基于ResNet和BiGRU的藏文唇读

Zhenye Gan, Xu Ding, Xinke Yu, Zhenxing Kong
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引用次数: 0

摘要

唇读,又称视觉语音识别,是一种基于视觉信息的人机交互方式。目前对唇读的研究主要集中在英语和普通话上,对藏语这一资源匮乏的少数民族语言的研究相对较少。因此,本研究提出了一种特定的藏文词级视觉语音识别深度学习模型TLRNet。该模型由ResNet-18架构(残差神经网络)和BiGRU层(双向门控循环单元)组成。我们在TLRW-50数据集上训练和评估它,该数据集由50个常见藏语词组成。该模型的Top-1和Top-5分类准确率分别达到41.82%和59.37%,表明该模型在基于视觉线索的藏语口语词识别中具有潜在的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TLRNet: Tibetan Lip Reading Based on ResNet and BiGRU
Lip reading, also known as visual speech recognition, is a way of human-computer interaction based on visual information. At present, the research on lip reading mainly focuses on English and Mandarin Chinese, and there are relatively few studies on Tibetan, a low-resource minority language. Therefore, the present study proposes a specific deep learning model named the TLRNet for word-level visual speech recognition for Tibetan. The model comprises the ResNet-18 architecture, which is a residual neural network, and the BiGRU layer, a bi-directional gated recurrent unit. We train and evaluate it on the TLRW-50 dataset, which consists of fifty common Tibetan words. Our proposed model achieves Top-1 and Top-5 classification accuracies of 41.82% and 59.37%, respectively, demonstrating its potential effectiveness in recognizing Tibetan spoken words based on visual cues.
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