AQC0603

Nanopublication — Computational Image Analysis - AQC0603

Claim 1: Computational Image Analysis - AQC0603

Computational image analysis [3] of artwork F# minor - Research [1] on Harmony - Variation 1 (AQC0603) [2] by Arnaud Quercy [2] using k-means clustering method with 10 color extraction parameters. Analysis includes color distribution, texture metrics, brightness/contrast measurements, and spatial pattern characterization. Analysis completed on 2026-02-04.

Context

Analysis performed according to MMIDS-CMP-2025 [3] includes four metric categories: (1) Color distribution via k-means (10 colors), (2) Texture analysis using Haralick features, (3) Brightness and contrast measurements, (4) Spatial pattern characterization. Source image [5]: 2553x3404 pixels. Analysis date: 2026-02-04.

Color Analysis

Rank Color Hex % Family Name
1 6ACAC9 31.8 blue-green mediumaquamarine
2 4EB8CA 13.5 blue-green mediumturquoise
3 1E3537 10.0 blue-green darkslategray
4 3CA2BD 9.4 blue steelblue
5 678793 8.9 blue blue gray
6 82DCDC 8.7 blue-green skyblue
7 314849 8.4 blue-green darkslategrey
8 E0CDBB 4.4 orange lightgray
9 84A4B2 3.2 blue steel gray
10 AD8C41 1.7 yellow-orange peru
11 0A1621 0.3 blue-violet black [Accent]
12 B9B3C6 0.3 violet silver [Accent]
13 B3AC65 0.3 yellow ochre [Accent]
14 B8DDD4 0.3 green powderblue [Accent]
15 EEE0E0 0.3 red-orange mistyrose [Accent]

Color Families:

Family %
blue-green 72.4
blue 21.5
orange 4.4
yellow-orange 1.7
blue-violet 0.3
violet 0.3
yellow 0.3
green 0.3
red-orange 0.3

Accent Colors:

Hex Family Name Chroma
0A1621 blue-violet black 9.0
B9B3C6 violet silver 10.8
B3AC65 yellow ochre 37.9
B8DDD4 green powderblue 14.0
EEE0E0 red-orange mistyrose 5.4

Texture Analysis

Metric Value
Global Roughness 0.187
Mean Local Roughness 0.015
Roughness Uniformity 0.022
Edge Density 0.056
Mean Gradient Magnitude 0.116
Gradient Variance 0.043
Gradient Smoothness 0.0
Directional Coherence 0.113
Pattern Complexity 0.115
Pattern Repetition 1.0
Detail Frequency Ratio 0.645
Spatial Variation 0.154
Texture Consistency 0.345

Brightness & Contrast Analysis

Metric Value
Mean Brightness 0.564
Brightness Variance 0.187
Brightness Uniformity 0.668
Brightness Skewness -0.912
Brightness Entropy 6.998
Rms Contrast 0.187
Michelson Contrast 1.0
Weber Contrast 0.702
Mean Local Contrast 0.016
Contrast Uniformity 0.0
Dynamic Range 1.0
Effective Dynamic Range 0.6
Shadow Percentage 18.218
Midtone Percentage 43.946
Highlight Percentage 37.836
Shadow Clipping 0.008
Highlight Clipping 0.002
Tonal Balance 0.0
Fine Contrast 0.009
Medium Contrast 0.021
Coarse Contrast None
Multiscale Contrast Ratio 1.0
Edge Contrast 0.116
Contrast Clustering 0.655

Spatial Distribution Analysis

Metric Value
Spatial Coherence 0.788
Color Clustering 0.539
Color Transition Smoothness 0.712
Transition Uniformity 0.728
Sharp Transition Ratio 0.1
Transition Directionality 0.129
Mean Saturation 0.464
Saturation Variance 0.02
Low Saturation Ratio 0.136
Medium Saturation Ratio 0.805
High Saturation Ratio 0.058
Saturation Clustering 0.999
Hue Concentration 0.925
Complementary Balance 0.003
Analogous Dominance 0.962
Temperature Bias -0.926

Methodology

This analysis employs standardized computational methods for objective image characterization. Color extraction uses k-means clustering algorithm. Texture analysis applies Haralick feature extraction. Brightness metrics include mean, variance, and distribution analysis. Spatial patterns are characterized through coherence and clustering measurements. All methods are deterministic and reproducible. Analysis performed by Multimodal Institute's computational imaging systems.

References

[1] Arnaud Quercy (2024). F# minor - Research on Harmony - Variation 1 — Catalog raisonné. https://arnaudquercy.art/en/catalogue-raisonne/AQC0603.html

[2] Quercy, A. (2025). Untitled - Gallery. https://artquamanima.com/en/artworks/2024/01/f-minor-research-on-harmony-variation-1_6qq.html

[3] Quercy, A. (2025). Computational Image Analysis Standard - MMIDS-CMP-2025 https://multimodal.institute/en/publications/2025/10/mmids-cmp-2025-computational-image-analysis-standard-dg1.html

Epistemic profile

Claim typecomputational analysis
Voicethird person
Epistemic statusempirical measurement
Methodologycomputational analysis
Certaintyhigh

Checksum (SHA-256)

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