# OpenCV Python rotate image by X degrees around specific point

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.GetRectSubPix( dst_image, image, rotate_around )

return dst_image
``````

``````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.

• 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
• 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
• image.shape include the width,height and channel Nov 30, 2012 at 8:09
• @Hani try cv2.getRotationMatrix2D((imagecenter,imagecenter),angle,1.0) Jan 20, 2014 at 7:22
• `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) Feb 7, 2017 at 18:58
• this is quite slow for me Jul 15, 2017 at 13:20
• 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`) 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
center=tuple(np.array([row,col])/2)
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. 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 , which is the width (columns), followed by height (rows). 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)

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

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
• 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 = imutils.rotate(frame, 45)
``````
• 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.

• 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):
center=tuple(np.array(image.shape[0:2])/2)
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),
borderMode=cv.BORDER_CONSTANT)
return rot_img
``````

you can use the following code:

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

tangent=math.tan(angle/2)
new_x=round(x-y*tangent)
new_y=y

#shear 2
new_y=round(new_x*math.sin(angle)+new_y)
#since there is no change in new_x according to the shear matrix

#shear 3
new_x=round(new_x-new_y*tangent)
#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"))
angle=-int(input("Enter the angle :- "))
# Ask the user to enter the angle of rotation

# Define the most occuring variables
cosine=math.cos(angle)
sine=math.sin(angle)

height=image.shape
#define the height of the image
width=image.shape
#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*cosine)+abs(image.shape*sine))+1
new_width  = round(abs(image.shape*cosine)+abs(image.shape*sine))+1

output=np.zeros((new_height,new_width,image.shape))
image_copy=output.copy()

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

#Applying shear Transformation
new_y,new_x=shear(angle,x,y)

new_y=new_centre_height-new_y
new_x=new_centre_width-new_x

output[new_y,new_x,:]=image[i,j,:]

pil_img=Image.fromarray((output).astype(np.uint8))
pil_img.save("rotated_image.png")
``````

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