AQC0937

Nanopublication — Computational Image Analysis - AQC0937

Ab Minor - Research on Harmony - Variations 15

Claim 1: Computational Image Analysis - AQC0937

Analysis record [3]: Ab Minor [1] - Research on Harmony - Variations 15 (AQC0937) [2] by Arnaud Quercy [2]. Method: k-means. Parameters: 10 colors. Metrics: color distribution, texture, brightness, spatial patterns. Completed: 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]: 1988x2783 pixels. Analysis date: 2026-02-04.

Color Analysis

Rank Color Hex % Family Name
1 231436 15.6 violet very dark purple
2 4098CA 14.0 blue steelblue
3 2E4881 13.8 blue-violet grayish purple
4 B6BDE3 13.1 blue-violet lightsteelblue
5 0C0A15 12.1 violet black
6 E8D6C1 9.4 yellow-orange wheat
7 382659 9.0 violet dusty mauve
8 AE7EC3 5.6 red-violet mediumpurple
9 566495 5.1 violet dusty mauve
10 C8C444 2.4 yellow ochre
11 827568 0.3 orange gray [Accent]
12 E7B0AA 0.3 red-orange lightpink [Accent]
13 A1A76B 0.3 yellow-green ochre [Accent]
14 846A76 0.3 red dusty mauve [Accent]
15 66A8B6 0.3 blue-green cadetblue [Accent]

Color Families:

Family %
violet 41.8
blue-violet 26.9
blue 14.0
yellow-orange 9.4
red-violet 5.6
yellow 2.4
orange 0.3
red-orange 0.3
yellow-green 0.3
red 0.3
blue-green 0.3

Accent Colors:

Hex Family Name Chroma
827568 orange gray 9.5
E7B0AA red-orange lightpink 22.0
A1A76B yellow-green ochre 32.3
846A76 red dusty mauve 12.4
66A8B6 blue-green cadetblue 22.0

Texture Analysis

Metric Value
Global Roughness 0.278
Mean Local Roughness 0.024
Roughness Uniformity 0.03
Edge Density 0.085
Mean Gradient Magnitude 0.192
Gradient Variance 0.098
Gradient Smoothness 0.0
Directional Coherence 0.011
Pattern Complexity 0.126
Pattern Repetition 1.0
Detail Frequency Ratio 0.635
Spatial Variation 0.192
Texture Consistency 0.701

Brightness & Contrast Analysis

Metric Value
Mean Brightness 0.401
Brightness Variance 0.278
Brightness Uniformity 0.307
Brightness Skewness 0.284
Brightness Entropy 7.585
Rms Contrast 0.278
Michelson Contrast 1.0
Weber Contrast 0.914
Mean Local Contrast 0.026
Contrast Uniformity 0.0
Dynamic Range 1.0
Effective Dynamic Range 0.816
Shadow Percentage 49.717
Midtone Percentage 25.431
Highlight Percentage 24.851
Shadow Clipping 0.011
Highlight Clipping 0.001
Tonal Balance 0.24
Fine Contrast 0.012
Medium Contrast 0.033
Coarse Contrast 0.05
Multiscale Contrast Ratio 0.245
Edge Contrast 0.192
Contrast Clustering 0.299

Spatial Distribution Analysis

Metric Value
Spatial Coherence 0.753
Color Clustering 0.764
Color Transition Smoothness 0.478
Transition Uniformity 0.32
Sharp Transition Ratio 0.1
Transition Directionality 0.013
Mean Saturation 0.508
Saturation Variance 0.059
Low Saturation Ratio 0.29
Medium Saturation Ratio 0.463
High Saturation Ratio 0.247
Saturation Clustering 0.997
Hue Concentration 0.759
Complementary Balance 0.031
Analogous Dominance 0.866
Temperature Bias -0.495

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 (2025). Ab Minor - Research on Harmony - Variations 15 — Catalog raisonné. https://arnaudquercy.art/en/catalogue-raisonne/AQC0937.html
https://arnaudquercy.art/fr/catalogue-raisonne/AQC0937.html

[2] Quercy, A. (2025). Ab Minor - Research on Harmony - Variations 15 - Gallery. https://artquamanima.com/en/artworks/2025/12/ab-minor-research-on-harmony-variations-15_1i11.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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