All Projects → zzw922cn → Awesome Speech Recognition Speech Synthesis Papers

zzw922cn / Awesome Speech Recognition Speech Synthesis Papers

Licence: mit
Automatic Speech Recognition (ASR), Speaker Verification, Speech Synthesis, Text-to-Speech (TTS), Language Modelling, Singing Voice Synthesis (SVS), Voice Conversion (VC)

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awesome-speech-recognition-speech-synthesis-papers

I'm a research engineer doing speech synthesis at Tencent Wechat iHearing Group. I worked on automatic speech recognition, expressive speech synthesis, few-shot speech synthesis, voice conversion, singing voice synthesis and few-shot singing voice synthesis. I collect some papers which I think very interesting in speech field, I hope this project will help you. If you have any questions, welcome to send email to me: [email protected] Thank you for your stars!

Paper List

Automatic Speech Recognition

  • An Introduction to the Application of the Theory of Probabilistic Functions of a Markov Process to Automatic Speech Recognition(1982), S. E. LEVINSON et al. [pdf]

  • A Maximum Likelihood Approach to Continuous Speech Recognition(1983), LALIT R. BAHL et al. [pdf]

  • Heterogeneous Acoustic Measurements and Multiple Classifiers for Speech Recognition(1986), Andrew K. Halberstadt. [pdf]

  • Maximum Mutual Information Estimation of Hidden Markov Model Parameters for Speech Recognition(1986), Lalit R. Bahi et al. [pdf]

  • A Tutorial on Hidden Markov Models and Selected Applications in Speech Recognition(1989), Lawrence R Rabiner. [pdf]

  • Phoneme recognition using time-delay neural networks(1989), Alexander H. Waibel et al. [pdf]

  • Speaker-independent phone recognition using hidden Markov models(1989), Kai-Fu Lee et al. [pdf]

  • Hidden Markov Models for Speech Recognition(1991), B. H. Juang et al. [pdf]

  • Review of Tdnn (time Delay Neural Network) Architectures for Speech Recognition(2014), Masahide Sugiyamat et al. [pdf]

  • Connectionist Speech Recognition: A Hybrid Approach(1994), Herve Bourlard et al. [pdf]

  • A post-processing system to yield reduced word error rates: Recognizer Output Voting Error Reduction (ROVER)(1997), J.G. Fiscus. [pdf]

  • Speech recognition with weighted finite-state transducers(2001), M Mohri et al. [pdf]

  • Framewise phoneme classification with bidirectional LSTM and other neural network architectures(2005), Alex Graves et al. [pdf]

  • Connectionist temporal classification: labelling unsegmented sequence data with recurrent neural networks(2006), Alex Graves et al. [pdf]

  • The kaldi speech recognition toolkit(2011), Daniel Povey et al. [pdf]

  • Applying Convolutional Neural Networks concepts to hybrid NN-HMM model for speech recognition(2012), Ossama Abdel-Hamid et al. [pdf]

  • Context-Dependent Pre-Trained Deep Neural Networks for Large-Vocabulary Speech Recognition(2012), George E. Dahl et al. [pdf]

  • Deep Neural Networks for Acoustic Modeling in Speech Recognition(2012), Geoffrey Hinton et al. [pdf]

  • Sequence Transduction with Recurrent Neural Networks(2012), Alex Graves et al. [pdf]

  • Deep convolutional neural networks for LVCSR(2013), Tara N. Sainath et al. [pdf]

  • Improving deep neural networks for LVCSR using rectified linear units and dropout(2013), George E. Dahl et al. [pdf]

  • Improving low-resource CD-DNN-HMM using dropout and multilingual DNN training(2013), Yajie Miao et al. [pdf]

  • Improvements to deep convolutional neural networks for LVCSR(2013), Tara N. Sainath et al. [pdf]

  • Machine Learning Paradigms for Speech Recognition: An Overview(2013), Li Deng et al. [pdf]

  • Recent advances in deep learning for speech research at Microsoft(2013), Li Deng et al. [pdf]

  • Speech recognition with deep recurrent neural networks(2013), Alex Graves et al. [pdf]

  • Convolutional deep maxout networks for phone recognition(2014), László Tóth et al. [pdf]

  • Convolutional Neural Networks for Speech Recognition(2014), Ossama Abdel-Hamid et al. [pdf]

  • Combining time- and frequency-domain convolution in convolutional neural network-based phone recognition(2014), László Tóth. [pdf]

