# imutils **Repository Path**: qinyao1/imutils ## Basic Information - **Project Name**: imutils - **Description**: A series of convenience functions to make basic image processing operations such as translation, rotation, resizing, skeletonization, and displaying Matplotlib images easier with OpenCV and Python. - **Primary Language**: Python - **License**: MIT - **Default Branch**: master - **Homepage**: None - **GVP Project**: No ## Statistics - **Stars**: 0 - **Forks**: 1 - **Created**: 2019-12-27 - **Last Updated**: 2020-12-19 ## Categories & Tags **Categories**: Uncategorized **Tags**: None ## README # imutils A series of convenience functions to make basic image processing functions such as translation, rotation, resizing, skeletonization, and displaying Matplotlib images easier with OpenCV and ***both*** Python 2.7 and Python 3. For more information, along with a detailed code review check out the following posts on the [PyImageSearch.com](http://www.pyimagesearch.com) blog: - [http://www.pyimagesearch.com/2015/02/02/just-open-sourced-personal-imutils-package-series-opencv-convenience-functions/](http://www.pyimagesearch.com/2015/02/02/just-open-sourced-personal-imutils-package-series-opencv-convenience-functions/) - [http://www.pyimagesearch.com/2015/03/02/convert-url-to-image-with-python-and-opencv/](http://www.pyimagesearch.com/2015/03/02/convert-url-to-image-with-python-and-opencv/) - [http://www.pyimagesearch.com/2015/04/06/zero-parameter-automatic-canny-edge-detection-with-python-and-opencv/](http://www.pyimagesearch.com/2015/04/06/zero-parameter-automatic-canny-edge-detection-with-python-and-opencv/) - [http://www.pyimagesearch.com/2014/09/01/build-kick-ass-mobile-document-scanner-just-5-minutes/](http://www.pyimagesearch.com/2014/09/01/build-kick-ass-mobile-document-scanner-just-5-minutes/) - [http://www.pyimagesearch.com/2015/08/10/checking-your-opencv-version-using-python/](http://www.pyimagesearch.com/2015/08/10/checking-your-opencv-version-using-python/) ## Installation Provided you already have NumPy, SciPy, Matplotlib, and OpenCV already installed, the `imutils` package is completely `pip`-installable:
$ pip install imutils
## Finding function OpenCV functions by name OpenCV can be a big, hard to navigate library, especially if you are just getting started learning computer vision and image processing. The `find_function` method allows you to quickly search function names across modules (and optionally sub-modules) to find the function you are looking for. #### Example: Let's find all function names that contain the text `contour`:
import imutils
imutils.find_function("contour")
#### Output:
1. contourArea
2. drawContours
3. findContours
4. isContourConvex
The `contourArea` function could therefore be accessed via: `cv2.contourArea` ## Translation Translation is the shifting of an image in either the *x* or *y* direction. To translate an image in OpenCV you would need to supply the *(x, y)*-shift, denoted as *(tx, ty)* to construct the translation matrix *M*: ![Translation equation](docs/images/translation_eq.png?raw=true) And from there, you would need to apply the `cv2.warpAffine` function. Instead of manually constructing the translation matrix *M* and calling `cv2.warpAffine`, you can simply make a call to the `translate` function of `imutils`. #### Example:
# translate the image x=25 pixels to the right and y=75 pixels up
translated = imutils.translate(workspace, 25, -75)
#### Output: Translation example ## Rotation Rotating an image in OpenCV is accomplished by making a call to `cv2.getRotationMatrix2D` and `cv2.warpAffine`. Further care has to be taken to supply the *(x, y)*-coordinate of the point the image is to be rotated about. These calculation calls can quickly add up and make your code bulky and less readable. The `rotate` function in `imutils` helps resolve this problem. #### Example:
# loop over the angles to rotate the image
for angle in xrange(0, 360, 90):
	# rotate the image and display it
	rotated = imutils.rotate(bridge, angle=angle)
	cv2.imshow("Angle=%d" % (angle), rotated)
#### Output: Rotation example ## Resizing Resizing an image in OpenCV is accomplished by calling the `cv2.resize` function. However, special care needs to be taken to ensure that the aspect ratio is maintained. This `resize` function of `imutils` maintains the aspect ratio and provides the keyword arguments `width` and `height` so the image can be resized to the intended width/height while (1) maintaining aspect ratio and (2) ensuring the dimensions of the image do not have to be explicitly computed by the developer. Another optional keyword argument, `inter`, can be used to specify interpolation method as well. #### Example:
# loop over varying widths to resize the image to
for width in (400, 300, 200, 100):
	# resize the image and display it
	resized = imutils.resize(workspace, width=width)
	cv2.imshow("Width=%dpx" % (width), resized)
