Can Deep Learning Assist Automatic Identification of Layered Pigments From XRF Data?

07/26/2022
by   Bingjie, et al.
17

X-ray fluorescence spectroscopy (XRF) plays an important role for elemental analysis in a wide range of scientific fields, especially in cultural heritage. XRF imaging, which uses a raster scan to acquire spectra across artworks, provides the opportunity for spatial analysis of pigment distributions based on their elemental composition. However, conventional XRF-based pigment identification relies on time-consuming elemental mapping by expert interpretations of measured spectra. To reduce the reliance on manual work, recent studies have applied machine learning techniques to cluster similar XRF spectra in data analysis and to identify the most likely pigments. Nevertheless, it is still challenging for automatic pigment identification strategies to directly tackle the complex structure of real paintings, e.g. pigment mixtures and layered pigments. In addition, pixel-wise pigment identification based on XRF imaging remains an obstacle due to the high noise level compared with averaged spectra. Therefore, we developed a deep-learning-based end-to-end pigment identification framework to fully automate the pigment identification process. In particular, it offers high sensitivity to the underlying pigments and to the pigments with a low concentration, therefore enabling satisfying results in mapping the pigments based on single-pixel XRF spectrum. As case studies, we applied our framework to lab-prepared mock-up paintings and two 19th-century paintings: Paul Gauguin's Poèmes Barbares (1896) that contains layered pigments with an underlying painting, and Paul Cezanne's The Bathers (1899-1904). The pigment identification results demonstrated that our model achieved comparable results to the analysis by elemental mapping, suggesting the generalizability and stability of our model.

READ FULL TEXT

page 1

page 5

page 6

page 7

page 8

page 9

research
03/18/2021

A Pilot Study For Fragment Identification Using 2D NMR and Deep Learning

This paper presents a method to identify substructures in NMR spectra of...
research
11/16/2022

Exploring Supervised Machine Learning for Multi-Phase Identification and Quantification from Powder X-Ray Diffraction Spectra

Powder X-ray diffraction analysis is a critical component of materials c...
research
03/30/2021

A probabilistic deep learning approach to automate the interpretation of multi-phase diffraction spectra

Autonomous synthesis and characterization of inorganic materials require...
research
01/20/2018

The effects of anger on automated long-term-spectra based speaker-identification

Forensic speaker identification has traditionally considered approaches ...
research
07/21/2022

Target Identification and Bayesian Model Averaging with Probabilistic Hierarchical Factor Probabilities

Target detection in hyperspectral imagery is the process of locating pix...
research
01/23/2019

Rapid identification of pathogenic bacteria using Raman spectroscopy and deep learning

Rapid identification of bacteria is essential to prevent the spread of i...
research
04/03/2021

End-to-end Deep Learning Pipeline for Microwave Kinetic Inductance Detector (MKID) Resonator Identification and Tuning

We present the development of a machine learning based pipeline to fully...

Please sign up or login with your details

Forgot password? Click here to reset