High-resolution distributed sampling of bandlimited fields with low-precision sensors
Animesh Kumar, Prakash Ishwar, and Kannan Ramchandran

TL;DR
This paper investigates distributed sampling of bandlimited fields using low-precision sensors, demonstrating a tradeoff between sensor density and ADC precision that achieves exponential accuracy with finite resources.
Contribution
It introduces a flexible bit-allocation framework for distributed sampling, establishing exponential distortion-rate tradeoffs and achievable information scaling laws with low-precision sensors.
Findings
Exponential decay of distortion with increasing network bitrate
Feasibility of distributed sampling with only nearest-neighbor communication
Achieving zero distortion with finite sensors and network rate
Abstract
The problem of sampling a discrete-time sequence of spatially bandlimited fields with a bounded dynamic range, in a distributed, communication-constrained, processing environment is addressed. A central unit, having access to the data gathered by a dense network of fixed-precision sensors, operating under stringent inter-node communication constraints, is required to reconstruct the field snapshots to maximum accuracy. Both deterministic and stochastic field models are considered. For stochastic fields, results are established in the almost-sure sense. The feasibility of having a flexible tradeoff between the oversampling rate (sensor density) and the analog-to-digital converter (ADC) precision, while achieving an exponential accuracy in the number of bits per Nyquist-interval per snapshot is demonstrated. This exposes an underlying ``conservation of bits'' principle: the bit-budget per…
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