I am using python 3 and latest version of openCV. I am trying to resize an image using the resize function provided but after resizing the image is very distorted. Code :

import cv2
file = "/home/tanmay/Desktop/test_image.png"
img = cv2.imread(file , 0)
cv2.imshow('img' , img)
k = cv2.waitKey(0)
if k == 27:
resize_img = cv2.resize(img  , (28 , 28))
cv2.imshow('img' , resize_img)
x = cv2.waitKey(0)
if x == 27:

The original image is 480 x 640 (RGB therefore i passed the 0 to get it to grayscale)

Is there any way i could resize it and avoid the distortion using OpenCV or any other library perhaps? I intend to make a handwritten digit recogniser and i have trained my neural network using the MNIST data therefore i need the image to be 28x28.

  • 4
    Without any distortion you have 2 options: a) crop part of the image to make it the same aspect ratio. b) add part of the image (e.g. black pixels) to the sides of the images to make it the same aspect ratio. If you do not have the same aspect ratio, it will not be possible to obtain it without distortion.
    – api55
    Jun 20 '17 at 10:49
  • You have to make sure the aspect ratio of the new size you pass is the same as the original image and make sure you use a suitable interpolation method
    – Rick M.
    Jun 20 '17 at 15:06
  • I added black pixels to the original image to make it 640x640 but still when i resize it i get a distorted image. What can I do ? Jun 20 '17 at 17:49
  • Specifying the interpolation fixed it. Thanks. Jun 20 '17 at 18:05
  • Please identify what kind of distortion you are seeing. There should be no geometric distortion. There could be interpolation changes depending upon what method is being used by resize.
    – fmw42
    Sep 20 '19 at 23:20

10 Answers 10


You may try below. The function will keep the aspect rate of the original image.

def image_resize(image, width = None, height = None, inter = cv2.INTER_AREA):
    # initialize the dimensions of the image to be resized and
    # grab the image size
    dim = None
    (h, w) = image.shape[:2]

    # if both the width and height are None, then return the
    # original image
    if width is None and height is None:
        return image

    # check to see if the width is None
    if width is None:
        # calculate the ratio of the height and construct the
        # dimensions
        r = height / float(h)
        dim = (int(w * r), height)

    # otherwise, the height is None
        # calculate the ratio of the width and construct the
        # dimensions
        r = width / float(w)
        dim = (width, int(h * r))

    # resize the image
    resized = cv2.resize(image, dim, interpolation = inter)

    # return the resized image
    return resized

Here is an example usage.

image = image_resize(image, height = 800)

Hope this helps.

  • 1
    What if I want to change the aspect ratio of the original image ? I want to get every image to 28x28 no matter its original dimensions. Jun 20 '17 at 17:48
  • 11
    Then, go straight to use cv2.resize(image, (28,28), interpolation = inter). Jun 20 '17 at 17:56
  • 3
    @TanmayBhatnagar could you also give me a vote up if my answer helps to solve your problem? Jun 20 '17 at 18:11
  • Could you please explain what interpolation is ? I know that it helps reduce the error that occurs due to resizing the image but how do we decide which technique to use ? Is it just hit and trial? Jun 20 '17 at 18:26
  • 1
    @TanmayBhatnagar you could refer to this tutorial on cv2.resize docs.opencv.org/3.0-beta/modules/imgproc/doc/…. Jun 20 '17 at 18:42

If you need to modify the image resolution and keep your aspect ratio use the function imutils (check documentation). something like this:

img = cv2.imread(file , 0)
img = imutils.resize(img, width=1280)
cv2.imshow('image' , img)

hope that helps, good luck !

