Encoding and Decoding Temporal Signals with Spiking Bandpass Wavelets
About
Spike-based encodings are sparse and energy-efficient, but have largely been formulated probabilistically, disconnected from most signal processing literature. We recast spike encoders as time-causal wavelet frames with quantitative bandwidths and reconstruction error bounds. The proposed wavelets preserve the sparsity and locality of spiking representations, with reconstruction up to spike quantization and time discretization. We demonstrate reconstruction on ECG and audio datasets, achieving a normalized RMSE comparable to continuous wavelet transforms. The spiking wavelets map directly to neuromorphic hardware.
Jens Egholm Pedersen, Tony Lindeberg, Peter Gerstoft• 2026
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Signal Reconstruction | MIT-BIH ECG | Normalized RMSE0.00e+0 | 18 | |
| Signal Reconstruction | LibriSpeech | Normalized RMSE0.00e+0 | 18 |
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