  • Deep Speech: Scaling up end-to-end speech recognition(2014), Awni Y. Hannun et al. [pdf]

  • End-to-end Continuous Speech Recognition using Attention-based Recurrent NN: First Results(2014), Jan Chorowski et al. [pdf]

  • First-Pass Large Vocabulary Continuous Speech Recognition using Bi-Directional Recurrent DNNs(2014), Andrew L. Maas et al. [pdf]

  • Long short-term memory recurrent neural network architectures for large scale acoustic modeling(2014), Hasim Sak et al. [pdf]

  • Robust CNN-based speech recognition with Gabor filter kernels(2014), Shuo-Yiin Chang et al. [pdf]

  • Stochastic pooling maxout networks for low-resource speech recognition(2014), Meng Cai et al. [pdf]

  • Towards End-to-End Speech Recognition with Recurrent Neural Networks(2014), Alex Graves et al. [pdf]

  • A neural transducer(2015), N Jaitly et al. [pdf]

  • Attention-Based Models for Speech Recognition(2015), Jan Chorowski et al. [pdf]

  • Analysis of CNN-based speech recognition system using raw speech as input(2015), Dimitri Palaz et al. [pdf]

  • Convolutional, Long Short-Term Memory, fully connected Deep Neural Networks(2015), Tara N. Sainath et al. [pdf]

  • Deep convolutional neural networks for acoustic modeling in low resource languages(2015), William Chan et al. [pdf]

  • Deep Neural Networks for Single-Channel Multi-Talker Speech Recognition(2015), Chao Weng et al. [pdf]

  • EESEN: End-to-end speech recognition using deep RNN models and WFST-based decoding(2015), Y Miao et al. [pdf]

  • Fast and Accurate Recurrent Neural Network Acoustic Models for Speech Recognition(2015), Hasim Sak et al. [pdf]

  • Lexicon-Free Conversational Speech Recognition with Neural Networks(2015), Andrew L. Maas et al. [pdf]

  • Online Sequence Training of Recurrent Neural Networks with Connectionist Temporal Classification(2015), Kyuyeon Hwang et al. [pdf]

  • Advances in All-Neural Speech Recognition(2016), Geoffrey Zweig et al. [pdf]

  • Advances in Very Deep Convolutional Neural Networks for LVCSR(2016), Tom Sercu et al. [pdf]

  • End-to-end attention-based large vocabulary speech recognition(2016), Dzmitry Bahdanau et al. [pdf]

  • Deep Convolutional Neural Networks with Layer-Wise Context Expansion and Attention(2016), Dong Yu et al. [pdf]

  • Deep Speech 2: End-to-End Speech Recognition in English and Mandarin(2016), Dario Amodei et al. [pdf]

  • End-to-end attention-based distant speech recognition with Highway LSTM(2016), Hassan Taherian. [pdf]

  • Joint CTC-Attention based End-to-End Speech Recognition using Multi-task Learning(2016), Suyoun Kim et al. [pdf]

  • Listen, attend and spell: A neural network for large vocabulary conversational speech recognition(2016), William Chan et al. [pdf]

  • Latent Sequence Decompositions(2016), William Chan et al. [pdf]

  • Modeling Time-Frequency Patterns with LSTM vs. Convolutional Architectures for LVCSR Tasks(2016), Tara N. Sainath et al. [pdf]

  • Recurrent Models for Auditory Attention in Multi-Microphone Distance Speech Recognition(2016), Suyoun Kim et al. [pdf]

  • Segmental Recurrent Neural Networks for End-to-End Speech Recognition(2016), Liang Lu et al. [pdf]

  • Towards better decoding and language model integration in sequence to sequence models(2016), Jan Chorowski et al. [pdf]

  • Very Deep Convolutional Neural Networks for Noise Robust Speech Recognition(2016), Yanmin Qian et al. [pdf]

  • Very Deep Convolutional Networks for End-to-End Speech Recognition(2016), Yu Zhang et al. [pdf]

  • Very deep multilingual convolutional neural networks for LVCSR(2016), Tom Sercu et al. [pdf]

  • Wav2Letter: an End-to-End ConvNet-based Speech Recognition System(2016), Ronan Collobert et al. [pdf]

  • Attentive Convolutional Neural Network based Speech Emotion Recognition: A Study on the Impact of Input Features, Signal Length, and Acted Speech(2017), Michael Neumann et al. [pdf]

