Time-causal and time-recursive wavelets
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| Název: | Time-causal and time-recursive wavelets |
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| Autoři: | Lindeberg, Tony, 1964 |
| Zdroj: | Covariant and invariant deep networks. |
| Témata: | time, wavelet, temporal, scale, time-causal, time-recursive, scale covariance, signal processing, Datalogi, Computer Science |
| Popis: | When to apply wavelet analysis to real-time temporal signals, where the future cannot be accessed, it is essential to base all the steps in the signal processing pipeline on computational mechanisms that are truly time-causal.This paper describes how a time-causal wavelet analysis can be performed based on concepts developed in the area of temporal scale-space theory, originating from a complete classification of temporal smoothing kernels that guarantee non-creation of new structures from finer to coarser temporal scale levels. By necessity, convolution with truncated exponential kernels in cascade constitutes the only permissable class of kernels, as well as their temporal derivatives as a natural complement to fulfil the admissibility conditions of wavelet representations. For a particular way of choosing the time constants in the resulting infinite convolution of truncated exponential kernels, to ensure temporal scale covariance and thus self-similarity over temporal scales, we describe how mother wavelets can be chosen as temporal derivatives of the resulting time-causal limit kernel.By developing connections between wavelet theory and scale-space theory, we show how the notions of scale normalization in wavelet representations and scale-space representations are closely related regarding scaling properties. We also describe how efficient discrete approximations of the presented theory can be performed in terms of first-order recursive filters coupled in cascade,which obey provably simplifying properties from finer to coarser levels of temporal scales, and thereby guaranteeing well-conditioned numerical implementations. Specifically, we characterize and quantify how the continuous scaling properties transfer to the discrete implementation, demonstrating how the proposed time-causal wavelet representation can reflect the duration of locally dominant temporal structures in the input signals.We propose that this notion of time-causal wavelet analysis could be a valuable tool for signal processing tasks, where streams of signals are to be processed in real time, specifically for signals that may contain local variations over a rich span of temporal scales, or more generally for analysing physical or biophysical temporal phenomena, where a fully time-causal analysis is called for to be physically realistic. |
| Popis souboru: | electronic |
| Přístupová URL adresa: | https://urn.kb.se/resolve?urn=urn:nbn:se:kth:diva-371317 https://doi.org/10.48550/arXiv.2510.05834 |
| Databáze: | SwePub |
| Abstrakt: | When to apply wavelet analysis to real-time temporal signals, where the future cannot be accessed, it is essential to base all the steps in the signal processing pipeline on computational mechanisms that are truly time-causal.This paper describes how a time-causal wavelet analysis can be performed based on concepts developed in the area of temporal scale-space theory, originating from a complete classification of temporal smoothing kernels that guarantee non-creation of new structures from finer to coarser temporal scale levels. By necessity, convolution with truncated exponential kernels in cascade constitutes the only permissable class of kernels, as well as their temporal derivatives as a natural complement to fulfil the admissibility conditions of wavelet representations. For a particular way of choosing the time constants in the resulting infinite convolution of truncated exponential kernels, to ensure temporal scale covariance and thus self-similarity over temporal scales, we describe how mother wavelets can be chosen as temporal derivatives of the resulting time-causal limit kernel.By developing connections between wavelet theory and scale-space theory, we show how the notions of scale normalization in wavelet representations and scale-space representations are closely related regarding scaling properties. We also describe how efficient discrete approximations of the presented theory can be performed in terms of first-order recursive filters coupled in cascade,which obey provably simplifying properties from finer to coarser levels of temporal scales, and thereby guaranteeing well-conditioned numerical implementations. Specifically, we characterize and quantify how the continuous scaling properties transfer to the discrete implementation, demonstrating how the proposed time-causal wavelet representation can reflect the duration of locally dominant temporal structures in the input signals.We propose that this notion of time-causal wavelet analysis could be a valuable tool for signal processing tasks, where streams of signals are to be processed in real time, specifically for signals that may contain local variations over a rich span of temporal scales, or more generally for analysing physical or biophysical temporal phenomena, where a fully time-causal analysis is called for to be physically realistic. |
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| DOI: | 10.48550/arXiv.2510.05834 |
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