Signal Prediction by Derivative Samples from the Past via Perfect Reconstruction
Signal Prediction by Derivative Samples from the Past via Perfect Reconstruction
This paper investigates signal prediction through the perfect reconstruction of signals from shift-invariant spaces using nonuniform samples of both the signal and its derivatives. The key advantage of derivative sampling is its ability to reduce the sampling rate. We derive a sampling formula based on periodic nonuniform sampling (PNS) sets with derivatives in a shift-invariant space. We establish the necessary and sufficient conditions for such a set to form a complete interpolating sequence (CIS) of order $r-1$. This framework is then used to develop an efficient approximation scheme in a shift-invariant space generated by a compactly supported function. Building on this, we propose a prediction algorithm that reconstructs a signal from a finite number of past derivative samples using the derived perfect reconstruction formula. Finally, we validate our theoretical results through practical examples involving cubic splines and the Daubechies scaling function of order 3.
Sreya T、Riya Ghosh、A. Antony Selvan
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Sreya T,Riya Ghosh,A. Antony Selvan.Signal Prediction by Derivative Samples from the Past via Perfect Reconstruction[EB/OL].(2025-05-06)[2025-07-16].https://arxiv.org/abs/2505.03471.点此复制
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