  • An enhanced automatic speech recognition system for Arabic(2017), Mohamed Amine Menacer et al. [pdf]

  • Advances in Joint CTC-Attention based End-to-End Speech Recognition with a Deep CNN Encoder and RNN-LM(2017), Takaaki Hori et al. [pdf]

  • A network of deep neural networks for distant speech recognition(2017), Mirco Ravanelli et al. [pdf]

  • An online sequence-to-sequence model for noisy speech recognition(2017), Chung-Cheng Chiu et al. [pdf]

  • An Unsupervised Speaker Clustering Technique based on SOM and I-vectors for Speech Recognition Systems(2017), Hany Ahmed et al. [pdf]

  • Attention-Based End-to-End Speech Recognition in Mandarin(2017), C Shan et al. [pdf]

  • Building DNN acoustic models for large vocabulary speech recognition(2017), Andrew L. Maas et al. [pdf]

  • Direct Acoustics-to-Word Models for English Conversational Speech Recognition(2017), Kartik Audhkhasi et al. [pdf]

  • Deep Learning for Environmentally Robust Speech Recognition: An Overview of Recent Developments(2017), Zixing Zhang et al. [pdf]

  • English Conversational Telephone Speech Recognition by Humans and Machines(2017), George Saon et al. [pdf]

  • ESE: Efficient Speech Recognition Engine with Sparse LSTM on FPGA(2017), Song Han et al. [pdf]

  • Exploring Speech Enhancement with Generative Adversarial Networks for Robust Speech Recognition(2017), Chris Donahue et al. [pdf]

  • Deep LSTM for Large Vocabulary Continuous Speech Recognition(2017), Xu Tian et al. [pdf]

  • Dynamic Layer Normalization for Adaptive Neural Acoustic Modeling in Speech Recognition(2017), Taesup Kim et al. [pdf]

  • Gram-CTC: Automatic Unit Selection and Target Decomposition for Sequence Labelling(2017), Hairong Liu et al. [pdf]

  • Improving the Performance of Online Neural Transducer Models(2017), Tara N. Sainath et al. [pdf]

  • Learning Filterbanks from Raw Speech for Phone Recognition(2017), Neil Zeghidour et al. [pdf]

  • Multichannel End-to-end Speech Recognition(2017), Tsubasa Ochiai et al. [pdf]

  • Multi-task Learning with CTC and Segmental CRF for Speech Recognition(2017), Liang Lu et al. [pdf]

  • Multichannel Signal Processing With Deep Neural Networks for Automatic Speech Recognition(2017), Tara N. Sainath et al. [pdf]

  • Multilingual Speech Recognition With A Single End-To-End Model(2017), Shubham Toshniwal et al. [pdf]

  • Optimizing expected word error rate via sampling for speech recognition(2017), Matt Shannon. [pdf]

  • Residual Convolutional CTC Networks for Automatic Speech Recognition(2017), Yisen Wang et al. [pdf]

  • Residual LSTM: Design of a Deep Recurrent Architecture for Distant Speech Recognition(2017), Jaeyoung Kim et al. [pdf]

  • Recurrent Models for Auditory Attention in Multi-Microphone Distance Speech Recognition(2017), Suyoun Kim et al. [pdf]

  • Reducing Bias in Production Speech Models(2017), Eric Battenberg et al. [pdf]

  • Robust Speech Recognition Using Generative Adversarial Networks(2017), Anuroop Sriram et al. [pdf]

  • State-of-the-art Speech Recognition With Sequence-to-Sequence Models(2017), Chung-Cheng Chiu et al. [pdf]

  • Towards Language-Universal End-to-End Speech Recognition(2017), Suyoun Kim et al. [pdf]

  • Accelerating recurrent neural network language model based online speech recognition system(2018), K Lee et al. [pdf]

  • An improved hybrid CTC-Attention model for speech recognition(2018), Zhe Yuan et al. [pdf]

  • Hybrid CTC-Attention based End-to-End Speech Recognition using Subword Units(2018), Zhangyu Xiao et al. [pdf]

  • SpecAugment: A Simple Data Augmentation Method for Automatic Speech Recognition, Daniel S. Park et al. [pdf]

  • Improved Noisy Student Training for Automatic Speech Recognition(2020), Daniel S. Park, et al. [pdf]

  • ContextNet: Improving Convolutional Neural Networks for Automatic Speech Recognition with Global Context (2020), Wei Han, et al. [pdf]

