Lippmann Photography: A Signal Processing Perspective
Gilles Baechler, Michalina Pacholska, Arnaud Latty, Adam Scholefield,, Martin Vetterli

TL;DR
This paper revisits Lippmann photography through a signal processing lens, deriving and experimentally validating a model that explains spectral distortions influenced by physical parameters, offering new insights into this historic imaging technique.
Contribution
It provides a detailed mathematical model of Lippmann photography's spectral behavior and experimentally validates it, revealing previously ignored spectral distortions.
Findings
Spectra are distorted versions of original spectra.
Distortions depend on plate thickness and reflection coefficient.
Model validated through extensive experiments.
Abstract
Lippmann (or interferential) photography is the first and only analog photography method that can capture the full color spectrum of a scene in a single take. This technique, invented more than a hundred years ago, records the colors by creating interference patterns inside the photosensitive plate. Lippmann photography provides a great opportunity to demonstrate several fundamental concepts in signal processing. Conversely, a signal processing perspective enables us to shed new light on the technique. In our previous work, we analyzed the spectra of historical Lippmann plates using our own mathematical model. In this paper, we provide the derivation of this model and validate it experimentally. We highlight new behaviors whose explanations were ignored by physicists to date. In particular, we show that the spectra generated by Lippmann plates are in fact distorted versions of the…
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Taxonomy
TopicsOptical measurement and interference techniques · Infrared Target Detection Methodologies · Advanced Vision and Imaging
