I'm having a hard time finding examples for rotating an image around a specific point by a specific (often very small) angle in Python using OpenCV.

This is what I have so far, but it produces a very strange resulting image, but it is rotated somewhat:

def rotateImage( image, angle ):
    if image != None:
        dst_image = cv.CloneImage( image )

        rotate_around = (0,0)
        transl = cv.CreateMat(2, 3, cv.CV_32FC1 )

        matrix = cv.GetRotationMatrix2D( rotate_around, angle, 1.0, transl )
        cv.GetQuadrangleSubPix( image, dst_image, transl )
        cv.GetRectSubPix( dst_image, image, rotate_around )

    return dst_image

12 Answers 12

import numpy as np
import cv2

def rotate_image(image, angle):
  image_center = tuple(np.array(image.shape[1::-1]) / 2)
  rot_mat = cv2.getRotationMatrix2D(image_center, angle, 1.0)
  result = cv2.warpAffine(image, rot_mat, image.shape[1::-1], flags=cv2.INTER_LINEAR)
  return result

Assuming you're using the cv2 version, that code finds the center of the image you want to rotate, calculates the transformation matrix and applies to the image.

  • 1
    I think I may have made some progress, but still running into a problem. Here is the latest code: result = cv2.warpAffine(image, rot_mat, cv.GetSize(image), flags=cv2.INTER_LINEAR) Traceback (most recent call last): result = cv2.warpAffine(image, rot_mat, cv.GetSize(image), flags=cv2.INTER_LINEAR) TypeError: <unknown> is not a numpy array
    – Mike
    Jan 28, 2012 at 5:26
  • 15
    I have a problem running cv2.getRotationMatrix2D(center=image_center ,angle=angle,scale=1) TypeError: function takes exactly 2 arguments (3 given)
    – Hani
    Mar 8, 2012 at 18:44
  • 6
    image.shape include the width,height and channel
    – Treper
    Nov 30, 2012 at 8:09
  • 4
    @Hani try cv2.getRotationMatrix2D((imagecenter[0],imagecenter[1]),angle,1.0) Jan 20, 2014 at 7:22
  • 1
    angle is in degrees. docs.opencv.org/2.4/modules/imgproc/doc/… May 15, 2019 at 8:48

Or much easier use SciPy

from scipy import ndimage

#rotation angle in degree
rotated = ndimage.rotate(image_to_rotate, 45)

see here for more usage info.

  • I am looping through a directory of png and doing this but I get a RuntimeError: invalid rotation plane specified. Any fixes? Feb 6, 2017 at 17:49
  • do you pass in a open cv image? like from: img = cv2.imread('messi5.jpg',0)
    – fivef
    Feb 7, 2017 at 18:58
  • 9
    this is quite slow for me Jul 15, 2017 at 13:20
  • 6
    Nice, it's easier to use and you have an easy way to decide if you want to keep the image size (reshape=True) or the image content (reshape=False)
    – AljoSt
    Dec 28, 2018 at 8:24
def rotate(image, angle, center = None, scale = 1.0):
    (h, w) = image.shape[:2]

    if center is None:
        center = (w / 2, h / 2)

    # Perform the rotation
    M = cv2.getRotationMatrix2D(center, angle, scale)
    rotated = cv2.warpAffine(image, M, (w, h))

    return rotated

The cv2.warpAffine function takes the shape parameter in reverse order: (col,row) which the answers above do not mention. Here is what worked for me:

import numpy as np

def rotateImage(image, angle):
    row,col = image.shape
    rot_mat = cv2.getRotationMatrix2D(center,angle,1.0)
    new_image = cv2.warpAffine(image, rot_mat, (col,row))
    return new_image
  • getRotationMatrix2D seems to require (col,row), too. center should use (col,row) as well, as is done in @Omnipresent's answer.
    – erwaman
    Oct 6, 2019 at 17:39
  • I agree that it wasn't clear. @alex-rodrigues ' answer does some slicing to the image.shape to get the width and height in the right order for warpAffine: image.shape[1::-1] does this. What this does is takes a slice starting at the 1st element, with a step value of -1, so proceeding left, so you end up with a slice with [1][0], which is the width (columns), followed by height (rows).
    – Keithel
    Aug 11, 2021 at 17:14

I had issues with some of the above solutions, with getting the correct "bounding_box" or new size of the image. Therefore here is my version

def rotation(image, angleInDegrees):
    h, w = image.shape[:2]
    img_c = (w / 2, h / 2)

    rot = cv2.getRotationMatrix2D(img_c, angleInDegrees, 1)

    rad = math.radians(angleInDegrees)
    sin = math.sin(rad)
    cos = math.cos(rad)
    b_w = int((h * abs(sin)) + (w * abs(cos)))
    b_h = int((h * abs(cos)) + (w * abs(sin)))

    rot[0, 2] += ((b_w / 2) - img_c[0])
    rot[1, 2] += ((b_h / 2) - img_c[1])

    outImg = cv2.warpAffine(image, rot, (b_w, b_h), flags=cv2.INTER_LINEAR)
    return outImg
  • was this for face detection? I want to rotate video frames by 90 degrees and run MTCNN because it won't detect frontal faces lying sideways (person lying on the ground) Sep 12, 2019 at 8:56
  • @mLstudent33 No I used it for a different purpose, but this is just rotating an image. So if you have the angle then it should be fine?
    – JTIM
    Sep 12, 2019 at 10:19
  • 1
    I think so. I can rotate, run detection, then draw cv2.rectangle() and then rotate it back. Thanks for replying. Sep 12, 2019 at 10:21
import imutils

vs = VideoStream(src=0).start()

while (1):
   frame = vs.read()

   frame = imutils.rotate(frame, 45)