#### Output: Resizing example ## Skeletonization Skeletonization is the process of constructing the "topological skeleton" of an object in an image, where the object is presumed to be white on a black background. OpenCV does not provide a function to explicitly construct the skeleton, but does provide the morphological and binary functions to do so. For convenience, the `skeletonize` function of `imutils` can be used to construct the topological skeleton of the image. The first argument, `size` is the size of the structuring element kernel. An optional argument, `structuring`, can be used to control the structuring element -- it defaults to `cv2.MORPH_RECT` , but can be any valid structuring element. #### Example:
# skeletonize the image
gray = cv2.cvtColor(logo, cv2.COLOR_BGR2GRAY)
skeleton = imutils.skeletonize(gray, size=(3, 3))
cv2.imshow("Skeleton", skeleton)
#### Output: Skeletonization example ## Displaying with Matplotlib In the Python bindings of OpenCV, images are represented as NumPy arrays in BGR order. This works fine when using the `cv2.imshow` function. However, if you intend on using Matplotlib, the `plt.imshow` function assumes the image is in RGB order. A simple call to `cv2.cvtColor` will resolve this problem, or you can use the `opencv2matplotlib` convenience function. #### Example:
# INCORRECT: show the image without converting color spaces
plt.figure("Incorrect")
plt.imshow(cactus)

# CORRECT: convert color spaces before using plt.imshow
plt.figure("Correct")
plt.imshow(imutils.opencv2matplotlib(cactus))
plt.show()
#### Output: Matplotlib example ## URL to Image This the `url_to_image` function accepts a single parameter: the `url` of the image we want to download and convert to a NumPy array in OpenCV format. This function performs the download in-memory. The `url_to_image` function has been detailed [here](http://www.pyimagesearch.com/2015/03/02/convert-url-to-image-with-python-and-opencv/) on the PyImageSearch blog. #### Example:
url = "http://pyimagesearch.com/static/pyimagesearch_logo_github.png"
logo = imutils.url_to_image(url)
cv2.imshow("URL to Image", logo)
cv2.waitKey(0)
#### Output: Matplotlib example ## Checking OpenCV Versions OpenCV 3 has finally been released! But with the major release becomes backward compatibility issues (such as with the `cv2.findContours` and `cv2.normalize` functions). If you want your OpenCV 3 code to be backwards compatible with OpenCV 2.4.X, you'll need to take special care to check which version of OpenCV is currently being used and then take appropriate action. The `is_cv2()` and `is_cv3()` are simple functions that can be used to automatically determine the OpenCV version of the current environment. #### Example:
print("Your OpenCV version: {}".format(cv2.__version__))
print("Are you using OpenCV 2.X? {}".format(imutils.is_cv2()))
print("Are you using OpenCV 3.X? {}".format(imutils.is_cv3()))
#### Output:
Your OpenCV version: 3.0.0
Are you using OpenCV 2.X? False
Are you using OpenCV 3.X? True
## Automatic Canny Edge Detection The Canny edge detector requires two parameters when performing hysteresis. However, tuning these two parameters to obtain an optimal edge map is non-trivial, especially when working with a dataset of images. Instead, we can use the `auto_canny` function which uses the median of the grayscale pixel intensities to derive the upper and lower thresholds. You can read more about the `auto_canny` function [here](http://www.pyimagesearch.com/2015/04/06/zero-parameter-automatic-canny-edge-detection-with-python-and-opencv/). #### Example:
gray = cv2.cvtColor(logo, cv2.COLOR_BGR2GRAY)
edgeMap = imutils.auto_canny(gray)
cv2.imshow("Original", logo)
cv2.imshow("Automatic Edge Map", edgeMap)
#### Output: Matplotlib example ## 4-point Perspective Transform A common task in computer vision and image processing is to perform a 4-point perspective transform of a ROI in an image and obtain a top-down, "birds eye view" of the ROI. The `perspective` module takes care of this for you. A real-world example of applying a 4-point perspective transform can be bound in this blog on on [building a kick-ass mobile document scanner](http://www.pyimagesearch.com/2014/09/01/build-kick-ass-mobile-document-scanner-just-5-minutes/). #### Example See the contents of `demos/perspective_transform.py` #### Output: Matplotlib example ## Sorting Contours The contours returned from `cv2.findContours` are unsorted. By using the `contours` module the the `sort_contours` function we can sort a list of contours from left-to-right, right-to-left, top-to-bottom, and bottom-to-top, respectively. #### Example: See the contents of `demos/sorting_contours.py` #### Output: Matplotlib example ## (Recursively) Listing Paths to Images The `paths` sub-module of `imutils` includes a function to recursively find images based on a root directory. #### Example: Assuming we are in the `demos` directory, let's list the contents of the `../demo_images`:
from imutils import paths
for imagePath in paths.list_images("../demo_images"):
	print imagePath
#### Output:
../demo_images/bridge.jpg
../demo_images/cactus.jpg
../demo_images/notecard.png
../demo_images/pyimagesearch_logo.jpg
../demo_images/shapes.png
../demo_images/workspace.jpg