Spectral- and Image-Based Metrics for Evaluating Cleaning Tests on Unvarnished Painted Surfaces
Abstract
:1. Introduction
2. Materials and Methods
Mock-Up | Stratigraphy | Ageing and Soiling a | Surface Properties b |
---|---|---|---|
Chalk–Glue Ground | Canvas: washed linen, twill weave, stretched Size: rabbit skin glue Ground: chalk, in rabbit skin glue |
6 months ambient drying 3 weekly cycles of accelerated ageing: Memmert ICH110L chamber; light: 4 fluorescent lamps (6500 K (D56), 500 W); irradiance: 70 Wm−2; total energy: 169,330 kJm−2; 40 °C (CHT); and fluctuating RH (15%–65%) Three spraying campaigns (two for oil paint) of artificial soiling * adapted for the Aula * Soiling layer: 27.1 ± 2.4 µm Min particle size: 0.095 µm Max particle size: ≥10 µm | Thickness: 122.3 ± 39.2 µm Water sensitivity: 14 rolls Chalking: ISO 2 pH: 6.5 Conductivity: 1500 µS·cm−1 |
Half-Chalk Ground | Canvas: ibid. Size: ibid. Ground: chalk, zinc white, lead white in rabbit skin glue and boiled linseed oil emulsion | Thickness: 104.9 ± 40.2 µm Water sensitivity: 10 rolls Chalking: ISO 3 pH: 6.4 Conductivity: 500 µS·cm−1 | |
Chromium Oxide Green Oil Paint | Canvas: ibid. Size: ibid. Ground: half-chalk ground Pigment-binder: undiluted chromium oxide green in linseed oil | Thickness: 114.9 ± 26.4 µm Water sensitivity: 5 rolls Chalking: ISO 1 pH: 6.4 Conductivity: 530 µS·cm−1 |
Supplier | Material | Composition | Quantity | Dry Weight |
---|---|---|---|---|
g or mL | % | |||
Rublev | Lamp black (oil furnaces) | C | 0.62 | 1.00 |
Kremer | Vine black (organic source) | C | 0.62 | 1.00 |
Burgundy ochre (fine) | Fe2O3·H2O | 1.45 | 2.34 | |
Wheat starch powder | Polysaccharide (C6H10O5)n | 10.00 | 16.14 | |
Gelatin powder | Proteins and peptides | 10.00 | 16.14 | |
Merck | Sodium nitrate | NaNO3 | 2.50 | 4.03 |
Kaolin | Al2Si2O5(OH)4 | 18.00 | 29.06 | |
Portland cement (Type I) | CaO·SiO2 Fe, Al, MgO | 17.00 | 27.45 | |
Silica, quartz | SiO2 | 1.75 | 2.83 | |
Mineral oil | Hydrocarbons | 5.0 | - | |
Filippo Berio | Olive oil | Mainly triacylglycerols | 2.5 | - |
Kremer | Shellsol D40 | Hydrocarbons | 1000 | - |
3. Results and Discussion
3.1. Metrics in Practice
3.1.1. Image-Based Metrics: L*a*b*
3.1.2. Image-Based Metrics: Skewness
3.1.3. Appearance-Based Metrics: Colour and Gloss
3.1.4. Spectral-Based Metrics: HSI
3.1.5. Spectral-Based Metrics: FTIR
3.1.6. Spectral-Based Metrics: SEM-EDX
3.2. Evaluating Soiling Removal Scores Using the Metrics
4. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A. Additional Methodological Details
Incident Light | Raking Light | ||
---|---|---|---|
ImageCapture | ImageCapture | ||
ISO | 100 (ground); 200 (paint) | ISO | 160 (ground); 200 (paint) |
Exposure | 1/125 s | Exposure | 1/125 s |
Aperture | f/2.8 | Aperture | f/2.8 |
SetupGeometries | SetupGeometries | ||
Camera height | 73 cm | Camera height | 73 cm |
Light quantity | 2 (left and right) | Light quantity | 1 (right) |
Lights height from plane | 39 cm | Lights height from plane | 16 cm |
Lights angle from plane | 45° | Lights angle from plane | 60° |
Lights to lens distance | 45 cm | Lights to lens distance | 75 cm |
HSI Cameras | VNIR1800 | SWIR384 | Lights | Tungsten-Halogen |
---|---|---|---|---|
Spectral range, nm | 407–998 | 951–2505 | Spectral coverage, nm | c. 320–2600 |
Spectral bands | 186 | 288 | Quantity | 2 |
Spectral interval a, nm | 3.26 | 5.45 | Room lighting | Darkness |
Pixels acquired | 1800 | 384 | Geometry b | 45°, h: 130 cm, d: various |
Focal length, m | 0.30 | 0.30 | Spectral reflectance | Spectralon white |
Field-of-view c, cm | 8.60 | 8.60 | standard | (99%) and grey (50%) diffuse |
