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Experimental categorization and
deep visualization
AISV Lund | August 22 | 2019
Everardo Reyes
Université Paris 8
Lev Manovich
City University of New York
http://lab.culturalanalytics.info/
Cultural Analytics
Cultural Analytics
● It’s an approach to analysis of culture deïŹned by Manovich in 2005
● Using techniques and technologies in visual computing
● Using data methods to see contemporary global culture
● Some research questions:
○ What are the themes, styles, behaviors, and their patterns in contemporary global culture?
○ Where are they active? (Spatial distribution)
○ When they emerge? How they diffuse, change over time?
Cultural Analytics
● A cultural analyst designs methods, datasets, visualization models, and
exploratory tools that allow us to see relationships among
heterogeneous data
● Our contribution in this talk:
○ Experimental Categorization
○ Deep Visualization
Examples of projects
http://lab.culturalanalytics.info/p/projects.html
The Plastic Semiotics Approach
The Plastic Semiotics Approach
We focus on three plastic categories: colors, shapes, textures
Such categories are helpful for segmenting an image, naming its parts, and
establishing syntactic, semantic, and pragmatic correlations of meaning
These dimensions can be measured in all images regardless of the content
and type. Such measurements were commonly used in Computer Vision
since early 1990s for content-based image retrieval
Analysis of “La ïŹlle Ă  la montre et au chapeau”
Göran Sonesson, 1988
Plastic Categories as Low-Level Image Descriptors
Color Descriptors Tone extraction using color models (RGB, HSV, HSL)
Shape Descriptors Geometrical features (aspect ratio, rectangularity,
circularity, elongatedness)
Texture Descriptors Numerical vectors that determine if points in a ROI are
lesser, greater or approximate to a central reference
point
Mid-Level
Spatial e.g. top, center, right, left...
Structural e.g. Has-parts, has-eyes,
has-legs...
Holistic e.g. Furry, shiny, metallic...
High-Level
“Animal”, “human”, “house”, “advertising”...
Moods and sentiments (happy, angry, sad...)
Microsoft Azure's Computer Vision
https://azure.microsoft.com/en-us/services/cognitive-services/computer-vision/
Nowadays CV services use different kinds of neural networks. In this example we see high-level
descriptors based on combinations of lower levels. It is important to note that they are not
obtained manually
Experimental Categorization
Developed by pho.to, based on AI algorithms for image processing
Consider software like PhotoLab...
PhotoLab has more than 600 effects, 30 categories, and templates that allow users to
create their own “combos”
PhotoLab Combos
https://photolab.me/d/5021744
Pho.to API
http://developers.pho.to/documentation/methods/ïŹlters/color
Experimental Categorization
● A term to describe innovative, speculative, unstable, and work-in-progress
measurements and dimensions to describe visual images
● Although they are built on top of other low and mid-level descriptors, they are unique
in the sense that they are based on visual characteristics, not on linguistic terms, e.g.
colors, sharpness, blur, gradients, texture patterns, degree of skewness, circularity,
rectangularity of shapes
● An experimental category may thus receive any name that stands for a combination
of descriptors in a determined context of use (a tool for photo retouching,
information retrieval systems, etc.)
How to implement an experimental categorization?
● Let’s see two cases:
○ Case 01: As pre-deïŹned routines that are used at the moment of
generating data (while extracting, segmenting, naming)
○ Case 02: As a method for visual analytics, i.e. as a combination
of user-interfaces to explore data by using obtained
measurements
Case 01: As pre-deïŹned routines that are used at the moment of generating
data (while extracting, segmenting, naming). For example, creating new shape
descriptors such as Russ (2011):
Case 02: As a method for visual analytics, i.e. as a combination of
user-interfaces to explore data by using obtained measurements.
While one of the most common methods to extract and determine
frequent colors in an image is to measure separately R, G, B channels...
