autoencoders for Music

Adam Roberts; Jesse Engel; Douglas Eck


Archive | 2017

DEPLOYED END-TO-END SPEECH RECOGNITION

Bryan Catanzaro; Jingdong Chen; Mike Chrzanowski; Erich Elsen; Jesse Engel; Christopher Fougner; Xu Han; Awni Y. Hannun; Ryan Prenger; Sanjeev Satheesh; Shubhabrata Sengupta; Dani Yogatama; Chong Wang; Jun Zhan; Zhenyao Zhu; Dario Amodei


arXiv: Sound | 2018

Enabling Factorized Piano Music Modeling and Generation with the MAESTRO Dataset.

Curtis Hawthorne; Andriy Stasyuk; Adam Roberts; Ian Simon; Cheng-Zhi Anna Huang; Sander Dieleman; Erich Elsen; Jesse Engel; Douglas Eck


arXiv: Machine Learning | 2018

Learning a Latent Space of Multitrack Measures.

Ian Simon; Adam Roberts; Colin Raffel; Jesse Engel; Curtis Hawthorne; Douglas Eck

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