基于I-CNN的自定义服务语音分类算法

Xuefeng Huang, Rongheng Lin
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引用次数: 0

摘要

语音分类方法主要关注的是语音片段的内容。为了更好地理解分段语音中的信息,还需要注意同一段中其他分段的内容。在我们的自定义服务语音分类问题中,我们面临着将对话中的一系列语音片段分别分类为“自定义”或“自定义服务”类别的问题。有时,在同一对话中,双方的声音听起来都像“定制服务”,或者听起来都像“定制”。为了做出正确的预测,模型不仅需要知道它正在分类的语音片段的内容,还需要知道对话中双方的语音,额外的信息可以帮助模型确定谁“更有可能”成为对话中的自定义服务。我们提出了一种称为I-CNN的方法,它将信息馈送层与CNN相结合。信息源层允许CNN使用来自同一批其他样本的信息,这有助于提高模型在我们的自定义服务语音分类问题中的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An I-CNN Based Speech Classification Algorithm for Custom Service
Speech classification methods mainly focus on the content of the voice segment. To help better underestand the information in a segmented voice, the contents of other segments in the same paragraph should also be paid attention to. In our custom service speech classification problem, we are facing a problem of classification a series of voice segments in a conversation separately into category "custom" or "custom service". Sometimes the voice of both parties in the same conversation can be both sound like a "custom service" or both sound like "custom". In order to make the right prediction, the model needs to know not only the content of the voice segment that it's classifying, but both parties' voice in a conversation, the extra information can help the model to determine who is "more likely" to be a custom service in a conversation. We propose a method called I-CNN, which combines the info-feed layer with CNN. The Info-feed layer allows the CNN to use information from other samples in the same batch, which is helpful in improving the model's performance in our custom service speech classification problem.
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