  • but how to also modify the height ? May 1 '20 at 15:14
  • 2
    The code modifies the height in keeping aspect ratio the same.
    – MikeW
    Sep 8 '20 at 9:26

Try this simple function in python that uses OpenCV. just pass the image and mention the size of square you want.

def resize_image(img, size=(28,28)):

    h, w = img.shape[:2]
    c = img.shape[2] if len(img.shape)>2 else 1

    if h == w: 
        return cv2.resize(img, size, cv2.INTER_AREA)

    dif = h if h > w else w

    interpolation = cv2.INTER_AREA if dif > (size[0]+size[1])//2 else 

    x_pos = (dif - w)//2
    y_pos = (dif - h)//2

    if len(img.shape) == 2:
        mask = np.zeros((dif, dif), dtype=img.dtype)
        mask[y_pos:y_pos+h, x_pos:x_pos+w] = img[:h, :w]
        mask = np.zeros((dif, dif, c), dtype=img.dtype)
        mask[y_pos:y_pos+h, x_pos:x_pos+w, :] = img[:h, :w, :]

    return cv2.resize(mask, size, interpolation)

usage: squared_image=get_square(image, size=(28,28))

explanation: function takes input of any size and it creates a squared shape blank image of size image's height or width whichever is bigger. it then places the original image at the center of the blank image. and then it resizes this square image into desired size so the shape of original image content gets preserved.

hope , this will help you

  • jk is not defined Mar 14 '18 at 23:54
  • thank you @Mitali Cyrus for the bug report. i fixed that.
    – vijay jha
    Mar 26 '18 at 18:27

The answer, provided by @vijay jha is too case specific. Also includes additional unnecessary padding. I propose fixed code below:

def resize2SquareKeepingAspectRation(img, size, interpolation):
  h, w = img.shape[:2]
  c = None if len(img.shape) < 3 else img.shape[2]
  if h == w: return cv2.resize(img, (size, size), interpolation)
  if h > w: dif = h
  else:     dif = w
  x_pos = int((dif - w)/2.)
  y_pos = int((dif - h)/2.)
  if c is None:
    mask = np.zeros((dif, dif), dtype=img.dtype)
    mask[y_pos:y_pos+h, x_pos:x_pos+w] = img[:h, :w]
    mask = np.zeros((dif, dif, c), dtype=img.dtype)
    mask[y_pos:y_pos+h, x_pos:x_pos+w, :] = img[:h, :w, :]
  return cv2.resize(mask, (size, size), interpolation)

The code resizes an image making it square and keeping aspect ration at the same time. Also the code is suitable for 3 channels (colored) images as well. Example of usage:

resized = resize2SquareKeepingAspectRation(img, size, cv2.INTER_AREA)
  • At the moment, the square is colored black background. How to make a square box transparent background? Feb 7 '21 at 8:33
  • @NurzhanNogerbek, you might want to transform an image to RGBA format. A-channel is used to encode transparency. Feb 12 '21 at 15:40

All other answers use pads to correct the aspect ratio which usually is very bad when you are trying to create standardized datasets for a neural network. Below is a simple implementation of a crop-and-resize that maintain the aspect ratio and does not create pads.

def crop_square(img, size, interpolation=cv2.INTER_AREA):
    h, w = img.shape[:2]
    min_size = np.amin([h,w])

    # Centralize and crop
    crop_img = img[int(h/2-min_size/2):int(h/2+min_size/2), int(w/2-min_size/2):int(w/2+min_size/2)]
    resized = cv2.resize(crop_img, (size, size), interpolation=interpolation)

    return resized


img2 = crop_square(img, 300)




enter image description here

  • I used it for Stylegan2-ada to resize to square images, thanks it worked awesome! Jul 13 '21 at 6:04
img = cv2.resize(img, (int(img.shape[1]/2), int(img.shape[0]/2)))

will resize the image to half the original size. You can modify it for any other ratio. Note that the first argument passed to resize() is img.shape[1], and not img.shape[0]. This may be counter-intuitive. It is easy to overlook this reversal and get a very distorted picture.