  • Conformer: Convolution-augmented Transformer for Speech Recognition(2020), Anmol Gulati, et al. [pdf]

  • On the Comparison of Popular End-to-End Models for Large Scale Speech Recognition(2020), Jinyu Li et al. [pdf]

  • Efficient Training of Audio Transformers with Patchout(2021), Khaled Koutini et al. [pdf]

  • MixSpeech: Data Augmentation for Low-resource Automatic Speech Recognition(2021), Linghui Meng et al. [pdf]

  • Multi-Encoder Learning and Stream Fusion for Transformer-Based End-to-End Automatic Speech Recognition(2021), Timo Lohrenz et al. [pdf]

  • The History of Speech Recognition to the Year 2030(2021), Awni Hannun et al. [pdf]

  • Voice Conversion Can Improve ASR in Very Low-Resource Settings(2021), Matthew Baas et al. [pdf]

  • Why does CTC result in peaky behavior?(2021), Albert Zeyer et al. [pdf]

Speaker Verification

  • Speaker Verification Using Adapted Gaussian Mixture Models(2000), Douglas A.Reynolds et al. [pdf]

  • A tutorial on text-independent speaker verification(2004), Frédéric Bimbot et al. [pdf]

  • Deep neural networks for small footprint text-dependent speaker verification(2014), E Variani et al. [pdf]

  • Deep Speaker Vectors for Semi Text-independent Speaker Verification(2015), Lantian Li et al. [pdf]

  • Deep Speaker: an End-to-End Neural Speaker Embedding System(2017), Chao Li et al. [pdf]

  • Deep Speaker Feature Learning for Text-independent Speaker Verification(2017), Lantian Li et al. [pdf]

  • Deep Speaker Verification: Do We Need End to End?(2017), Dong Wang et al. [pdf]

  • Speaker Diarization with LSTM(2017), Quan Wang et al. [pdf]

  • Text-Independent Speaker Verification Using 3D Convolutional Neural Networks(2017), Amirsina Torfi et al. [pdf]

  • End-to-End Text-Independent Speaker Verification with Triplet Loss on Short Utterances(2017), Chunlei Zhang et al. [pdf]

  • Deep Neural Network Embeddings for Text-Independent Speaker Verification(2017), David Snyder et al. [pdf]

  • Deep Discriminative Embeddings for Duration Robust Speaker Verification(2018), Na Li et al. [pdf]

  • Learning Discriminative Features for Speaker Identification and Verification(2018), Sarthak Yadav et al. [pdf]

  • Large Margin Softmax Loss for Speaker Verification(2019), Yi Liu et al. [pdf]

  • Unsupervised feature enhancement for speaker verification(2019), Phani Sankar Nidadavolu et al. [pdf]

  • Feature enhancement with deep feature losses for speaker verification(2019), Saurabh Kataria et al. [pdf]

  • Generalized end2end loss for speaker verification(2019), Li Wan et al. [pdf]

  • Spatial Pyramid Encoding with Convex Length Normalization for Text-Independent Speaker Verification(2019), Youngmoon Jung et al. [pdf]

  • VoxSRC 2019: The first VoxCeleb Speaker Recognition Challenge(2019), Son Chung et al. [pdf]

  • BUT System Description to VoxCeleb Speaker Recognition Challenge 2019(2019), Hossein Zeinali et al. [pdf]

Voice Conversion

  • Voice conversion using deep Bidirectional Long Short-Term Memory based Recurrent Neural Networks(2015), Lifa Sun et al. [pdf]

  • Phonetic posteriorgrams for many-to-one voice conversion without parallel data training(2016), Lifa Sun et al. [pdf]

  • StarGAN-VC: Non-parallel many-to-many voice conversion with star generative adversarial networks(2018), Hirokazu Kameoka et al. [pdf]

  • AutoVC: Zero-Shot Voice Style Transfer with Only Autoencoder Loss(2019), Kaizhi Qian et al. [pdf]

  • StarGAN-VC2: Rethinking Conditional Methods for StarGAN-Based Voice Conversion(2019), Takuhiro Kaneko et al. [pdf]

  • Unsupervised End-to-End Learning of Discrete Linguistic Units for Voice Conversion(2019), Andy T. Liu et al. [pdf]

  • Attention-Based Speaker Embeddings for One-Shot Voice Conversion(2020), Tatsuma Ishihara et al. [pdf]

  • F0-consistent many-to-many non-parallel voice conversion via conditional autoencoder(2020), Kaizhi Qian et al. [pdf]

