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Lightly Supervised Automatic Subtitling of Weather Forecasts

机译:轻微监督天气预报的自动描述

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Since subtitling television content is a costly process, there are large potential advantages to automating it, using automatic speech recognition (ASR). However, training the necessary acoustic models can be a challenge, since the available training data usually lacks verbatim orthographic transcriptions. If there are approximate transcriptions, this problem can be overcome using light supervision methods. In this paper, we perform speech recognition on broadcasts of Weatherview, BBC's daily weather report, as a first step towards automatic subtitling. For training, we use a large set of past broadcasts, using their manually created subtitles as approximate transcriptions. We discuss and and compare two different light supervision methods, applying them to this data. The best training set finally obtained with these methods is used to create a hybrid deep neural network-based recognition system, which yields high recognition accuracies on three separate Weatherview evaluation sets.
机译:由于字幕电视内容是一种昂贵的过程,因此使用自动语音识别(ASR)自动化它具有很大的潜在优势。然而,培训必要的声学模型可能是一个挑战,因为可用的培训数据通常缺乏逐字正交转录。如果有近似的转录,则可以使用光监督方法克服此问题。在本文中,我们对Weatherview广播的演讲识别,BBC每日天气报告,作为朝向自动描述的第一步。对于培训,我们使用一系列过去的广播,使用手动创建的字幕作为近似转录。我们讨论和比较两种不同的光监督方法,将它们应用于此数据。使用这些方法最终获得的最佳训练集用于创建一个混合的基于神经网络的识别系统,它在三个单独的风格欣欣评估集上产生高识别精度。

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