Most dominant color
Red: 67.52
Green: 67.07
Blue: 70.05
We can also calculate the difference between percentage amounts of
colors in an image based on k-means clusters
-30.43 3.88 = 26.55
The difference can be used as a threshold to ïŹlter images in a large collection
e.g. “Plot only those images whose % distance is higher than 25”
From the following dataset (Albums released in 1988)
This is a Radial Plot representation of the same data, along the chromatic circle
Radial Plots Using Percentage Difference
Percentage Diff. = 0 Percentage Diff. = 25 Percentage Diff. = 50
Albums with high/less variety of colors can be ïŹltered
L’homme à la guitare
George Braque, 1914
An application in painting
Experimental Categories:
● Differences in ROIs
● Texture Shadows
● Infrequent Plastic Signs
● High Variability: most varied
categories
● Colored Shapes: particles that have
similar color and shape
Interactive 3D Surface Plot
Kai Uwe Barthel, 2004
https://imagej.nih.gov/ij/plugins/surface-plot-3d.html
Deep Visualization
Blink: The Ising Model (2004-2008)
https://vimeo.com/257843869
George Legrady
Let’s consider this artwork
Blink: The Ising Model (2004-2008)
George Legrady
polypTelic: The Ising Model (2004-2008)
George Legrady
And this is the process occuring behind the scenes
Deep Visualization
A method to make evident the underlying (and sometimes simultaneous)
technical processes that occur behind the scenes and are often taken for
granted by common users
Venice, Italy, May 2019 Mount San Jancinto, August 2019
Some inspiration from culture-nature, “seeing” historical traces in layers
In our interactive
visualization, the
user can slide
a bar to reveal
other technical layers
that could be
potentially seen
Converting between polar and
Cartesian coordinates:
x = r cos φ
y = r sin φ
var radius = 7;
var polarX = radius * Math.sin( a.c01_h_hsl * Math.PI/
var polarY = radius * Math.cos( a.c01_h_hsl * Math.PI/
These other layers that could be seen, put together, and modify each other in real time
One of the theoretical and practical tasks of Cultural Analytics is the
development of the appropriate measures of cultural diversity, structure
(relations, networks), dynamics (temporal changes), and variability (themes
and deviations) for different types of media and cultural ïŹelds
For Pictorial Semiotics the main obstacle before developing a full
computer-aided analysis of pictures may not be technological, but rather
phenomenological. We need to understand the nature of those holistic,
topological, and physiognomic properties of perception on which human
beings focus in order to make sense of pictures from a plastic point of view
Tack för din uppmÀrksamhet
AISV | Lund | August 22 | 2019
Everardo Reyes & Lev Manovich
http://lab.culturalanalytics.info/

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Experimental categorization and deep visualization

  • 1. Experimental categorization and deep visualization AISV Lund | August 22 | 2019 Everardo Reyes UniversitĂ© Paris 8 Lev Manovich City University of New York http://lab.culturalanalytics.info/
  • 3. Cultural Analytics ● It’s an approach to analysis of culture deïŹned by Manovich in 2005 ● Using techniques and technologies in visual computing ● Using data methods to see contemporary global culture ● Some research questions: ○ What are the themes, styles, behaviors, and their patterns in contemporary global culture? ○ Where are they active? (Spatial distribution) ○ When they emerge? How they diffuse, change over time?
  • 4. Cultural Analytics ● A cultural analyst designs methods, datasets, visualization models, and exploratory tools that allow us to see relationships among heterogeneous data ● Our contribution in this talk: ○ Experimental Categorization ○ Deep Visualization
  • 7. The Plastic Semiotics Approach We focus on three plastic categories: colors, shapes, textures Such categories are helpful for segmenting an image, naming its parts, and establishing syntactic, semantic, and pragmatic correlations of meaning These dimensions can be measured in all images regardless of the content and type. Such measurements were commonly used in Computer Vision since early 1990s for content-based image retrieval
  • 8. Analysis of “La ïŹlle Ă  la montre et au chapeau” Göran Sonesson, 1988
  • 9. Plastic Categories as Low-Level Image Descriptors Color Descriptors Tone extraction using color models (RGB, HSV, HSL) Shape Descriptors Geometrical features (aspect ratio, rectangularity, circularity, elongatedness) Texture Descriptors Numerical vectors that determine if points in a ROI are lesser, greater or approximate to a central reference point
  • 10. Mid-Level Spatial e.g. top, center, right, left... Structural e.g. Has-parts, has-eyes, has-legs... Holistic e.g. Furry, shiny, metallic... High-Level “Animal”, “human”, “house”, “advertising”... Moods and sentiments (happy, angry, sad...)