  • Recognition-Synthesis Based Non-Parallel Voice Conversion with Adversarial Learning(2020), Jing-Xuan Zhang et al. [pdf]

  • An Improved StarGAN for Emotional Voice Conversion: Enhancing Voice Quality and Data Augmentation(2021), Xiangheng He et al. [pdf]

  • crank: An Open-Source Software for Nonparallel Voice Conversion Based on Vector-Quantized Variational Autoencoder(2021), Kazuhiro Kobayashi et al. [pdf]

  • CVC: Contrastive Learning for Non-parallel Voice Conversion(2021), Tingle Li et al. [pdf]

  • NoiseVC: Towards High Quality Zero-Shot Voice Conversion(2021), Shijun Wang et al. [pdf]

  • On Prosody Modeling for ASR+TTS based Voice Conversion(2021), Wen-Chin Huang et al. [pdf]

  • StarGANv2-VC: A Diverse, Unsupervised, Non-parallel Framework for Natural-Sounding Voice Conversion(2021), Yinghao Aaron Li et al. [pdf]

  • Zero-shot Voice Conversion via Self-supervised Prosody Representation Learning(2021), Shijun Wang et al. [pdf]

Speech Synthesis

  • Signal estimation from modified short-time Fourier transform(1993), Daniel W. Griffin et al. [pdf]

  • Text-to-speech synthesis(2009), Paul Taylor et al. [pdf]

  • A fast Griffin-Lim algorithm(2013), Nathanael Perraudin et al. [pdf]

  • TTS synthesis with bidirectional LSTM based recurrent neural networks(2014), Yuchen Fan et al. [pdf]

  • First Step Towards End-to-End Parametric TTS Synthesis: Generating Spectral Parameters with Neural Attention(2016), Wenfu Wang et al. [pdf]

  • Recent Advances in Google Real-Time HMM-Driven Unit Selection Synthesizer(2016), Xavi Gonzalvo et al. [pdf]

  • SampleRNN: An Unconditional End-to-End Neural Audio Generation Model(2016), Soroush Mehri et al. [pdf]

  • WaveNet: A Generative Model for Raw Audio(2016), Aäron van den Oord et al. [pdf]

  • Char2Wav: End-to-end speech synthesis(2017), J Sotelo et al. [pdf]

  • Deep Voice: Real-time Neural Text-to-Speech(2017), Sercan O. Arik et al. [pdf]

  • Deep Voice 2: Multi-Speaker Neural Text-to-Speech(2017), Sercan Arik et al. [pdf]

  • Deep Voice 3: 2000-Speaker Neural Text-to-speech(2017), Wei Ping et al. [pdf]

  • Natural TTS Synthesis by Conditioning WaveNet on Mel Spectrogram Predictions(2017), Jonathan Shen et al. [pdf]

  • Parallel WaveNet: Fast High-Fidelity Speech Synthesis(2017), Aaron van den Oord et al. [pdf]

  • Statistical Parametric Speech Synthesis Using Generative Adversarial Networks Under A Multi-task Learning Framework(2017), S Yang et al. [pdf]

  • Tacotron: Towards End-to-End Speech Synthesis(2017), Yuxuan Wang et al. [pdf]

  • Uncovering Latent Style Factors for Expressive Speech Synthesis(2017), Yuxuan Wang et al. [pdf]

  • VoiceLoop: Voice Fitting and Synthesis via a Phonological Loop(2017), Yaniv Taigman et al. [pdf]

  • ClariNet: Parallel Wave Generation in End-to-End Text-to-Speech(2018), Wei Ping et al. [pdf]

  • Deep Feed-forward Sequential Memory Networks for Speech Synthesis(2018), Mengxiao Bi et al. [pdf]

  • LPCNet: Improving Neural Speech Synthesis Through Linear Prediction(2018), Jean-Marc Valin et al. [pdf]

  • Learning latent representations for style control and transfer in end-to-end speech synthesis(2018), Ya-Jie Zhang et al. [pdf]

  • Neural Voice Cloning with a Few Samples(2018), Sercan O. Arık et al. [pdf]

  • Predicting Expressive Speaking Style From Text In End-To-End Speech Synthesis(2018), Daisy Stanton et al. [pdf]

  • Style Tokens: Unsupervised Style Modeling, Control and Transfer in End-to-End Speech Synthesis(2018), Y Wang et al. [pdf]

