Welcome to the colouR
package, a useful tool for
analyzing and utilizing the colors in images, as well as providing color
palettes inspired by Radiohead and Taylor Swift album covers. Whether
you are a designer looking for inspiration, a data analyst searching for
unique ways to visualize data, or a music lover wanting to incorporate
your favorite album colors into your projects, this package is for you.
It is recommended to view this instructional guide via the GitHub page:
https://alaninglis.github.io/colouR/articles/colouR.html
The colouR
package provides a set of functions that
allows you to:
colouR
package a
versatile and easy-to-use tool for exploring and working with colors in
images.Some of the main functions included in the colouR
package are:
getTopCol()
: Extracts the top n colors from an
image, with options to exclude black and white shades, and to group and
average colors.
colPalette()
: Creates a color palette based on a
specified album cover from either Radiohead or Taylor Swift
discography.
scaleColor()
: Provides a ggplot2-compatible color
scale based on the selected album cover palette, for both discrete and
continuous data.
scaleFill()
: Provides a ggplot2-compatible fill
scale based on the selected album cover palette, for both discrete and
continuous data.
groupCols
: This function takes a vector of hex color
values and groups them using k-means clustering in the RGB color
space.
avgHex
: This function takes a data frame with two
columns: one for the hex color values and another for the group labels.
It calculates the average color for each group and returns a data frame
with the group labels and their corresponding average hex
colors.
img2pal
: Creates a Colour Palette from an input
image.
plotPalette
: This function takes a data frame with a
column of colors and plots the colors as a color palette.
In addition, we provide several utility functions, all of which are demonstrated in this document.
To begin using the colouR
package, simply install it
from GitHub, load it into your R session, and start exploring the world
of colors in images.
The first function we demonstrate is the getTopCol
function. This function reads an image file, extracts the colors, and
returns the top n colors based on their frequency in the image.
Optionally, black and white shades can be excluded, and the colors can
be grouped and averaged (more on colour averaging later!). This function
can take in a .jpg, .jpeg, or .png or a url pointing to an image using
any of these formats, via the path
argument and returns the
top n
colours used in the image.
The arguments for this function are:
path
Character, the path to the image file (either jpg
or png).n
Integer, the number of top colors to return. If NULL
(default), return all colors.exclude
Logical, whether to exclude black and white
shades. Default is TRUE.sig
Integer, the number of decimal places for the color
percentage. Default is 4.avgCols
Logical, whether to average the colors by
groups. Default is TRUE.n_clusters
Integer, the number of clusters to use for
grouping colors. Default is 5.customExclude
Character vector. Optional vector of
custom color codes in HEX format to be excluded.To begin, lets first take a look at a raw image:
knitr::include_graphics("https://raw.githubusercontent.com/AlanInglis/colouR/master/images/bender.png")
In the code below we obtain the top 10 most frequent colours used in
the image without using any colour grouping or averaging by setting
avgCols = FALSE
. Additionally, we chose not to exclude any
black or white shades by setting exclude = FALSE
(note: the
exclude
argument excludes many black and white shades,
however this list is far from exhaustive and, consequently, blacks and
white will most likely still be included. However we do allow you to
provide additional black and white hex codes to be included in the
exclude function… more on that below). The output of the
getTopCols
when setting the outlined parameters is a data
frame with three columns, that is, the top colors, their frequency, and
percentage in the image.
set.seed(1701) # for reproducability
top10 <- getTopCol(path = "https://raw.githubusercontent.com/AlanInglis/colouR/master/images/bender.png",
n = 10,
avgCols = FALSE,
exclude = FALSE)
# take a look at the top 100 most frequent colours in the image:
top10
#> hex freq col_percent
#> 1 #FFFFFF 1984612 54.1233
#> 2 #A9C5DA 487309 13.2896
#> 3 #7CA5C1 160750 4.3839
#> 4 #C9E0F0 60288 1.6441
#> 5 #5A8595 36473 0.9947
#> 6 #FFFAC2 36049 0.9831
#> 7 #231F20 11566 0.3154
#> 8 #A9C5DB 8923 0.2433
#> 9 #AAC5DA 7807 0.2129
#> 10 #7BA4C0 6042 0.1648
Plotting the top 10 colours, we can see that the colour white dominates the image with over 51% of the image being white. Since most of this white is probably from the background of the image, this result is not very useful.
