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Improved mandarin spoken term detection by using deep neural network for keyword verification

机译:使用深度神经网络进行关键字验证的改进的普通话口语检测

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摘要

In this paper, we propose to use Deep Neural Network (DNN), which has been proved to be the state-of-the-art technique in speech recognition, to re-estimate the confidence of keyword hypotheses in the verification stage of spoken term detection. The speech recognition system based on DNN outperforms that based on conventional Gaussian Mixture Model (GMM) but suffers from the increased decoding time. When the speed of decoding or indexing is critical, it seems to be a trade-off between the performance and the speed to utilize DNN in keyword verification. Inspired by the utilization and acceleration of DNN in the decoding stage, we explored an efficient method to replace GMM by DNN in the verification stage. 5% relative reduction of equal error rate (EER) is achieved and the improvement of recall in the high precision region is especially significant, which is essential to practical tasks. Meanwhile, the search time decreases more than 50% compared to the time derived from the verification on DNN without any refinements.
机译:在本文中,我们建议使用已被证明是语音识别领域最先进技术的深度神经网络(DNN),来重新估计语音假设验证阶段中关键字假设的置信度检测。基于DNN的语音识别系统优于基于传统高斯混合模型(GMM)的语音识别系统,但会增加解码时间。当解码或索引的速度至关重要时,似乎在性能和在关键字验证中使用DNN的速度之间进行了权衡。受到DNN在解码阶段的利用和加速的启发,我们探索了一种在验证阶段用DNN代替GMM的有效方法。等误差率(EER)相对降低了5%,在高精度区域中的查全率提高尤为重要,这对于实际任务至关重要。同时,与没有经过任何改进的DNN验证得出的时间相比,搜索时间减少了50%以上。

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