In this paper, we propose a Boosting Tail Neural Network (BTNN) for improving the performance of Realtime Custom Keyword Spotting (RCKS) that is still an industrial challenge for demanding powerful classification ability with limited computation resources. Inspired by Brain Science that a brain is only partly activated for a nerve simulation and numerous machine learning algorithms are developed to use a batch of weak classifiers to resolve arduous problems, which are often proved to be effective. We show that this method is helpful to the RCKS problem. The proposed approach achieve better performances in terms of wakeup rate and false alarm. In our experiments compared with those traditional algorithms that use only one strong classifier, it gets 18\% relative improvement. We also point out that this approach may be promising in future ASR exploration.
翻译:在本文中,我们提议建立一个促进尾心神经网络(BTNN)来改进实时自定义关键字点点(RCKS)的性能,这仍然是要求使用有限的计算资源进行强大的分类能力所面临的一项工业挑战。在脑科学的启发下,大脑只是部分被激活用于神经模拟,并开发了多种机器学习算法,以便利用一批薄弱的分类师来解决困难的问题,这些问题往往被证明是有效的。我们证明这一方法对RCKS问题很有帮助。在觉醒率和假警报方面,拟议方法取得了更好的性能。在与只使用一个强大分类器的传统算法相比的实验中,它得到了18个相对的改进。我们还指出,这一方法在未来的ACS探索中可能很有希望。