How do I convert a PIL Image back and forth to a NumPy array so that I can do faster pixel-wise transformations than PIL's PixelAccess allows? I can convert it to a NumPy array via:

pic = Image.open("foo.jpg")
pix = numpy.array(pic.getdata()).reshape(pic.size[0], pic.size[1], 3)

But how do I load it back into the PIL Image after I've modified the array? pic.putdata() isn't working well.

  • 10
    Note that pic.size[0] and pic.size[1] should be swapped (ie. reshape(pic.size[1], pic.size[0], 3)), since size is width x height or x * y, while matrix ordering is rows x columns.
    – foges
    Commented Mar 21, 2018 at 15:16

8 Answers 8


You're not saying how exactly putdata() is not behaving. I'm assuming you're doing

>>> pic.putdata(a)
Traceback (most recent call last):
  File "...blablabla.../PIL/Image.py", line 1185, in putdata
    self.im.putdata(data, scale, offset)
SystemError: new style getargs format but argument is not a tuple

This is because putdata expects a sequence of tuples and you're giving it a numpy array. This

>>> data = list(tuple(pixel) for pixel in pix)
>>> pic.putdata(data)

will work but it is very slow.

As of PIL 1.1.6, the "proper" way to convert between images and numpy arrays is simply

>>> pix = numpy.array(pic)

although the resulting array is in a different format than yours (3-d array or rows/columns/rgb in this case).

Then, after you make your changes to the array, you should be able to do either pic.putdata(pix) or create a new image with Image.fromarray(pix).

  • 46
    That page lists numpy.asarray(pic) as the "proper" way to convert, not numpy.array(pic). As per this answer array will make a copy whereas asarray will not (but then the asarray result will be read-only). Commented Nov 30, 2016 at 10:13
  • 3
    The second answer is better. Commented Jun 2, 2020 at 17:42
  • 1
    Type check warns: 'Expected type 'Union[ndarray, Iterable, int, float]', got 'Image' instead'
    – David Taub
    Commented Nov 15, 2022 at 14:11

Open I as an array:

>>> I = numpy.asarray(PIL.Image.open('test.jpg'))

Do some stuff to I, then, convert it back to an image:

>>> im = PIL.Image.fromarray(numpy.uint8(I))

Source: Filter numpy images with FFT, Python

If you want to do it explicitly for some reason, there are pil2array() and array2pil() functions using getdata() on this page in correlation.zip.

  • 2
    @ArditS.: Did you import Image first? Do you have PIL installed?
    – endolith
    Commented Nov 9, 2013 at 17:04
  • 9
    Is the uint8 conversion necessary?
    – Neil Traft
    Commented Jan 16, 2014 at 5:33
  • 6
    numpy.asarray(Image.open(filename)) seems to work for .jpg images but not for .png. The result displays as array(<PngImagePlugin.PngImageFile image mode=LA size=500x500 at 0x3468198>, dtype=object). There seem to be no obviously-named methods of the PngImagePlugin.PngImageFile object for solving this. Guess I should ask this as a new question but it's very relevant to this thread. Anybody understand what's going wrong here?
    – jez
    Commented Dec 1, 2015 at 23:59
  • 5
    @Rebs: here's the reason why this is so much faster: getdata() returns a sequence like object (pillow.readthedocs.io/en/3.4.x/reference/…), but a pillow image implements the __array_interface__ which numpy can use to access the raw bytes of an image without having to pass through an iterator (see github.com/python-pillow/Pillow/blob/… and docs.scipy.org/doc/numpy/reference/arrays.interface.html). You can even just use numpy.array(PIL.Image.open('test.jpg'))
    – tdp2110
    Commented Jul 28, 2017 at 17:34
  • 6
    @jez Check if the Image object is closed before you convert it to numpy. The same happened to me and I found I closed the image object somewhere.
    – Shaohua Li
    Commented Aug 18, 2018 at 14:34

I am using Pillow 4.1.1 (the successor of PIL) in Python 3.5. The conversion between Pillow and numpy is straightforward.

from PIL import Image
import numpy as np
im = Image.open('1.jpg')
im2arr = np.array(im) # im2arr.shape: height x width x channel
arr2im = Image.fromarray(im2arr)

One thing that needs noticing is that Pillow-style im is column-major while numpy-style im2arr is row-major. However, the function Image.fromarray already takes this into consideration. That is, arr2im.size == im.size and arr2im.mode == im.mode in the above example.

