AQC0901

Nanopublication — Computational Image Analysis - AQC0901

Claim 1: Computational Image Analysis - AQC0901

Analysis record [3]: Db Minor [1] - Research on Harmony - Variations 9 (AQC0901) [2] by Arnaud Quercy [2]. Method: k-means. Parameters: 10 colors. Metrics: color distribution, texture, brightness, spatial patterns. Completed: 2025-12-11.

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]: 2089x2089 pixels. Analysis date: 2025-12-11.

Color Analysis

Rank Color Hex % Family Name
1 5ABCD8 21.7 blue mediumturquoise
2 726755 19.9 yellow-orange dimgray
3 5F5547 14.6 yellow-orange dark brown
4 EDDEAB 11.9 yellow palegoldenrod
5 867A6A 8.0 yellow-orange gray
6 5B81B7 7.1 blue-violet grayish purple
7 4491CE 7.1 blue-violet grayish purple
8 7D9CC8 6.5 blue-violet cornflowerblue
9 F5DE2C 2.1 yellow gold
10 252A2A 1.0 gray very dark gray
11 89D6E3 0.3 blue-green skyblue [Accent]
12 E3F0D8 0.3 yellow-green beige [Accent]
13 0C0D22 0.3 violet very dark purple [Accent]
14 9BC8C5 0.3 green lightsteelblue [Accent]
15 AE9C8B 0.3 orange rosybrown [Accent]

Color Families:

Family %
yellow-orange 42.5
blue 21.7
blue-violet 20.7
yellow 14.0
gray 1.0
blue-green 0.3
yellow-green 0.3
violet 0.3
green 0.3
orange 0.3

Accent Colors:

Hex Family Name Chroma
89D6E3 blue-green skyblue 25.2
E3F0D8 yellow-green beige 13.5
0C0D22 violet very dark purple 15.2
9BC8C5 green lightsteelblue 15.3
AE9C8B orange rosybrown 11.7

Texture Analysis

Metric Value
Global Roughness 0.171
Mean Local Roughness 0.02
Roughness Uniformity 0.02
Edge Density 0.106
Mean Gradient Magnitude 0.161
Gradient Variance 0.043
Gradient Smoothness 0.0
Directional Coherence 0.025
Pattern Complexity 0.13
Pattern Repetition 1.0
Detail Frequency Ratio 0.637
Spatial Variation 0.127
Texture Consistency 0.611

Brightness & Contrast Analysis

Metric Value
Mean Brightness 0.54
Brightness Variance 0.171
Brightness Uniformity 0.684
Brightness Skewness 0.532
Brightness Entropy 7.14
Rms Contrast 0.171
Michelson Contrast 1.0
Weber Contrast 0.577
Mean Local Contrast 0.022
Contrast Uniformity 0.085
Dynamic Range 1.0
Effective Dynamic Range 0.549
Shadow Percentage 6.066
Midtone Percentage 76.355
Highlight Percentage 17.579
Shadow Clipping 0.0
Highlight Clipping 0.0
Tonal Balance 0.0
Fine Contrast 0.011
Medium Contrast 0.027
Coarse Contrast 0.039
Multiscale Contrast Ratio 0.278
Edge Contrast 0.161
Contrast Clustering 0.389

Spatial Distribution Analysis

Metric Value
Spatial Coherence 0.748
Color Clustering 0.318
Color Transition Smoothness 0.581
Transition Uniformity 0.702
Sharp Transition Ratio 0.1
Transition Directionality 0.032
Mean Saturation 0.395
Saturation Variance 0.035
Low Saturation Ratio 0.344
Medium Saturation Ratio 0.615
High Saturation Ratio 0.041
Saturation Clustering 0.999
Hue Concentration 0.146
Complementary Balance 0.169
Analogous Dominance 0.508
Temperature Bias -0.017

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). Db Minor - Research on Harmony - Variations 9 — Catalog raisonné. https://arnaudquercy.art/en/catalogue-raisonne/AQC0901.html

[2] Quercy, A. (2025). Untitled - Gallery. https://artquamanima.com/en/artworks/2025/11/db-minor-research-on-harmony-variations-9_iap.html

[3] Quercy, A. (2025). Computational Image Analysis Standard - MMIDS-CMP-2025 https://multimodal.institute/en/publications/2025/11/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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