Time-causal and time-recursive spatio-temporal receptive fields
Tony Lindeberg

TL;DR
This paper introduces an improved model for time-causal and time-recursive spatio-temporal receptive fields, ensuring non-creation of local extrema over time, with applications in biological vision and feature detection.
Contribution
It presents a novel theoretical framework for spatio-temporal receptive fields based on new scale-space axioms, including a logarithmic distribution of temporal scales for faster responses.
Findings
Faster temporal responses with logarithmic scale distribution.
Rapid convergence to a scale-invariant kernel.
Efficient computation of scale-normalized derivatives.
Abstract
We present an improved model and theory for time-causal and time-recursive spatio-temporal receptive fields, based on a combination of Gaussian receptive fields over the spatial domain and first-order integrators or equivalently truncated exponential filters coupled in cascade over the temporal domain. Compared to previous spatio-temporal scale-space formulations in terms of non-enhancement of local extrema or scale invariance, these receptive fields are based on different scale-space axiomatics over time by ensuring non-creation of new local extrema or zero-crossings with increasing temporal scale. Specifically, extensions are presented about (i) parameterizing the intermediate temporal scale levels, (ii) analysing the resulting temporal dynamics, (iii) transferring the theory to a discrete implementation, (iv) computing scale-normalized spatio-temporal derivative expressions for…
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Taxonomy
Methodstime-causal limit kernel
