官术网_书友最值得收藏!

Applying pencil sketch transformation

With the tricks that we learned from the previous sections in our bag, we are now ready to take a look at the entire procedure.

The final code can be found in the convert_to_pencil_sketch function within the tools.py file.

The following procedure shows you how to convert a color image into grayscale. After that, we aim to blend the grayscale image with its blurred negative:

  1. First, we convert an RGB image (imgRGB) into grayscale:
img_gray = cv2.cvtColor(img_rgb, cv2.COLOR_RGB2GRAY) 

As you can see, we have used cv2.COLOR_RGB2GRAY as a parameter to the cv2.cvtColor function, which changes the color spaces. Note that it does not matter whether the input image is RGB or BGR (which is the default for OpenCV); we will get a nice grayscale image in the end.

  1. Then, we invert the image and blur it with a large Gaussian kernel of size (21,21):
    inv_gray = 255 - gray_image
blurred_image = cv2.GaussianBlur(inv_gray, (21, 21), 0, 0)
  1. We use dodge to blend the original grayscale image with the blurred inverse:
    gray_sketch = cv2.divide(gray_image, 255 - blurred_image, 
scale=256)

The resulting image looks like this:

Image credit—"Lenna" by Conor Lawless is licensed under CC BY 2.0

Did you notice that our code can be optimized further? Let's take a look at how to optimize with OpenCV next.

主站蜘蛛池模板: 突泉县| 奎屯市| 新营市| 农安县| 民乐县| 景泰县| 隆昌县| 石门县| 伊金霍洛旗| 广元市| 平谷区| 孟津县| 南投市| 门源| 庆安县| 县级市| 紫阳县| 成安县| 资溪县| 莱芜市| 禹城市| 泌阳县| 黎平县| 宜宾市| 平舆县| 福安市| 邢台市| 维西| 皮山县| 蓬溪县| 浦城县| 林西县| 南涧| 北流市| 蓬安县| 河曲县| 庆城县| 泸西县| 长汀县| 鹿泉市| 通许县|