The emergence of Artificial Intelligence (AI) driven Keyword Spotting (KWS) technologies has revolutionized human to machine interaction. Yet, the challenge of end-to-end energy efficiency, memory footprint and system complexity of current Neural Network (NN) powered AI-KWS pipelines has remained ever present. This paper evaluates KWS utilizing a learning automata powered machine learning algorithm called the Tsetlin Machine (TM). Through significant reduction in parameter requirements and choosing logic over arithmetic based processing, the TM offers new opportunities for low-power KWS while maintaining high learning efficacy. In this paper we explore a TM based keyword spotting (KWS) pipeline to demonstrate low complexity with faster rate of convergence compared to NNs. Further, we investigate the scalability with increasing keywords and explore the potential for enabling low-power on-chip KWS.
翻译:人工智能(AI)驱动的关键点点(KWS)技术的出现使人类与机器的互动发生了革命性的变化;然而,目前由神经网络(NN)驱动的AI-KWS管道的终端到终端能源效率、记忆足迹和系统复杂性的挑战一直存在。本文利用名为Tsetlin机器(TM)的学习自成一体的自动磁力机器学习算法评估KWS。通过大量减少参数要求和选择逻辑而不是计算法处理,TM为低功率KWS提供了新的机会,同时保持了高学习效率。在本文件中,我们探索了基于TM的关键点(KWS)管道,以显示与NWs相比更快的连接速度的低复杂性。此外,我们调查了增加关键字的可缩性,并探索了使KWS机能低的可能性。