ESPnet-se: end-to-end speech enhancement and separation toolkit designed for asr integration (2011.03706v1)
Abstract: We present ESPnet-SE, which is designed for the quick development of speech enhancement and speech separation systems in a single framework, along with the optional downstream speech recognition module. ESPnet-SE is a new project which integrates rich automatic speech recognition related models, resources and systems to support and validate the proposed front-end implementation (i.e. speech enhancement and separation).It is capable of processing both single-channel and multi-channel data, with various functionalities including dereverberation, denoising and source separation. We provide all-in-one recipes including data pre-processing, feature extraction, training and evaluation pipelines for a wide range of benchmark datasets. This paper describes the design of the toolkit, several important functionalities, especially the speech recognition integration, which differentiates ESPnet-SE from other open source toolkits, and experimental results with major benchmark datasets.
- Chenda Li (21 papers)
- Jing Shi (123 papers)
- Wangyou Zhang (35 papers)
- Aswin Shanmugam Subramanian (20 papers)
- Xuankai Chang (61 papers)
- Naoyuki Kamo (13 papers)
- Moto Hira (6 papers)
- Tomoki Hayashi (42 papers)
- Christoph Boeddeker (36 papers)
- Zhuo Chen (319 papers)
- Shinji Watanabe (416 papers)