AGC 및 다중 스타일 학습을 통한 소형 키워드 스포팅
Source
Evernote/Inbox/Automatic Gain Control and Multi-style Training for Robust Small-Footprint Keyword Spotting with Deep Neural Networks.md
Summary
이 문서는 딥 뉴럴 네트워크를 이용한 소형 풋프린트 키워드 스포팅(KWS)의 강건성을 높이기 위한 자동 이득 제어(AGC)와 다중 스타일 학습 기법을 다룬 Google 연구 논문(2015)의 저장 링크입니다.
Key Points
- 주제: 딥 뉴럴 네트워크 기반 소형 키워드 스포팅(KWS)의 강건성 향상
- 방법론: 자동 이득 제어(AGC) 및 다중 스타일 학습(Multi-style Training)
- 출처: Google 연구진(Rohit Prabhavalkar 외) 논문, 2015년 2월
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