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DESCRIPTION
Image Processing library (PIL). This is a package that you can import into python and it has quite a few methods that you can process image files with. There are loaders for the majority of the popular file formats The following import is required from PIL import Image - PowerPoint PPT Presentation
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IMAGE PROCESSING LIBRARY (PIL)
This is a package that you can import into python and it has quite a few methods that you can process image files with. There are loaders for the majority of the popular file formats
The following import is required
from PIL import Image
The above works already in Anaconda. If you are building your own world using IDLE then you would need to download PIL and install in your environment.
Auto generates x values here!
EXAMPLE COMMANDS IN PIL
The Image module is quite useful. Here are some examples
from PIL import Image im = Image.open("bride.jpg") #Read in the image
im.rotate(45) #Returns a rotated image, 45 degrees
im.crop(box) # Returns a copy of a rect. sub-region
im.filter(filter) #Returns a copy of an image filtered by the given #filter. For a list of available filters, see the ImageFilter module.
im.load() #Returns a high speed pixel access object.
im.resize() # Returns the image resized.
im.save(“Name”) #Save the image into file “Name”
STRUCTURE OF A 24 BIT IMAGE
cols,rows=im.sizerows=18 and cols=35
Contents=(R,G,B) tuple i.e. (255,34,128)
(14,14)
Location=(col,row)
LOOKING AT EVERY PIXEL
In order to process each pixel in the image we need to use a double loop. Here is a simple example.
for c in range(3): #col values for r in range(5): #row values print c,r
0 00 10 2 col 00 30 41 01 11 2 col 11 31 42 02 12 2 col 22 32 4
ANTIALISING
This is a process that is used in image production that smooths out hard edges with a visual trick. Here is an example.
antialiased no antialising
PAINT.NET ANTIALISING
Every image processing program has a button or icon to click to turn on/offantialising. The above is paint.nets method. Note you must be in one of thedrawing tools, ie pen to see the control. Turn it off or on BEFORE you draw.
I CREATED THIS IMAGE WITHOUT ANTIALISING
Lets turn this red to grey
CONVERT RED PIXELS TO GRAY BY LOOPING THRU EVERY PIXEL
import matplotlib.pyplot as pltfrom PIL import Image
im = Image.open('thingsnoanti.png') # read in imagepix = im.load() #allows fast access for pixel accesscols,rows=im.size #get dimensions from size tuple#look at every single pixel and if red turn it to gray. Capice?!for r in range(rows): for c in range(cols): if (pix[c,r] == (255,0,0)): #if pixel is red pix[c,r]=(220,220,220) #set it gray
plt.imshow(im)plt.show()
Note that you can do anything you want to every pixel using the above method. Just change the blue lines.
USING FILTERS
The filter operations (BLUR, SMOOTH, SHARPEN etc) will loop thru the entire image for you.
Here is the result of bluras applied to our originalimage.
AND HERE IS THE CODEimport matplotlib.pyplot as plt
from PIL import Image
from PIL import ImageFilter
im = Image.open('thingsnoanti.png')
plt.figure(1) #work on figure 1
plt.imshow(im) #show original image
plt.show()
im1 = im.filter(ImageFilter.BLUR) #lets blur it
plt.figure(2) #Work on figure 2
plt.imshow(im1) #show new image
plt.show()
From ImageFilter moduleBLURCONTOURDETAILEDGE_ENHANCEEDGE_ENHANCE_MOREEMBOSSFIND_EDGESSMOOTHSMOOTH_MORESHARPEN
PLOT A HISTOGRAM OF A GRAY-SCALE IMAGEimport matplotlib.pyplot as plt
from PIL import Image
im = Image.open('sea.gif')
plt.figure(1)
plt.imshow(im) #show original image
plt.show()
hist = im.histogram()
#note that the hist here is a list not an image
plt.figure(2)
plt.plot(hist) #So we must plot the list NOT imshow()
plt.show()
HERE IS AN EXAMPLE