Invention Grant
- Patent Title: Audio source separation based on flexible pre-trained probabilistic source models
- Patent Title (中): 基于灵活的预训练概率源模型的音源分离
-
Application No.: US11607473Application Date: 2006-12-01
-
Publication No.: US08014536B2Publication Date: 2011-09-06
- Inventor: Hagai Thomas Attias
- Applicant: Hagai Thomas Attias
- Applicant Address: US CA San Francisco
- Assignee: Golden Metallic, Inc.
- Current Assignee: Golden Metallic, Inc.
- Current Assignee Address: US CA San Francisco
- Agency: Lumen Patent Firm
- Main IPC: H04R29/00
- IPC: H04R29/00 ; H04B3/00 ; G10L15/00

Abstract:
Improved audio source separation is provided by providing an audio dictionary for each source to be separated. Thus the invention can be regarded as providing “partially blind” source separation as opposed to the more commonly considered “blind” source separation problem, where no prior information about the sources is given. The audio dictionaries are probabilistic source models, and can be derived from training data from the sources to be separated, or from similar sources. Thus a library of audio dictionaries can be developed to aid in source separation. An unmixing and deconvolutive transformation can be inferred by maximum likelihood (ML) given the received signals and the selected audio dictionaries as input to the ML calculation. Optionally, frequency-domain filtering of the separated signal estimates can be performed prior to reconstructing the time-domain separated signal estimates. Such filtering can be regarded as providing an “audio skin” for a recovered signal.
Public/Granted literature
- US20070154033A1 Audio source separation based on flexible pre-trained probabilistic source models Public/Granted day:2007-07-05
Information query