HyperAI

Speech Recognition On Switchboard Hub500

المقاييس

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النتائج

نتائج أداء النماذج المختلفة على هذا المعيار القياسي

اسم النموذج
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Paper TitleRepository
HMM-TDNN + iVectors11--
DNN MMI12.9--
HMM-TDNN + pNorm + speed up/down speech12.9--
IBM 20158.0The IBM 2015 English Conversational Telephone Speech Recognition System-
Microsoft 20166.2The Microsoft 2016 Conversational Speech Recognition System-
CNN11.5--
DNN-HMM18.5--
RNN + VGG + LSTM acoustic model trained on SWB+Fisher+CH, N-gram + "model M" + NNLM language model6.6The IBM 2016 English Conversational Telephone Speech Recognition System-
DNN16Building DNN Acoustic Models for Large Vocabulary Speech Recognition
DNN MPE12.9--
CNN on MFSC/fbanks + 1 non-conv layer for FMLLR/I-Vectors concatenated in a DNN10.4--
Deep Speech + FSH12.6Deep Speech: Scaling up end-to-end speech recognition
IBM (LSTM encoder-decoder)4.7Single headed attention based sequence-to-sequence model for state-of-the-art results on Switchboard-
DNN + Dropout15Building DNN Acoustic Models for Large Vocabulary Speech Recognition
CNN-LSTM6.6Achieving Human Parity in Conversational Speech Recognition-
VGG/Resnet/LACE/BiLSTM acoustic model trained on SWB+Fisher+CH, N-gram + RNNLM language model trained on Switchboard+Fisher+Gigaword+Broadcast6.3The Microsoft 2016 Conversational Speech Recognition System-
IBM (LSTM+Conformer encoder-decoder)4.3On the limit of English conversational speech recognition-
ResNet + BiLSTMs acoustic model5.5English Conversational Telephone Speech Recognition by Humans and Machines-
HMM-DNN +sMBR12.6--
RNNLM6.9The Microsoft 2016 Conversational Speech Recognition System-
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