The leaky integrator that could: Or recursive polynomial regression for online signal analysis
Hugh L Kennedy

TL;DR
This paper introduces a recursive polynomial regression framework using Erlang weights for online signal analysis, enabling efficient digital filtering with adjustable trade-offs for various real-time applications.
Contribution
It presents a novel use of Erlang-weighted polynomial regression and Laguerre polynomials for designing low-complexity recursive filters in online signal processing.
Findings
Provides a design framework for balancing bias and variance.
Demonstrates applications in target tracking and anomaly detection.
Explores shaping filter responses with Erlang weights.
Abstract
Fitting a local polynomial model to a noisy sequence of uniformly sampled observations or measurements (i.e. regressing) by minimizing the sum of weighted squared errors (i.e. residuals) may be used to design digital filters for a diverse range of signal-analysis problems, such as detection, classification and tracking, in biomedical, financial, and aerospace applications, for instance. Furthermore, the recursive realization of such filters, using a network of so-called leaky integrators, yields simple digital components with a low computational complexity and an infinite impulse response (IIR) that are ideal in embedded online sensing systems with high data rates. Target tracking, pulse-edge detection, peak detection and anomaly/change detection are considered in this tutorial as illustrative examples. Erlang-weighted polynomial regression provides a design framework within which the…
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Taxonomy
TopicsControl Systems and Identification · Target Tracking and Data Fusion in Sensor Networks · Fault Detection and Control Systems