I've just run into the same issue while preparing a dataset for a neural net, and in order to avoid having to distort the image, I've made a function which resizes and crops the image minimally to fit the destination size. It works by first choosing whether to crop in the y or x by comparing the input image aspect ratio to the destination aspect ratio. Then it resizes the input image to the destination width or height, and then cropping in the x or y (each depending on if ratio of aspect ratios).

    def crop_and_resize(img, w, h):
        im_h, im_w, channels = img.shape
        res_aspect_ratio = w/h
        input_aspect_ratio = im_w/im_h

        if input_aspect_ratio > res_aspect_ratio:
            im_w_r = int(input_aspect_ratio*h)
            im_h_r = h
            img = cv2.resize(img, (im_w_r , im_h_r))
            x1 = int((im_w_r - w)/2)
            x2 = x1 + w
            img = img[:, x1:x2, :]
        if input_aspect_ratio < res_aspect_ratio:
            im_w_r = w
            im_h_r = int(w/input_aspect_ratio)
            img = cv2.resize(img, (im_w_r , im_h_r))
            y1 = int((im_h_r - h)/2)
            y2 = y1 + h
            img = img[y1:y2, :, :]
        if input_aspect_ratio == res_aspect_ratio:
            img = cv2.resize(img, (w, h))

        return img

Does not quite align with what the original question is asking, but I landed here searching for an answer to a similar question.

import cv2
def resize_and_letter_box(image, rows, cols):
    Letter box (black bars) a color image (think pan & scan movie shown 
    on widescreen) if not same aspect ratio as specified rows and cols. 
    :param image: numpy.ndarray((image_rows, image_cols, channels), dtype=numpy.uint8)
    :param rows: int rows of letter boxed image returned  
    :param cols: int cols of letter boxed image returned
    :return: numpy.ndarray((rows, cols, channels), dtype=numpy.uint8)
    image_rows, image_cols = image.shape[:2]
    row_ratio = rows / float(image_rows)
    col_ratio = cols / float(image_cols)
    ratio = min(row_ratio, col_ratio)
    image_resized = cv2.resize(image, dsize=(0, 0), fx=ratio, fy=ratio)
    letter_box = np.zeros((int(rows), int(cols), 3))
    row_start = int((letter_box.shape[0] - image_resized.shape[0]) / 2)
    col_start = int((letter_box.shape[1] - image_resized.shape[1]) / 2)
    letter_box[row_start:row_start + image_resized.shape[0], col_start:col_start + image_resized.shape[1]] = image_resized
    return letter_box

I have a dataset of hand drawings and i needed to create small square images from asymmetric drawings.

enter image description here

Thanks to @vijay jha i created square images while maintaining the aspect ratio of the original image. One issue though was that the more you downscaled the more information was lost.

512x256 to 64x64 would look like this:


I modified a bit the original code to smoothly downscale the image.

from skimage.transform import resize, pyramid_reduce

def get_square(image, square_size):

    height, width = image.shape    
    if(height > width):
      differ = height
      differ = width
    differ += 4

    # square filler
    mask = np.zeros((differ, differ), dtype = "uint8")

    x_pos = int((differ - width) / 2)
    y_pos = int((differ - height) / 2)

    # center image inside the square
    mask[y_pos: y_pos + height, x_pos: x_pos + width] = image[0: height, 0: width]

    # downscale if needed
    if differ / square_size > 1:
      mask = pyramid_reduce(mask, differ / square_size)
      mask = cv2.resize(mask, (square_size, square_size), interpolation = cv2.INTER_AREA)
    return mask

512x256 -> 64x64

enter image description here

512x256 -> 28x28

enter image description here


The code is given a window_height by which it calculates the window_width variable while maintaining the aspect ratio of the image. In order to prevent it from any distortion.

import cv2

def resize(self,image,window_height = 500):
    aspect_ratio = float(image.shape[1])/float(image.shape[0])
    window_width = window_height/aspect_ratio
    image = cv2.resize(image, (int(window_height),int(window_width)))
    return image

img = cv2.imread(img_source)         #image location
img_resized = resize(img,window_height = 800)
  • This made the most sense for me.
    – Andrei M.
    May 30 '20 at 8:27
  • Remove self..?
    – jtlz2
    Dec 9 '20 at 6:57

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