  • 11. Microsoft Azure's Computer Vision https://azure.microsoft.com/en-us/services/cognitive-services/computer-vision/ Nowadays CV services use different kinds of neural networks. In this example we see high-level descriptors based on combinations of lower levels. It is important to note that they are not obtained manually
  • 13. Developed by pho.to, based on AI algorithms for image processing Consider software like PhotoLab...
  • 14. PhotoLab has more than 600 effects, 30 categories, and templates that allow users to create their own “combos”
  • 16.
  • 18. Experimental Categorization ● A term to describe innovative, speculative, unstable, and work-in-progress measurements and dimensions to describe visual images ● Although they are built on top of other low and mid-level descriptors, they are unique in the sense that they are based on visual characteristics, not on linguistic terms, e.g. colors, sharpness, blur, gradients, texture patterns, degree of skewness, circularity, rectangularity of shapes ● An experimental category may thus receive any name that stands for a combination of descriptors in a determined context of use (a tool for photo retouching, information retrieval systems, etc.)
  • 19. How to implement an experimental categorization? ● Let’s see two cases: ○ Case 01: As pre-deïŹned routines that are used at the moment of generating data (while extracting, segmenting, naming) ○ Case 02: As a method for visual analytics, i.e. as a combination of user-interfaces to explore data by using obtained measurements
  • 20. Case 01: As pre-deïŹned routines that are used at the moment of generating data (while extracting, segmenting, naming). For example, creating new shape descriptors such as Russ (2011):
  • 21. Case 02: As a method for visual analytics, i.e. as a combination of user-interfaces to explore data by using obtained measurements. While one of the most common methods to extract and determine frequent colors in an image is to measure separately R, G, B channels... Most dominant color Red: 67.52 Green: 67.07 Blue: 70.05
  • 22. We can also calculate the difference between percentage amounts of colors in an image based on k-means clusters -30.43 3.88 = 26.55 The difference can be used as a threshold to ïŹlter images in a large collection e.g. “Plot only those images whose % distance is higher than 25”
  • 23. From the following dataset (Albums released in 1988)
  • 24. This is a Radial Plot representation of the same data, along the chromatic circle
  • 25. Radial Plots Using Percentage Difference Percentage Diff. = 0 Percentage Diff. = 25 Percentage Diff. = 50 Albums with high/less variety of colors can be ïŹltered
  • 26. L’homme Ă  la guitare George Braque, 1914 An application in painting
  • 27. Experimental Categories: ● Differences in ROIs ● Texture Shadows ● Infrequent Plastic Signs ● High Variability: most varied categories ● Colored Shapes: particles that have similar color and shape Interactive 3D Surface Plot Kai Uwe Barthel, 2004 https://imagej.nih.gov/ij/plugins/surface-plot-3d.html
  • 29. Blink: The Ising Model (2004-2008) https://vimeo.com/257843869 George Legrady Let’s consider this artwork
  • 30. Blink: The Ising Model (2004-2008) George Legrady polypTelic: The Ising Model (2004-2008) George Legrady And this is the process occuring behind the scenes
  • 31. Deep Visualization A method to make evident the underlying (and sometimes simultaneous) technical processes that occur behind the scenes and are often taken for granted by common users
  • 32. Venice, Italy, May 2019 Mount San Jancinto, August 2019 Some inspiration from culture-nature, “seeing” historical traces in layers
  • 33. In our interactive visualization, the user can slide a bar to reveal other technical layers that could be potentially seen
  • 34. Converting between polar and Cartesian coordinates: x = r cos φ y = r sin φ var radius = 7; var polarX = radius * Math.sin( a.c01_h_hsl * Math.PI/ var polarY = radius * Math.cos( a.c01_h_hsl * Math.PI/ These other layers that could be seen, put together, and modify each other in real time
  • 35. One of the theoretical and practical tasks of Cultural Analytics is the development of the appropriate measures of cultural diversity, structure (relations, networks), dynamics (temporal changes), and variability (themes and deviations) for different types of media and cultural ïŹelds For Pictorial Semiotics the main obstacle before developing a full computer-aided analysis of pictures may not be technological, but rather phenomenological. We need to understand the nature of those holistic, topological, and physiognomic properties of perception on which human beings focus in order to make sense of pictures from a plastic point of view
  • 36. Tack för din uppmĂ€rksamhet AISV | Lund | August 22 | 2019 Everardo Reyes & Lev Manovich http://lab.culturalanalytics.info/