语音唤醒论文待看

  • 最近沉迷于语音唤醒,顺便在学术界上把语音唤醒摸个底,稍后可能放出语音唤醒的相关调研报告
  • 带链接的都是有源码的
  • 按照时间线划分

第一部分 来自arXiv

arXiv 中搜索关键词 “Small-footprint Keyword Spotting” 的 2018 - 2020 的paper

arXiv:2002.10851 [pdf, other]
Small-Footprint Open-Vocabulary Keyword Spotting with Quantized LSTM Networks


arXiv:1912.07575 [pdf, other] cs.CL cs.LG
Predicting detection filters for small footprint open-vocabulary keyword spotting


arXiv:1912.05124 [pdf, other] cs.SD cs.CL cs.LG eess.AS
Small-footprint Keyword Spotting with Graph Convolutional Network


arXiv:1911.02086 [pdf, other] eess.AS cs.CL cs.SD
Small-Footprint Keyword Spotting on Raw Audio Data with Sinc-Convolutions

https://paperswithcode.com/paper/small-footprint-keyword-spotting-on-raw-audio


arXiv:1910.05171 [pdf, other] cs.LG cs.CL eess.AS stat.ML
Query-by-example on-device keyword spotting


arXiv:1907.01448 [pdf, other] eess.AS cs.SD
Sub-band Convolutional Neural Networks for Small-footprint Spoken Term Classification


arXiv:1906.09417 [pdf, other] cs.SD cs.HC cs.LG eess.AS
Keyword Spotting for Hearing Assistive Devices Robust to External Speakers


arXiv:1906.08415 [pdf, other] cs.SD cs.LG cs.MM eess.AS
A Monaural Speech Enhancement Method for Robust Small-Footprint Keyword Spotting


arXiv:1811.07684 [pdf, other] cs.LG cs.CL cs.SD eess.AS stat.ML
Efficient keyword spotting using dilated convolutions and gating

https://paperswithcode.com/paper/efficient-keyword-spotting-using-dilated


arXiv:1811.00348 [pdf, ps, other] cs.SD eess.AS
Sequence-to-sequence Models for Small-Footprint Keyword Spotting


arXiv:1803.10916 [pdf, other] cs.SD cs.CL eess.AS
Attention-based End-to-End Models for Small-Footprint Keyword Spotting

第二部分

知乎、论文、简书中摘取

2019年

  • Temporal Convolution for Real-time Keyword Spotting on Mobile Devices
    • https://paperswithcode.com/paper/temporal-convolution-for-real-time-keyword

2018年

  • Shan, et al., “Attention-based end-to-end models for small-footprint keyword spotting”, Interspeech, 2018. 注意力
  • Zhang H, Zhang J, Wang Y. Sequence-to-sequence models for small-footprint keywordspotting[J]. arXiv preprint arXiv:1811.00348, 2018.
    • 基于序列到序列的唤醒词识别模型
  • Deep residual learning for small-footprint keyword spotting[C].IEEE InternationalConference on Acoustics, Speech and Signal Processing (ICASSP). IEEE, Calgary, AB, Canada,Apr.15-20, 2018: 5484-5488
    • https://paperswithcode.com/paper/deep-residual-learning-for-small-footprint
    • 深度残差学习和扩展卷积的唤醒词识别方法

2017 年

  • Audhkhasi, et al., “End-to-end ASR-free keyword search from speech”, ICASSP, 2017.
    • 使用一个 CRNN 语言模型把唤醒词编码成一个嵌入向量。
  • Honk: A PyTorch Reimplementation of Convolutional Neural Networks for Keyword Spotting
    • https://paperswithcode.com/paper/honk-a-pytorch-reimplementation-of
  • He, et al., “Streaming small-footprint keyword spotting using sequence-to-sequence models”, ASRU, 2017.
    • 基于 RNN 的端到端训练的序列到序列的唤醒词模型
  • Arık, et al., “Convolutional recurrent neural networks for small-footprint keyword spotting”, arxiv:1703.05390. 百度
  • 基于CRNN 的唤醒词识别方法
  • Hello Edge: Keyword Spotting on Microcontrollers
    • https://paperswithcode.com/paper/hello-edge-keyword-spotting-on
  • F. Ge and Y. Yan, “Deep neural network based wake-up-word speech recognition with two-stage detection”, ICASSP, 2017.
    • 固定长度的嵌入向量,用序列形式
    • 基于DNN的两阶段检测的唤醒词识别系统
  • Compressed time delay neural network for small-footprint keyword spotting - 2017 INTERSPEECH
    • 为了解决 DNN 带来的搜索延迟和低阶特性
    • 低秩权重矩阵改进了 DNN 网络 23
  • Kumatani, et al., “Direct modeling of raw audio with DNNs for wake word detection”, ASRU, 2017.
  • 提取MFCC特征通过DNN进行训练,类似的有陈果果2014

2016年

  • Sun M, Raju A, Tucker G, et al. Max-pooling loss training of long short-term memory networksfor small-footprint keyword spotting[C].IEEE Spoken Language Technology Workshop (SLT).IEEE, San Diego, CA, USA, Dec.13-16, 2016: 474-480.
    • 用后验平滑的评估 方法估计唤醒词识别性能
    • 最大池化的损失函数训练 LSTM 网络
  • “Investigating neural network based query-by-example keyword spotting approach for personalized wake-up word detection in Mandarin Chinese”, Int’l Symposium on Chinese Spoken Language Processing, 2016.
    • 提出模板匹配,LSTM提取特征,固定长度和特征向量

2015年

  • T. N. Sainath and C. Parada, “Convolutional neural networks for small-footprint keyword spotting”, Interspeech, 2015.
    • 基于 CNN 的唤醒词识别的方法
  • Chen, et al., “Query-by-example keyword spotting using long short-term memory networks”, ICASSP, 2015.
  • 先用神经网络提取特征然后用时间动态规整对唤醒词进行判断

2014年

  • G. Chen, et al., “Small-footprint keyword spotting using deep neural networks”, ICASSP, 2014.
    • 经典,DNN,陈果果,拜读

other 往前就是传统的文章了,暂时不建议阅读

  • 2006年,提出唤醒词和唤醒词识别
  • 2009年,韵律特征研究
  • HMM 训练声学模型,用SVM划分是否唤醒词
  • 动态时间规整算法
    • 模板匹配,距离测量
    • 麦克风阵列检测唤醒词
  • 2014年,嵌入式平台的唤醒词识别系统开发
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