SOTAVerified

Automatic Speech Recognition (ASR)

Automatic Speech Recognition (ASR) involves converting spoken language into written text. It is designed to transcribe spoken words into text in real-time, allowing people to communicate with computers, mobile devices, and other technology using their voice. The goal of Automatic Speech Recognition is to accurately transcribe speech, taking into account variations in accent, pronunciation, and speaking style, as well as background noise and other factors that can affect speech quality.

Papers

Showing 19511975 of 3012 papers

TitleStatusHype
Latent Dirichlet Allocation Based Acoustic Data Selection for Automatic Speech Recognition0
Lattention: Lattice-attention in ASR rescoring0
Lattice-based Improvements for Voice Triggering Using Graph Neural Networks0
Lattice-Free Sequence Discriminative Training for Phoneme-Based Neural Transducers0
Lattice Rescoring Based on Large Ensemble of Complementary Neural Language Models0
Lattice Transformer for Speech Translation0
Layer Pruning on Demand with Intermediate CTC0
Lead2Gold: Towards exploiting the full potential of noisy transcriptions for speech recognition0
Learned Transferable Architectures Can Surpass Hand-Designed Architectures for Large Scale Speech Recognition0
LearnerVoice: A Dataset of Non-Native English Learners' Spontaneous Speech0
Learning a Dual-Mode Speech Recognition Model via Self-Pruning0
Learning a Neural Diff for Speech Models0
Learning ASR pathways: A sparse multilingual ASR model0
Learning Domain Specific Language Models for Automatic Speech Recognition through Machine Translation0
Learning from Flawed Data: Weakly Supervised Automatic Speech Recognition0
Learning linearly separable features for speech recognition using convolutional neural networks0
Learning not to Discriminate: Task Agnostic Learning for Improving Monolingual and Code-switched Speech Recognition0
Learning Robust Dialog Policies in Noisy Environments0
Learnings from curating a trustworthy, well-annotated, and useful dataset of disordered English speech0
Learning Similarity Functions for Pronunciation Variations0
Learning to Enhance or Not: Neural Network-Based Switching of Enhanced and Observed Signals for Overlapping Speech Recognition0
Learning to Jointly Transcribe and Subtitle for End-to-End Spontaneous Speech Recognition0
Learning to Recognize Code-switched Speech Without Forgetting Monolingual Speech Recognition0
Learning When to Trust Which Teacher for Weakly Supervised ASR0
Learning without Forgetting: Task Aware Multitask Learning for Multi-Modality Tasks0
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1TM-CTCTest WER10.1Unverified
2TM-seq2seqTest WER9.7Unverified
3CTC/attentionTest WER8.2Unverified
4LF-MMI TDNNTest WER6.7Unverified
5Whisper-LLaMATest WER6.6Unverified
6End2end ConformerTest WER3.9Unverified
7End2end ConformerTest WER3.7Unverified
8MoCo + wav2vec (w/o extLM)Test WER2.7Unverified
9CTC/AttentionTest WER1.5Unverified
10WhisperTest WER1.3Unverified
#ModelMetricClaimedVerifiedStatus
1SpatialNetCER14.5Unverified
2CleanMel-L-maskCER14.4Unverified
#ModelMetricClaimedVerifiedStatus
1ConformerTest WER15.32Unverified
2Whisper-largev3-finetunedTest WER10.82Unverified
#ModelMetricClaimedVerifiedStatus
1Conformer TransducerWER (%)1.89Unverified
#ModelMetricClaimedVerifiedStatus
1DistillAVWER1.4Unverified
#ModelMetricClaimedVerifiedStatus
1Conformer TransducerWER (%)4.28Unverified
#ModelMetricClaimedVerifiedStatus
1Conformer TransducerWER (%)8.04Unverified
#ModelMetricClaimedVerifiedStatus
1Conformer TransducerWER (%)3.36Unverified
#ModelMetricClaimedVerifiedStatus
1Conformer Transducer (German)WER (%)8.98Unverified