We should take care of the HxWxC data format when processing the transformed numpy arrays, e.g. do the transform im2arr = np.rollaxis(im2arr, 2, 0) or im2arr = np.transpose(im2arr, (2, 0, 1)) into CxHxW format.

  • 6
    This is about the cleanest example, including import statements (thanks for that detail). Let's vote this answer up to increase visibility. Commented Apr 7, 2018 at 15:17
  • 1
    I found that when I converted a PIL drawn image to a numpy array, when using matplotlib imshow on the array, it showed it upside down requiring a np.flipud to fix. Although my PIL image was created from scratch using ImageDraw.Draw. I think one must be careful where the origin of their coordinates comes from. Commented Apr 13, 2018 at 7:21
  • 1
    Bless you!! I have been looking for this answer for half a day. It solves my problem of restoring the original axis after of the plot image to the original one.
    – Tinkerbell
    Commented Jun 27, 2018 at 10:21

You need to convert your image to a numpy array this way:

import numpy
import PIL

img = PIL.Image.open("foo.jpg").convert("L")
imgarr = numpy.array(img) 
  • This way of conversion retains the image but results in a loss of colors. Anyway to avoid the color loss?
    – Moondra
    Commented Jan 15, 2017 at 16:13
  • 11
    @moondra If I understand your question, you can replace .convert("L") by .convert("RGB") Commented Jan 15, 2017 at 16:18
  • "L" produces the image in grayscale
    – qwr
    Commented Jul 28, 2020 at 7:56

Convert Numpy to PIL image and PIL to Numpy

import numpy as np
from PIL import Image

def pilToNumpy(img):
    return np.array(img)

def NumpyToPil(img):
    return Image.fromarray(img)

The example, I have used today:

import PIL
import numpy
from PIL import Image

def resize_image(numpy_array_image, new_height):
    # convert nympy array image to PIL.Image
    image = Image.fromarray(numpy.uint8(numpy_array_image))
    old_width = float(image.size[0])
    old_height = float(image.size[1])
    ratio = float( new_height / old_height)
    new_width = int(old_width * ratio)
    image = image.resize((new_width, new_height), PIL.Image.ANTIALIAS)
    # convert PIL.Image into nympy array back again
    return array(image)

If your image is stored in a Blob format (i.e. in a database) you can use the same technique explained by Billal Begueradj to convert your image from Blobs to a byte array.

In my case, I needed my images where stored in a blob column in a db table:

def select_all_X_values(conn):
    cur = conn.cursor()
    cur.execute("SELECT ImageData from PiecesTable")    
    rows = cur.fetchall()    
    return rows

I then created a helper function to change my dataset into np.array:

X_dataset = select_all_X_values(conn)
imagesList = convertToByteIO(np.array(X_dataset))

def convertToByteIO(imagesArray):
    # Converts an array of images into an array of Bytes
    imagesList = []

    for i in range(len(imagesArray)):  
        img = Image.open(BytesIO(imagesArray[i])).convert("RGB")
        imagesList.insert(i, np.array(img))

    return imagesList

After this, I was able to use the byteArrays in my Neural Network.


I can vouch for svgtrace, I found it both super simple and relatively fast. Find it here: https://pypi.org/project/svgtrace/

This is how I used it:

from svgtrace import trace

asset_path = 'image.png'
save_path = 'traced_image.svg'

Path(save_path).write_text(trace(asset_path), encoding='utf-8')

It took an average of 3 seconds for a 1080x1080px image on my machine. (MacBook Pro 2017)

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