Analog feature extraction is a power-efficient and re-emerging signal processing paradigm for implementing the front-end feature extractor in on device keyword-spotting systems. Despite its power efficiency and re-emergence, there is little consensus on what values the architectural parameters of its critical block, the analog filterbank, should be set to, even though they strongly influence power consumption. Towards building consensus and approaching fundamental power consumption limits, we find via simulation that through careful selection of its architectural parameters, the power of a typical state-of-the-art analog filterbank could be reduced by 33.6x, while sacrificing only 1.8% in downstream 10-word keyword spotting accuracy through a back-end neural network.
翻译:Abstract: 模拟特征提取是一种节能且重新兴起的信号处理范式,适用于在设备端的关键词检测系统中实现前端特征提取器。尽管它具有节能性和重新兴起的特点,但关于其关键模块——模拟滤波器组的架构参数应设置为何值,目前仍缺乏共识,尽管这些参数会强烈影响功耗。为了达成共识并接近基本的功耗极限,我们通过模拟发现,通过精心选择其架构参数,一个典型的最先进的模拟滤波器组的功耗可以降低33.6倍,同时通过后端神经网络只牺牲1.8%的下游10个单词关键词检测准确率。