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公开(公告)号:US12198714B2
公开(公告)日:2025-01-14
申请号:US17850906
申请日:2022-06-27
Applicant: Industrial Technology Research Institute
Inventor: Liang-Hsuan Tai , Hong-Yu Chen , Yen-Ting Wu , Ting-Yu Wang
IPC: G10L25/30 , G10L17/26 , G10L21/0208 , H04B1/40
Abstract: The disclosure relates to a voice signal analysis method and device and a chip design method and device. The voice signal analysis method includes: in a first updating gradient, training a resolution recovery model by using first voice training data meeting a same grouping condition in multiple mission sets; in a second updating gradient, training the resolution recovery model by interleavingly using second voice training data meeting different grouping conditions in the mission sets; iteratively executing the first and second updating gradients to set an initial model parameter of the resolution recovery model; and recovering a high-resolution snore signal from a low-resolution snore signal by using the resolution recovery model. The low-resolution snore signal has a lower resolution than the high-resolution snore signal.
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公开(公告)号:US20230368810A1
公开(公告)日:2023-11-16
申请号:US17850906
申请日:2022-06-27
Applicant: Industrial Technology Research Institute
Inventor: Liang-Hsuan Tai , Hong-Yu Chen , Yen-Ting Wu , Ting-Yu Wang
IPC: G10L25/30 , G10L21/0208 , G10L17/26 , H04B1/40
CPC classification number: G10L25/30 , G10L21/0208 , G10L17/26 , H04B1/40
Abstract: The disclosure relates to a voice signal analysis method and device and a chip design method and device. The voice signal analysis method includes: in a first updating gradient, training a resolution recovery model by using first voice training data meeting a same grouping condition in multiple mission sets; in a second updating gradient, training the resolution recovery model by interleavingly using second voice training data meeting different grouping conditions in the mission sets; iteratively executing the first and second updating gradients to set an initial model parameter of the resolution recovery model; and recovering a high-resolution snore signal from a low-resolution snore signal by using the resolution recovery model. The low-resolution snore signal has a lower resolution than the high-resolution snore signal.
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