Spatial resolution, μm | 50 | 220 | ||
Mount | Fixed, perpendicular to surface | Mount | Fixed to stage | |
Acquisition Parameters | ||||
HSNR d | 0 | 0 | ||
Integration time, μs | ||||
for exposed ground | 25,000 | 6900 | ||
for oil paint | 39,000 | 10,800 |
Appendix B. Discussion of Unsupervised Unmixing for Soiling Removal Mapping
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Scoring Criteria | ||||
---|---|---|---|---|
Score Rating | Cleaning Efficacy | Cleaning Homogeneity | Pigment Swelling | Selectivity (Pigment Loss) |
1 | No effect | Uneven removal (<30%) | Extreme, visible swelling | Unacceptable loss |
2 | Little effect | Inconsistent removal (<50%) | Moderate, visible swelling | Notable loss |
3 | Moderate effect | Consistent removal (<80%) | Sensation of swelling, invisible | Microscopic loss |
4 | Effective removal | Complete removal (100%) | No swelling | No loss |
Cleaning Solution | Concentration | Chalk–Glue Ground | Half-Chalk Ground | Chromium Oxide Green |
---|---|---|---|---|
Deionised water | - | pH 7.2, 20 µS·cm−1 | pH 7.2, 20 µS·cm−1 | pH 7.2, 20 µS·cm−1 |
Adjusted water a (ammonium acetate) | Conductivity-related | pH 5.5, 1500 µS·cm−1 | pH 5.5, 500 µS·cm−1 | pH 5.0, 500 µS·cm−1 |
Chelator b (citric acid/ sodium hydroxide) | 0.5% w/v (0.026 M) CA in 10% w/v (2.5 M) NaOH | pH 5.0, 4240 µS·cm−1 | pH 4.5, 3240 µS·cm−1 | pH 4.5, 3240 µS·cm−1 |
Chelator b (citric acid/ ammonium hydroxide) | 0.5% w/v (0.026 M) CA in 10% w/v (5.0 M) NH4OH | pH 5.0, 5320 µS·cm−1 | pH 4.5, 4270 µS·cm−1 | pH 4.5, 4270 µS·cm−1 |
Clearance c (ammonium acetate) | Conductivity-related | pH 6.5, 500 µS·cm−1 | pH 6.5, 500 µS·cm−1 | pH 6.5, 500 µS·cm−1 |
Metric a | Range b | Data Type c | Concept | Equipment d | Post-Processing e | |
---|---|---|---|---|---|---|
(i) Cleaning homogeneity | VNIR /SWIR | 2D spectral maps | Image homogeneity from grey-level co-occurrence matrix (GLCM) | DLSR camera HSI camera | Change image type to 8-bit depth for GLCM Texture plug-in in ImageJ (v. 1.54f) | |
(ii) Cleaning efficacy | ||||||
Image-based | L*a*b* images | VIS | 2D RGB images | Thresholded pixels representing soiling | DLSR camera (Mobile phone) | Conversion to CIELAB space; image thresholding |
Histogram skewness | VIS | 2D RGB images | Histogram distribution asymmetry as function of darker soiling on lighter substrate | Spreadsheet/ statistical calculations | ||
Appearance | Glossimetry | VIS | 1D point measurements | Perceived surface texture under direct light source | Glossmeter | Spreadsheet/ statistical calculations |
Colourimetry (from HSI) | VNIR | 2D L*a*b* images (from 3D datacube) | Colour difference, ΔE2000, before and after soiling removal | HSI camera | Conversion to CIELAB space; colourimetric and statistical calculations | |
Spectral-based | HSI: spectral unmixing | VNIR /SWIR | 3D datacube | Spectral reflectance similarity (compa-red to unsoiled areas, or soiling) | HSI camera | Spectral calibration; algorithm pre- and post-processing |
HSI: NDI mapping | SWIR | 2D normalized difference images | SWIR marker bands for soiling and surface | HSI camera | Spectral calibration; PCA; image processing | |
FTIR mapping | MIR | 2D chemical maps | MIR spectra (or marker bands) for soiling | FTIR spectrome-ter | Atmospheric correction; correlation map profiles | |
SEM-EDX mapping | (XR) | 2D chemical maps | Element signal for soiling | SEM-EDX | TruMap processing; element selection |
Cleaning Efficacy Metric | Value for xBT | Value for xAT | |
---|---|---|---|
