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Annotation Error Detection: Anomaly Detection vs. Classification

机译:注释错误检测:异常检测与分类

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We compare two approaches to automatic detection of annotation errors in single-speaker read-speech corpora used for speech synthesis: anomaly- and classification-based detection. Both approaches principally differ in that the classification-based approach needs to use both correctly annotated and misannotated words for training. On the other hand, the anomaly-based detection approach needs only the correctly annotated words for training (plus a few misannotated words for validation). We show that both approaches lead to statistically comparable results when all available misannotated words are utilized during detector/classifier development. However, when a smaller number of misannotated words are used, the anomaly detection framework clearly outperforms the classification-based approach. A final listening test showed the effectiveness of the annotation error detection for improving the quality of synthetic speech.
机译:我们比较了两种用于语音合成的单扬声器朗读语料库中自动检测注释错误的方法:基于异常的检测和基于分类的检测。两种方法的主要区别在于,基于分类的方法需要使用正确注释的单词和错误注释的单词进行训练。另一方面,基于异常的检测方法只需要正确注释的单词即可进行训练(加上一些错误注释的单词即可进行验证)。我们显示,当在检测器/分类器开发过程中利用所有可用的带错误注释的单词时,两种方法均会导致统计上可比的结果。但是,当使用较少数量的带错误注释的单词时,异常检测框架明显优于基于分类的方法。最终的听力测试显示了注释错误检测对于提高合成语音质量的有效性。

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