# order factors
top10$hex <- factor(top10$hex, levels = top10$hex)
# plot
ggplot(top10, aes(x = hex, y = freq)) +
geom_bar(stat = 'identity', fill = top10$hex) +
theme_dark() +
theme(axis.text.x = element_text(angle = 45, hjust = 1)) +
xlab('HEX colour code') +
ylab('Frequency')
Since most of this white is probably from the background of the
image, this result is not very useful. To exclude white and black shades
we set exclude = TRUE
(more on this below).
set.seed(1701) # for reproducability
top10exclude <- getTopCol(path = "https://raw.githubusercontent.com/AlanInglis/colouR/master/images/bender.png",
n = 10,
avgCols = FALSE,
exclude = TRUE,
customExclude = NULL)
Now, plotting these colours gives a more truer representation of the colours used in the image:
# order factors
top10exclude$hex <- factor(top10exclude$hex, levels = top10exclude$hex)
# plot
ggplot(top10exclude, aes(x = hex, y = freq)) +
geom_bar(stat = 'identity', fill = top10exclude$hex) +
theme_bw() +
theme(axis.text.x = element_text(angle = 45, hjust = 1)) +
xlab('HEX colour code') +
ylab('Frequency')
In Figure 3, we can see that there are a lot of similar colours. That
is, many of the colours are different shades of a metallic blue. By
setting avgCols = TRUE
, we can group together colours with
similar shades into \(n\) groups via
the n_clusters
argument and average over them to produce a
single colour. In this case, we are setting n_clusters = 5
(this eliminates the need to set the n
argument).
set.seed(1701) # for reproducability
top10avg <- getTopCol(path = "https://raw.githubusercontent.com/AlanInglis/colouR/master/images/bender.png",
avgCols = TRUE,
exclude = TRUE,
n_clusters = 5)
# order factors
top10avg$avg_color <- factor(top10avg$avg_color, levels = top10avg$avg_color)
# plot
ggplot(top10avg, aes(x = avg_color, y = freq)) +
geom_bar(stat = 'identity', fill = top10avg$avg_color) +
theme_bw() +
theme(axis.text.x = element_text(angle = 45, hjust = 1)) +
xlab('Average colour') +
ylab('Frequency')
In Figure 4, we can see that several black shade have slipped through
the exclude
filter. However, we can provide additional hex
codes by passing them to the excludeCols
argument. To
illustrate this point, we will use the previously created dataframe of
top 10 colours, with the inbuilt black and white shades removed.
Examining the colours we have:
top10exclude
#> hex freq col_percent
#> 2 #A9C5DA 487309 13.2896
#> 3 #7CA5C1 160750 4.3839
#> 4 #C9E0F0 60288 1.6441
#> 5 #5A8595 36473 0.9947
#> 6 #FFFAC2 36049 0.9831
#> 7 #231F20 11566 0.3154
#> 8 #A9C5DB 8923 0.2433
#> 9 #AAC5DA 7807 0.2129
#> 10 #7BA4C0 6042 0.1648
#> 11 #A7C6DA 5520 0.1505
However, if we want to exclude any of these colours, we can pass them
as a character vector of hex values to the customExclude
argument, as follows:
coloursToExclude <- c("#A9C5DA", "#7CA5C1", "#C9E0F0", "#5A8595", "#FFFAC2")
top10exclude <- getTopCol(path = "https://raw.githubusercontent.com/AlanInglis/colouR/master/images/bender.png",
n = 10,
avgCols = FALSE,
exclude = TRUE,
customExclude = coloursToExclude)
Now when we look at the top10exclude
object, it should
not contain any of the colours selected.
