Bbs-kws:the Mandarin Keyword Spotting System Won The Video Keyword Wakeup Challenge
2021 Β· Yuting Yang, Binbin Du, Yingxin Zhang, et al.
Abstract
This paper introduces the system submitted by the Yidun NISP team to the video keyword wakeup challenge. We propose a mandarin keyword spotting system (KWS) with several novel and effective improvements, including a big backbone (B) model, a keyword biasing (B) mechanism and the introduction of syllable modeling units (S). By considering this, we term the total system BBS-KWS as an abbreviation. The BBS-KWS system consists of an end-to-end automatic speech recognition (ASR) module and a KWS module. The ASR module converts speech features to text representations, which applies a big backbone network to the acoustic model and takes syllable modeling units into consideration as well. In addition, the keyword biasing mechanism is used to improve the recall rate of keywords in the ASR inference stage. The KWS module applies multiple criteria to determine the absence or presence of the keywords, such as multi-stage matching, fuzzy matching, and connectionist temporal classification (CTC) pre
Authors
(none)
Tags
Stats
Related papers
- Exploring Sequence-to-sequence Transformer-transducer Models For Keyword Spotting (2022)5.24
- MM-KWS: Multi-modal Prompts For Multilingual User-defined Keyword Spotting (2024)7.81
- DCCRN-KWS: An Audio Bias Based Model For Noise Robust Small-footprint Keyword Spotting (2023)5.24
- Small-footprint Keyword Spotting Using Deep Neural Network And Connectionist Temporal Classifier (2017)0.00
- Llm-synth4kws: Scalable Automatic Generation And Synthesis Of Confusable Data For Custom Keyword Spotting (2025)2.26
- A Monaural Speech Enhancement Method For Robust Small-footprint Keyword Spotting (2019)0.00
- Streaming Small-footprint Keyword Spotting Using Sequence-to-sequence Models (2017)12.40
- Query-by-example Keyword Spotting Using Spectral-temporal Graph Attentive Pooling And Multi-task Learning (2024)0.00