An alternative to conventional uniform sampling is that of time encoding, which converts continuous-time signals into streams of trigger times. This gives rise to Event-Driven Sampling (EDS) models. The data-driven nature of EDS acquisition is advantageous in terms of power consumption and time resolution and is inspired by the information representation in biological nervous systems. If an analog signal is outside a predefined dynamic range, then EDS generates a low density of trigger times, which in turn leads to recovery distortion due to aliasing. In this paper, inspired by the Unlimited Sensing Framework (USF), we propose a new EDS architecture that incorporates a modulo nonlinearity prior to acquisition that we refer to as the modulo EDS or MEDS. In MEDS, the modulo nonlinearity folds high dynamic range inputs into low dynamic range amplitudes, thus avoiding recovery distortion. In particular, we consider the asynchronous sigma-delta modulator (ASDM), previously used for low power analog-to-digital conversion. This novel MEDS based acquisition is enabled by a recent generalization of the modulo nonlinearity called modulo-hysteresis. We design a mathematically guaranteed recovery algorithm for bandlimited inputs based on a sampling rate criterion and provide reconstruction error bounds. We go beyond numerical experiments and also provide a first hardware validation of our approach, thus bridging the gap between theory and practice, while corroborating the conceptual underpinnings of our work.
翻译:常规统一抽样的替代办法是时间编码,它将连续时间信号转换成触发时间的流流。这产生了事件爆发抽样(EDS)模型。EDS获取的数据驱动性质在电力消耗和时间分辨率方面是有利的,并且受生物神经系统信息代表的启发。如果模拟信号在预先定义的动态范围之外,那么EDS会产生较低的触发时间密度,这反过来又会导致因别名而导致的回收扭曲。在本文中,在无限感知框架(USF)的启发下,我们提出了一个新的 EDS 结构,在获取之前包含一个模版非线性,我们称之为模版 EDS或MEDS。在MEDS中,模版非线性调将高动态范围投入转化为低动态范围的振动调,从而避免回收扭曲。我们特别考虑到不稳的 sigma-delta调调调(ASDM), 先前用于低电量类比对数字转换的校正基础。这种新型的MEDS获取,是因为最近对模型模型的理论化,而后又提供了我们基于Slimalimalalalalalalalal adalalal adlogal adex adalevilal adview ex ex ex ex ex exilal impalviewal impal impal impal adview。