# Numpy Matrix to tkinter Canvas

How to display a Numpy matrix, as a bitmap, into a Tkinter canvas? More precisely, how to fill a PhotoImage with content from a matrix?

photo = ImageTk.PhotoImage(...)
self.canvas.create_image(0,0,image=photo,anchor=Tkinter.NW)

Here is working solution, slightly modified to make it work (some function was deprecated) and to simplify it to keep only the necessary part. We have to use Image.frombytes(...) to read the data in the numpy matrix.

import Tkinter
from PIL import Image, ImageTk
import numpy

class mainWindow():
def __init__(self):
self.root = Tkinter.Tk()
self.frame = Tkinter.Frame(self.root, width=500, height=400)
self.frame.pack()
self.canvas = Tkinter.Canvas(self.frame, width=500,height=400)
self.canvas.place(x=-2,y=-2)
data=numpy.array(numpy.random.random((400,500))*100,dtype=int)
self.im=Image.frombytes('L', (data.shape[1],data.shape[0]), data.astype('b').tostring())
self.photo = ImageTk.PhotoImage(image=self.im)
self.canvas.create_image(0,0,image=self.photo,anchor=Tkinter.NW)
self.root.update()
self.root.mainloop()

mainWindow()
• You can get there even quicker with im=Image.fromarray(data) – nitzel Apr 2 '17 at 18:40
• @Basj an answer to what? There's no question. But it seems unneccessary to convert the ndarray to a string and back. Related: pillow.readthedocs.io/en/3.1.x/reference/… – nitzel Apr 3 '17 at 6:50
• then improve your answer by replacing self.im=Image.frombytes('L', (data.shape[1],data.shape[0]), data.astype('b').tostring()) with self.im=Image.fromarray(data) Oh and you actually do not need im to be a member of self. Keeping a reference to photo is the only important part, since it may otherwise get garbage collected. Furthermore, it seems to be standard to store those references into e.g. self.canvas._foo Your snipped indeed helped me. – nitzel Apr 3 '17 at 10:45
• @nitzel Feel free to modify the answer with your propositions, or post another answer. I really think it's helpful to have 2 versions, so we can compare, etc. Thanks. – Basj Apr 3 '17 at 10:54