论文标题
深度基于任务的模数转换
Deep Task-Based Analog-to-Digital Conversion
论文作者
论文摘要
模数转换器(ADC)允许使用数字硬件处理物理信号。它们的转化率包括两个阶段:采样,将连续时间信号映射到离散时间和量化中,即使用有限数量的位来表示连续振幅数量。 ADC通常实现一般统一的转换映射,这些转换映射不了解获得信号的任务,并且在以高率和良好的分辨率运行时可能是昂贵的。在这项工作中,我们设计了面向任务的ADC,这些ADC从数据中学习如何将模拟信号映射到数字表示中,以便可以有效地执行系统任务。我们提出了一个用于采样和量化的模型,以促进从数据中学习不均匀映射的模型。基于此可学习的ADC映射,我们提出了一种通过共同学习其组件端到端的组件来优化由模拟组合,可调节速率和数字处理的混合采集系统的机制。然后,我们展示了如何利用混合采集系统作为深网的表示,以通过利用贝叶斯元学习技术来优化任务给定任务的采样率和量化率。我们在两个案例研究中评估了提出的基于任务的ADC:第一个考虑了多安德纳数字接收器中的符号检测,其中同时获得了多个模拟信号以恢复一组离散的信息符号。第二个应用是在超声成像中获取的模拟通道数据的波束形成。我们的数值结果表明,所提出的方法实现了与采样率和良好分辨率量化的运行相当的性能,同时以降低的总比率运行。
Analog-to-digital converters (ADCs) allow physical signals to be processed using digital hardware. Their conversion consists of two stages: Sampling, which maps a continuous-time signal into discrete-time, and quantization, i.e., representing the continuous-amplitude quantities using a finite number of bits. ADCs typically implement generic uniform conversion mappings that are ignorant of the task for which the signal is acquired, and can be costly when operating in high rates and fine resolutions. In this work we design task-oriented ADCs which learn from data how to map an analog signal into a digital representation such that the system task can be efficiently carried out. We propose a model for sampling and quantization that facilitates the learning of non-uniform mappings from data. Based on this learnable ADC mapping, we present a mechanism for optimizing a hybrid acquisition system comprised of analog combining, tunable ADCs with fixed rates, and digital processing, by jointly learning its components end-to-end. Then, we show how one can exploit the representation of hybrid acquisition systems as deep network to optimize the sampling rate and quantization rate given the task by utilizing Bayesian meta-learning techniques. We evaluate the proposed deep task-based ADC in two case studies: the first considers symbol detection in multi-antenna digital receivers, where multiple analog signals are simultaneously acquired in order to recover a set of discrete information symbols. The second application is the beamforming of analog channel data acquired in ultrasound imaging. Our numerical results demonstrate that the proposed approach achieves performance which is comparable to operating with high sampling rates and fine resolution quantization, while operating with reduced overall bit rate.