In this paper we introduce a new sampling and reconstruction approach for multi-dimensional analog signals. Building on top of the Unlimited Sensing Framework (USF), we present a new folded sampling operator called the multi-dimensional modulo-hysteresis that is also backwards compatible with the existing one-dimensional modulo operator. Unlike previous approaches, the proposed model is specifically tailored to multi-dimensional signals. In particular, the model uses certain redundancy in dimensions 2 and above, which is exploited for input recovery with robustness. We prove that the new operator is well-defined and its outputs have a bounded dynamic range. For the noiseless case, we derive a theoretically guaranteed input reconstruction approach. When the input is corrupted by Gaussian noise, we exploit redundancy in higher dimensions to provide a bound on the error probability and show this drops to 0 for high enough sampling rates leading to new theoretical guarantees for the noisy case. Our numerical examples corroborate the theoretical results and show that the proposed approach can handle a significantly larger amount of noise compared to USF.
翻译:在本文中,我们引入了一个新的多维模拟信号的取样和重建方法。 在无限制遥感框架(USF)之上,我们展示了一个新的折叠取样操作员,称为多维模卢-歇斯底里,它与现有的单维模卢操作员也向后兼容。与以前的方法不同,拟议的模型是专门针对多维信号的。特别是,模型在第二维及以上各维中使用了某些冗余,用于以稳健的方式进行输入恢复。我们证明,新操作员定义明确,其产出具有受约束的动态范围。在无噪音的情况下,我们获得了一种理论上有保障的输入重建方法。当输入被高山噪音破坏时,我们利用了更高维度的冗余来提供误差概率,并显示这因足够高的采样率而跌至0,从而导致对吵闹的个案产生新的理论保证。我们的数字实例证实了理论结果,并表明,拟议的方法能够处理比美国F大得多的噪音。