As we have already seen, in colouR
we provide an option
to group and average colours in the getTopCol
function. The
function used to group the colours is the groupCols
function. This function takes a vector of hex color values and converts
them to the RGB colour space. It then groups them into
n_clusters
using k-means clustering. For example, if we
take a vector of colours like the one below, we can see that there are
some unique colours and some colours that are similar. To begin, lets
take a look at the colour palette, we can do this by using the
plotPalette
function:
hex_colors <- c("#FF0000", "#00FF00", "#0000FF", "#FFFF00", "#FF00FF", "#1050FF", "#ffff50")
plotPalette(hex_colors)
To group the colours into, say, 4 groups we set
n_clusters = 4
. The output is a data frame with two
columns. One containing the hex value and another containing the group
number.
cols <- c("#FF0000", "#00FF00", "#0000FF", "#FFFF00", "#FF00FF", "#1050FF", "#ffff50")
set.seed(1701) # for reproducability
grCol <- groupCols(hex_colors = cols, n_clusters = 4)
Arranging the data frame by group and plotting gives us:
# order factors
grCol$hex_color <- factor(grCol$hex_color, levels = grCol$hex_color)
# plot
ggplot(grCol, aes(x = hex_color, y = group)) +
geom_bar(stat = 'identity', fill = grCol$hex_color) +
theme_bw() +
theme(axis.text.x = element_text(angle = 45, hjust = 1)) +
xlab('Average colour') +
ylab('Group')
or using the plotPalette
function:
We can see that the green colour is in a single group, the two blue colours are grouped together, along with the two yellow colours. The red and violet colours are also in a group.
The avgHex
function takes a data frame with two columns:
one for the hex color values and another for the group labels. It
calculates the average color for each group and returns a data frame
with the group labels and their corresponding average hex colors. Using
the grouped colours from before we get:
set.seed(1701)
avgCl <- avgHex(df = grCol, group_col = 'group', hex_col = 'hex_color')
avgCl
#> group avg_color freq
#> 1 1 #FF007F 2
#> 2 2 #FFFF28 2
#> 3 3 #0828FF 2
#> 4 4 #00FF00 1
plotPalette(df = avgCl, color_col = 'avg_color')
In Figure 8, we can see that the four groups have been averaged into single colours.
The img2pal
function automates some of the above
processes and creates a custom palette, ready to use, directly from an
input image. The function arguments mirror those from the
gettpCol
function. In the example below, we are creating a
colour palette of the top 10 most frequent colours, while grouping into
15 clusters and averaging the colours. Using the same image of Bender
from above, we can do the following:
pal <- img2pal(path = "https://raw.githubusercontent.com/AlanInglis/colouR/master/images/bender.png",
n = 10,
avgCols = TRUE,
exclude = TRUE,
n_clusters = 15,
customExclude = NULL)
And we can take a look at the hex codes for the colour palette by
checking the newly created pal
opbject:
One useful feature of taking in an image and return the top \(n\) colours is the ability to turn that
image into a colour palette. For fun, we provide colour palettes based
on all the studio albums of both Radiohead and Taylor Swift. The
palettes can be accessed by indexing either
radiohead_palettes
or taylor_palettes
, as
shown in the code below. It should be noted, that when creating these
custom palettes, the top 10 average colours were chosen.
The full list of names for Radiohead are:
pabloHoney
: Pablo HoneyBends
: The BendsokComputer
: OK ComputerKID_A
: Kid AAmnesiac
: Amnesiachttt
: Hail to the TheifinRainbows
: In Rainbowstkol
: The King of Limbsamsp
: A Moon Shaped PoolThe full list of names for Taylor Swift are:
tSwift
: Taylor Swiftfearless
: FearlessspeakNow
: Speak Nowred
: Red1989
: 1989reputation
: Reputationlover
: Loverfolklore
: Folkloreevermore
: Evermoremidnights
: MidnightsTo view any of the palettes, we can use the plotPalette
function:
Additionally, to create a larger colour palette we provide the
colPalette
function. This function generates a custom color
palette based on the specified palette
name. The color
palettes are sourced from two predefined lists:
taylor_palettes
and radiohead_palettes
. For
example
# Create a color palette based on a Taylor Swift album cover
tswift_palette <- colPalette(palette = "evermore")
tpal <- tswift_palette(20)
plotPalette(tpal)
For convenience, we also provide functionality to use these palettes
as either a scale fill or scale colour (similar to the
ggplot2
scale_color
and
scale_fill
functions).
