Computational spectrometer based on local feature-weighted spectral reconstruction

Rong Yan, Shuai Wang, Qiang Jiao, Liheng Bian*

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

Abstract

The computational spectrometer enables the reconstruction of spectra from precalibrated information encoded. In the last decade, it has emerged as an integrated and low-cost paradigm with vast potential for applications, especially in portable or handheld spectral analysis devices. The conventional methods utilize a local-weighted strategy in feature spaces. These methods overlook the fact that the coefficients of important features could be too large to reflect differences in more detailed feature spaces during calculations. In this work, we report a local feature-weighted spectral reconstruction (LFWSR) method, and construct a high-accuracy computational spectrometer. Different from existing methods, the reported method learns a spectral dictionary via L4-norm maximization for representing spectral curve features, and considers the statistical ranking of features. According to the ranking, weight features and update coefficients then calculate the similarity. What’s more, the inverse distance weighted is utilized to pick samples and weight a local training set. Finally, the final spectrum is reconstructed utilizing the local training set and measurements. Experiments indicate that the reported method’s two weighting processes produce state-of-the-art high accuracy.

Original languageEnglish
Pages (from-to)14240-14254
Number of pages15
JournalOptics Express
Volume31
Issue number9
DOIs
Publication statusPublished - 24 Apr 2023

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