Image-based | L*a*b* images | Number of black pixels before treatment (black pixels represent soiling) | Number of black pixels after treatment (black pixels represent soiling) |
Histogram skewness | Difference in skewness between unsoiled (CT) and soiled (BT) mock-up (ΔskewnessCT,BT) | Difference in skewness between unsoiled (CT) and cleaned (AT) mock-up (ΔskewnessCT,AT) | |
Appearance | Glossimetry | Difference in gloss between the unsoiled (CT) and soiled (BT) mock-up (ΔglossCT,BT) | Difference in gloss between the unsoiled (CT) and cleaned (AT) mock-up (ΔglossCT,AT) |
Colourimetry (from HSI) | CIE2000 colour difference between the unsoiled (CT) and soiled (BT) mock-up (ΔE2000(CT,BT)) | CIE2000 colour difference between the unsoiled (CT) and cleaned (AT) mock-up (ΔE2000(CT,AT)) | |
Spectral-based | HSI: spectral unmixing | Mean pixel value from 100 pixel × 100 pixel area taken from unsoiled (CT) mock-up, or soiling control (sCT), in unmixing map (CTsCT) | Mean pixel value from 100 pixel × 100 pixel area taken from cleaned (AT) mock-up, in unmixing map (AT) |
HSI: NDI mapping | Mean pixel value from 100 pixel × 100 pixel area taken from unsoiled (CT) mock-up, or soiling control (sCT), in NDI map (CTsCT) | Mean pixel value from 100 pixel × 100 pixel area taken from cleaned (AT) mock-up, in NDI map (AT) | |
FTIR mapping | Number of white pixels before treatment (white pixels represent soiling) | Number of white pixels after treatment (white pixels represent soiling) | |
SEM-EDX mapping | Number of element-rich areas as counted by Analyse particles function in ImageJ before cleaning | Number of element-rich areas as counted by Analyse particles function in ImageJ after cleaning |
Cleaning Efficacy Metrics | Mean Values | |||||||
Image-Based | Spectral-Based | |||||||
Cleaning Solution | L *a*b* | Skewness | Supervised (VNIR) | NDI (SWIR) | FTIR (MIR) | Image-Based | Spectral-Based | |
Deionised water | 0.76 | 0.81 | 0.95 | 0.85 | 0.39 | 0.79 | 0.73 | |
Adjusted water | 0.78 | 0.79 | 0.91 | 0.84 | 0.58 | 0.79 | 0.78 | |
Chelator (NaOH) | 0.79 | 0.70 | 0.91 | 0.88 | 0.46 | 0.75 | 0.75 | |
Chelator (NH4OH) | 0.84 | 0.68 | 0.96 | 0.96 | 0.57 | 0.76 | 0.80 | |
Scoring Criteria | ||||||||
Cleaning Solution | Cleaning Efficacy a | Cleaning Homogeneity b | Colour Integrity c | Gloss Integrity c | Selectivity d | Residue Absence d | ||
Deionised water | 0.76 | 0.23 | 0.75 | 0.17 | 1.00 | 1.00 | ||
Adjusted water | 0.78 | 0.22 | 0.69 | 0.64 | 1.00 | 1.00 | ||
Chelator (NaOH) | 0.75 | 0.33 | 0.72 | 0.62 | 0.60 | 1.00 | ||
Chelator (NH4OH) | 0.78 | 0.57 | 0.82 | 0.86 | 0.80 | 1.00 |
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Cutajar, J.D.; Steindal, C.C.; Caruso, F.; Joseph, E.; Frøysaker, T. Spectral- and Image-Based Metrics for Evaluating Cleaning Tests on Unvarnished Painted Surfaces. Coatings 2024, 14, 1040. https://doi.org/10.3390/coatings14081040
Cutajar JD, Steindal CC, Caruso F, Joseph E, Frøysaker T. Spectral- and Image-Based Metrics for Evaluating Cleaning Tests on Unvarnished Painted Surfaces. Coatings. 2024; 14(8):1040. https://doi.org/10.3390/coatings14081040
Chicago/Turabian StyleCutajar, Jan Dariusz, Calin Constantin Steindal, Francesco Caruso, Edith Joseph, and Tine Frøysaker. 2024. "Spectral- and Image-Based Metrics for Evaluating Cleaning Tests on Unvarnished Painted Surfaces" Coatings 14, no. 8: 1040. https://doi.org/10.3390/coatings14081040
APA StyleCutajar, J. D., Steindal, C. C., Caruso, F., Joseph, E., & Frøysaker, T. (2024). Spectral- and Image-Based Metrics for Evaluating Cleaning Tests on Unvarnished Painted Surfaces. Coatings, 14(8), 1040. https://doi.org/10.3390/coatings14081040