  • Towards End-to-End Prosody Transfer for Expressive Speech Synthesis with Tacotron(2018), RJ Skerry-Ryan et al. [pdf]

  • DurIAN: Duration Informed Attention Network For Multimodal Synthesis(2019), Chengzhu Yu et al. [pdf]

  • Fast spectrogram inversion using multi-head convolutional neural networks(2019), SÖ Arık et al. [pdf]

  • FastSpeech: Fast, Robust and Controllable Text to Speech(2019), Yi Ren et al. [pdf]

  • Learning to Speak Fluently in a Foreign Language: Multilingual Speech Synthesis and Cross-Language Voice Cloning(2019), Yu Zhang et al. [pdf]

  • MelNet: A Generative Model for Audio in the Frequency Domain(2019), Sean Vasquez et al. [pdf]

  • Multi-Speaker End-to-End Speech Synthesis(2019), Jihyun Park et al. [pdf]

  • MelGAN: Generative Adversarial Networks for Conditional Waveform Synthesis(2019), Kundan Kumar et al. [pdf]

  • Neural Speech Synthesis with Transformer Network(2019), Naihan Li et al. [pdf]

  • Parallel Neural Text-to-Speech(2019), Kainan Peng et al. [pdf]

  • Parallel WaveGAN: A fast waveform generation model based on generative adversarial networks with multi-resolution spectrogram(2019), Ryuichi Yamamoto et al. [pdf] it comes out the same time as MelGAN, while no one refers to each other...Besides, I think the gaussian noise is unnecessary, since melspec has very strong information.

  • Problem-Agnostic Speech Embeddings for Multi-Speaker Text-to-Speech with SampleRNN(2019), David Alvarez et al. [pdf]

  • Robust Sequence-to-Sequence Acoustic Modeling with Stepwise Monotonic Attention for Neural TTS(2019), Mutian He et al. [pdf]

  • Towards Transfer Learning for End-to-End Speech Synthesis from Deep Pre-Trained Language Models(2019), Wei Fang et al. [pdf]

  • Transfer Learning from Speaker Verification to Multispeaker Text-To-Speech Synthesis(2019), Ye Jia et al. [pdf]

  • WaveFlow: A Compact Flow-based Model for Raw Audio(2019), Wei Ping et al. [pdf]

  • Waveglow: A flow-based generative network for speech synthesis(2019), R Prenger et al. [pdf]

  • AlignTTS: Efficient Feed-Forward Text-to-Speech System without Explicit Alignmen(2020), Zhen Zeng et al. [pdf]

  • BOFFIN TTS: Few-Shot Speaker Adaptation by Bayesian Optimization(2020), Henry B.Moss et al. [pdf]

  • Bunched LPCNet : Vocoder for Low-cost Neural Text-To-Speech Systems(2020), Ravichander Vipperla et al. [pdf]

  • CopyCat: Many-to-Many Fine-Grained Prosody Transfer for Neural Text-to-Speech(2020), Sri Karlapati et al. [pdf]

  • EfficientTTS: An Efficient and High-Quality Text-to-Speech Architecture(2020), Chenfeng Miao et al. [pdf]

  • End-to-End Adversarial Text-to-Speech(2020), Jeff Donahue et al. [pdf]

  • FastSpeech 2: Fast and High-Quality End-to-End Text to Speech(2020), Yi Ren et al. [pdf]

  • Flowtron: an Autoregressive Flow-based Generative Network for Text-to-Speech Synthesis(2020), Rafael Valle et al. [pdf]

  • Flow-TTS: A Non-Autoregressive Network for Text to Speech Based on Flow(2020), Chenfeng Miao et al. [pdf]

  • Fully-hierarchical fine-grained prosody modeling for interpretable speech synthesis(2020), Guangzhi Sun et al. [pdf]

  • Generating diverse and natural text-to-speech samples using a quantized fine-grained VAE and auto-regressive prosody prior(2020), Guangzhi Sun et al. [pdf]

  • Glow-TTS: A Generative Flow for Text-to-Speech via Monotonic Alignment Search(2020), Jaehyeon Kim et al. [pdf]

  • HiFi-GAN: Generative Adversarial Networks for Efficient and High Fidelity Speech Synthesis(2020), Jungil Kong et al. [pdf]

  • Location-Relative Attention Mechanisms For Robust Long-Form Speech Synthesi(2020), Eric Battenberg et al. [pdf]