More: https://github.com/jrosebr1/imutils

  • 5
    this one wont cut any of the image: imutils.rotate_bound(frame, 90) Jul 15, 2017 at 13:22

You can simply use the imutils package to do the rotation. it has two methods

  1. rotate: Rotate the image at specified angle. however the drawback is image might get cropped if it is not a square image.
  2. Rotate_bound: it overcomes the problem happened with rotate. It adjusts the size of the image accordingly while rotating the image.

more info you can get on this blog: https://www.pyimagesearch.com/2017/01/02/rotate-images-correctly-with-opencv-and-python/

  • can I run face detection on the rotated frame? MTCNN does not detect frontal faces lying sideways. Sep 12, 2019 at 8:58

Quick tweak to @alex-rodrigues answer... deals with shape including the number of channels.

import cv2
import numpy as np

def rotateImage(image, angle):
    rot_mat = cv2.getRotationMatrix2D(center,angle,1.0)
    return cv2.warpAffine(image, rot_mat, image.shape[0:2],flags=cv2.INTER_LINEAR)

You can easily rotate the images using opencv python-

def funcRotate(degree=0):
    degree = cv2.getTrackbarPos('degree','Frame')
    rotation_matrix = cv2.getRotationMatrix2D((width / 2, height / 2), degree, 1)
    rotated_image = cv2.warpAffine(original, rotation_matrix, (width, height))
    cv2.imshow('Rotate', rotated_image)

If you are thinking of creating a trackbar, then simply create a trackbar using cv2.createTrackbar() and the call the funcRotate()fucntion from your main script. Then you can easily rotate it to any degree you want. Full details about the implementation can be found here as well- Rotate images at any degree using Trackbars in opencv


Here's an example for rotating about an arbitrary point (x,y) using only openCV

def rotate_about_point(x, y, degree, image):
    rot_mtx = cv.getRotationMatrix2D((x, y), angle, 1)
    abs_cos = abs(rot_mtx[0, 0])
    abs_sin = abs(rot_mtx[0, 1])
    rot_wdt = int(frm_hgt * abs_sin + frm_wdt * abs_cos)
    rot_hgt = int(frm_hgt * abs_cos + frm_wdt * abs_sin)
    rot_mtx += np.asarray([[0, 0, -lftmost_x],
                           [0, 0, -topmost_y]])
    rot_img = cv.warpAffine(image, rot_mtx, (rot_wdt, rot_hgt),
    return rot_img

you can use the following code:

import numpy as np
from PIL import Image
import math
def shear(angle,x,y):


#shear 2
#since there is no change in new_x according to the shear matrix

#shear 3
#since there is no change in new_y according to the shear matrix

return new_y,new_x

image = np.array(Image.open("test.png"))            
# Load the image
angle=-int(input("Enter the angle :- "))               
# Ask the user to enter the angle of rotation

# Define the most occuring variables
#converting degrees to radians

#define the height of the image
#define the width of the image

# Define the height and width of the new image that is to be formed
new_height  = round(abs(image.shape[0]*cosine)+abs(image.shape[1]*sine))+1
new_width  = round(abs(image.shape[1]*cosine)+abs(image.shape[0]*sine))+1


# Find the centre of the image about which we have to rotate the image
original_centre_height   = round(((image.shape[0]+1)/2)-1)    
#with respect to the original image
original_centre_width = round(((image.shape[1]+1)/2)-1)   
#with respect to   the original image

# Find the centre of the new image that will be obtained
new_centre_height= round(((new_height+1)/2)-1)        
#with respect to the new image
new_centre_width= round(((new_width+1)/2)-1)          
#with respect to the new image

for i in range(height):
 for j in range(width):
    #co-ordinates of pixel with respect to the centre of original image

    #Applying shear Transformation                     



You need a homogenous matrix of size 2x3. First 2x2 is the rotation matrix and last column is a translation vector.

enter image description here

Here's how to build your transformation matrix:

# Exemple with img center point:
# angle = np.pi/6
# specific_point = np.array(img.shape[:2][::-1])/2

def rotate(img: np.ndarray, angle: float, specific_point: np.ndarray) -> np.ndarray:
    warp_mat = np.zeros((2,3))
    cos, sin = np.cos(angle), np.sin(angle)
    warp_mat[:2,:2] = [[cos, -sin],[sin, cos]]
    warp_mat[:2,2] = specific_point - np.matmul(warp_mat[:2,:2], specific_point)
    return cv2.warpAffine(img, warp_mat, img.shape[:2][::-1])

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