library(dplyr)
#>
#> Attaching package: 'dplyr'
#> The following objects are masked from 'package:stats':
#>
#> filter, lag
#> The following objects are masked from 'package:base':
#>
#> intersect, setdiff, setequal, union
# Apply a Radiohead color scale to a ggplot2 plot
# Create a summary data frame with counts per manufacturer for the mpg data
manufacturer_counts <- mpg %>%
group_by(manufacturer) %>%
summarize(count = n())
# sort the data
mpgsort <- manufacturer_counts[order(manufacturer_counts$count, decreasing = TRUE), ]
# order factors
mpgsort$manufacturer <- factor(mpgsort$manufacturer, levels = mpgsort$manufacturer)
# Create the plot using a Radiohead palette
ggplot(mpgsort, aes(x = manufacturer, y= count, fill = manufacturer)) +
geom_bar(stat = 'identity') +
theme_minimal() +
theme(axis.text.x = element_text(angle = 45, hjust = 1)) +
scaleFill(palette = "pabloHoney", guide = "none")
scaleFill
.
To do the same using a Taylor Swift palette:
# Create the plot using a Taylor Swift palette
ggplot(mpgsort, aes(x = manufacturer, y= count, fill = manufacturer)) +
geom_bar(stat = 'identity') +
theme_minimal() +
theme(axis.text.x = element_text(angle = 45, hjust = 1)) +
scaleFill(palette = "evermore", guide = "none")
scaleFill
.
Similarly, to use scaleColor
:
# Create the plot using a Radiohead palette
ggplot(mpg[1:122,], aes(x = displ, y = cty, color = manufacturer)) +
geom_point(size = 2) +
scaleColor(palette = 'tkol') +
theme_minimal()
scaleColor
.
And using a Taylor Swift palette:
# Create the plot using a Taylor Swift palette
ggplot(mpg[1:122,], aes(x = displ, y = cty, color = manufacturer)) +
geom_point(size = 2) +
scaleColor(palette = 'tSwift') +
theme_minimal()
scaleColor
.
Of course, we can use these palettes in a more traditional way by passing the palette to ggplot. For example:
# Dummy data
x <- LETTERS[1:20]
y <- paste0("var", seq(1,20))
data <- expand.grid(X=x, Y=y)
data$Z <- runif(400, 0, 5)
# Set a Taylor Swift palette of two colours
pal <- taylor_palettes$tSwift[c(6,5)]
# Create a heatmap
ggplot(data, aes(x = X, y = Y)) +
geom_tile(aes(fill = Z)) +
scale_fill_gradientn(
colors = pal, name = "Z value",
guide = guide_colorbar(
order = 1,
frame.colour = "black",
ticks.colour = "black"
), oob = scales::squish
) +
xlab('') + ylab('') +
theme_bw()
In this section we take a brief look at some of the utility functions
used in colouR
. Thes include a useful little function that
returns the file extension of a given file. For example:
fileName <- "https://raw.githubusercontent.com/AlanInglis/colouR/master/images/bender.png"
getExtension(file = fileName)
#> [1] "png"
# another example
getExtension(file = "example.txt")
#> [1] "txt"
We can see that the returned values are .png and .txt, respectivley.
Additionally, we provide a function that reads an image file (PNG or
JPG) from a URL and returns the image data. This is done via the
read_image_from_url
function. It returns an object
containing the image data. If the image is a JPG, the object will be of
class “array”. If the image is a PNG, the object will be of class
“matrix”.
Using the image of Bender from before we can get the image data. The resulting object can then be used, for example:
urlName <- "https://raw.githubusercontent.com/AlanInglis/colouR/master/images/bender.png"
image <- read_image_from_url(path = urlName)
# set up a plot
plot(c(100, 250), c(300, 550), type = "n", xlab = "", ylab = "")
rasterImage(image,100,300,150,550)