  • MultiSpeech: Multi-Speaker Text to Speech with Transformer(2020), Mingjian Chen et al. [pdf]

  • Parallel Tacotron: Non-Autoregressive and Controllable TTS(2020), Isaac Elias et al. [pdf]

  • RobuTrans: A Robust Transformer-Based Text-to-Speech Model(2020), Naihan Li et al. [pdf]

  • Text-Independent Speaker Verification with Dual Attention Network(2020), Jingyu Li et al. [pdf]

  • WaveGrad: Estimating Gradients for Waveform Generation(2020), Nanxin Chen et al. [pdf]

  • AdaSpeech: Adaptive Text to Speech for Custom Voice(2021), Mingjian Chen et al. [pdf]

  • A Survey on Neural Speech Synthesis(2021), Xu Tan et al. [pdf]

  • A Streamwise GAN Vocoder for Wideband Speech Coding at Very Low Bit Rate(2021), Ahmed Mustafa et al. [pdf]

  • Controllable cross-speaker emotion transfer for end-to-end speech synthesis(2021), Tao Li et al. [pdf]

  • Cloning one’s voice using very limited data in the wild(2021), Dongyang Dai et al. [pdf]

  • DiffWave: A Versatile Diffusion Model for Audio Synthesis(2021), Zhifeng Kong et al. [pdf]

  • Diff-TTS: A Denoising Diffusion Model for Text-to-Speech(2021), Myeonghun Jeong et al. [pdf]

  • Fre-GAN: Adversarial Frequency-consistent Audio Synthesis(2021), Ji-Hoon Kim et al. [pdf]

  • Full-band LPCNet: A real-time neural vocoder for 48 kHz audio with a CPU(2021), Keisuke Matsubara et al. [pdf]

  • Grad-TTS: A Diffusion Probabilistic Model for Text-to-Speech(2021), Vadim Popov et al. [pdf]

  • High-fidelity and low-latency universal neural vocoder based on multiband WaveRNN with data-driven linear prediction for discrete waveform modeling(2021), Patrick Lumban Tobing et al. [pdf]

  • Hierarchical Prosody Modeling for Non-Autoregressive Speech Synthesis(2021), Chung-Ming Chien et al. [pdf]

  • ItoˆTTS and ItoˆWave: Linear Stochastic Differential Equation Is All You Need For Audio Generation(2021), Shoule Wu et al. [pdf]

  • Neural HMMs are all you need (for high-quality attention-free TTS)(2021), Shivam Mehta et al. [pdf]

  • Neural Pitch-Shifting and Time-Stretching with Controllable LPCNet(2021), Max Morrison et al. [pdf]

  • One TTS Alignment To Rule Them All(2021), Rohan Badlani et al. [pdf]

  • KaraTuner: Towards end to end natural pitch correction for singing voice in karaoke(2021), Xiaobin Zhuang et al. [pdf]

  • PnG BERT: Augmented BERT on Phonemes and Graphemes for Neural TTS(2021), Ye Jia et al. [pdf]

  • Parallel Tacotron 2: A Non-Autoregressive Neural TTS Model with Differentiable Duration Modeling(2021), Isaac Elias et al. [pdf]

  • Transformer-based Acoustic Modeling for Streaming Speech Synthesis(2021), Chunyang Wu et al. [pdf]

  • Triple M: A Practical Neural Text-to-speech System With Multi-guidance Attention And Multi-band Multi-time Lpcnet(2021), Shilun Lin et al. [pdf]

  • TalkNet 2: Non-Autoregressive Depth-Wise Separable Convolutional Model for Speech Synthesis with Explicit Pitch and Duration Prediction(2021), Stanislav Beliaev et al. [pdf] TalkNet2 has minor difference from TalkNet,so I don't include TalkNet here.

  • Towards Multi-Scale Style Control for Expressive Speech Synthesis(2021), Xiang Li et al. [pdf]

Language Modelling

  • Class-Based n-gram Models of Natural Language(1992), Peter F. Brown et al. [pdf]

  • An empirical study of smoothing techniques for language modeling(1996), Stanley F. Chen et al. [pdf]

  • A Neural Probabilistic Language Model(2000), Yoshua Bengio et al. [pdf]

  • A new statistical approach to Chinese Pinyin input(2000), Zheng Chen et al. [pdf]

  • Discriminative n-gram language modeling(2007), Brian Roark et al. [pdf]

  • Neural Network Language Model for Chinese Pinyin Input Method Engine(2015), S Chen et al. [pdf]

