Visual Speech Recognition in a Driver Assistance System

Visual speech recognition or automated lipreading is a field of growing attention. Video data proved its usefulness in multimodal speech recognition, especially when acoustic data is heavily noised or even inaccessible. In this paper, we present a novel method for visual speech recognition. We benchmark it on the famous LRW lip-reading dataset by outperforming the existing approaches. After a comprehensive evaluation, we adapt the developed method and test it on the collected RUSAVIC corpus we recorded in-the-wild for vehicle driver. The results obtained demonstrate not only the high performance of the proposed method, but also the fundamental possibility of recognizing speech only by using video modality, even in such difficult natural conditions as driving.

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Datasets


Results from the Paper


Task Dataset Model Metric Name Metric Value Global Rank Benchmark
Lipreading Lip Reading in the Wild Vosk + MediaPipe + LS + MixUp + SA + 3DResNet-18 + BiLSTM + Cosine WR Top-1 Accuracy 88.7 # 3

Methods