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摘要

在过去的十年里,语音识别已经从科幻小说中的梦想发展成为移动设备上广泛使用的输入法。在这次演讲中,我将描述语音识别是如何工作的,我们已经解决的问题和仍然存在的挑战。我将触及谷歌在语言和发音建模方面的一些主要努力,并描述神经网络在声学建模方面的采用如何标志着该领域技术革命的开始,如长短期记忆模型和连接主义时间分类。我还将分享我对机器学习和人类知识如何和谐结合的学习,以构建最先进的技术,帮助和愉悦世界各地的用户。
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Learnings and innovations in speech recognition
In the last ten years, speech recognition has evolved from a science fiction dream to a widespread input method for mobile devices. In this talk, I will describe how speech recognition works, the problems we have solved and the challenges that remain. I will touch upon some of Google's main efforts in language and pronunciation modeling, and describe how the adoption of neural networks for acoustic modeling marked the beginning of a technology revolution in the field, with approaches such as Long Short Term Memory models and Connectionist Temporal Classification. I will also share my learnings on how Machine Learning and Human Knowledge can be harmoniously combined to build state-of-the-art technology that helps and delights users across the world.
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