  • Efficient Training and Evaluation of Recurrent Neural Network Language Models for Automatic Speech Recognition(2016), Xie Chen et al. [pdf]

  • Exploring the limits of language modeling(2016), R Jozefowicz et al. [pdf]

  • On the State of the Art of Evaluation in Neural Language Models(2016), G Melis et al. [pdf]

  • Pay Less Attention with Lightweight and Dynamic Convolutions(2019), Felix Wu et al.[pdf]

Confidence Estimates

  • Estimating Confidence using Word Lattices(1997), T. Kemp et al. [pdf]

  • Large vocabulary decoding and confidence estimation using word posterior probabilities(2000), G. Evermann et al. [pdf]

  • Combining Information Sources for Confidence Estimation with CRF Models(2011), M. S. Seigel et al. [pdf]

  • Speaker-Adapted Confidence Measures for ASR using Deep Bidirectional Recurrent Neural Networks(2018), M. ́A. Del-Agua et al. [pdf]

  • Bi-Directional Lattice Recurrent Neural Networks for Confidence Estimation(2018), Q. Li et al. [pdf]

  • Confidence Estimation for Black Box Automatic Speech Recognition Systems Using Lattice Recurrent Neural Networks(2020), A. Kastanos et al. [pdf]

  • CONFIDENCE ESTIMATION FOR ATTENTION-BASED SEQUENCE-TO-SEQUENCE MODELS FOR SPEECH RECOGNITION(2020), Qiujia Li et al. [pdf]

  • Residual Energy-Based Models for End-to-End Speech Recognition(2021), Qiujia Li et al. [pdf]

  • Multi-Task Learning for End-to-End ASR Word and Utterance Confidence with Deletion Prediction(2021), David Qiu et al. [pdf]

Music Modelling

  • Onsets and Frames: Dual-Objective Piano Transcription(2017), Curtis Hawthorne et al. [pdf]

  • Unsupervised Singing Voice Conversion(2019), Eliya Nachmani et al. [pdf]

  • ByteSing- A Chinese Singing Voice Synthesis System Using Duration Allocated Encoder-Decoder Acoustic Models and WaveRNN Vocoders(2020), Yu Gu et al. [pdf]

  • DurIAN-SC: Duration Informed Attention Network based Singing Voice Conversion System(2020), Liqiang Zhang et al. [pdf]

  • HiFiSinger: Towards High-Fidelity Neural Singing Voice Synthesis(2020), Jiawei Chen et al. [pdf]

  • Jukebox: A Generative Model for Music(2020), Prafulla Dhariwal et al. [pdf]

  • MLP Singer: Towards Rapid Parallel Korean Singing Voice Synthesis(2021), Jaesung Tae et al. [pdf]

  • MusicBERT: Symbolic Music Understanding with Large-Scale Pre-Training(2021), Mingliang Zeng et al. [pdf]

  • N-Singer: A Non-Autoregressive Korean Singing Voice Synthesis System for Pronunciation Enhancement(2021), Gyeong-Hoon Lee et al. [pdf]

  • PeriodNet: A non-autoregressive waveform generation model with a structure separating periodic and aperiodic components(2021), Yukiya Hono et al. [pdf]

  • Sequence-to-Sequence Piano Transcription with Transformers(2021), Curtis Hawthorne et al. [pdf]

Interesting papers

  • The Reversible Residual Network: Backpropagation Without Storing Activations(2017), Aidan N. Gomez et al. [pdf]

  • Soft-DTW: a Differentiable Loss Function for Time-Series(2018), Marco Cuturi et al. [pdf]

  • FlowSeq: Non-Autoregressive Conditional Sequence Generation with Generative Flow(2019), Xuezhe Ma et al. [pdf]

  • Learning Problem-agnostic Speech Representations from Multiple Self-supervised Tasks(2019), Santiago Pascual et al. [pdf]

  • Self-supervised audio representation learning for mobile devices(2019), Marco Tagliasacchi et al. [pdf]

  • SinGAN: Learning a Generative Model from a Single Natural Image(2019), Tamar Rott Shaham et al. [pdf]

  • Audio2Face: Generating Speech/Face Animation from Single Audio with Attention-Based Bidirectional LSTM Networks(2019), Guanzhong Tian et al. [pdf]

  • Attention is Not Only a Weight: Analyzing Transformers with Vector Norms(2020), Goro Kobayashi et al. [pdf]

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