Morphological transformations are some simple operations based on the image shape. It is normally performed on binary images. It needs two inputs, one is our original image, second one is called structuring element or kernel which decides the nature of operation. Two basic morphological operators are Erosion and Dilation. Then its variant forms like Opening, Closing, Gradient etc also comes into play.
In this video , I explained how we can perform this operations on images .
★ link to the google colab notebook -
https://github.com/YashviP/Computer-Vision-Playlist/blob/main/OpenCV/Morphological_transformations.ipynb
★ All the notebooks and materials of this playlist will be uploaded in this GitHub repo-
https://github.com/YashviP/Computer-Vision-Playlist
If you have any doubts or queries you can comment down here 👇🏻, or message me on LinkedIn.
If you like these tutorials and would like to support them then the easiest way is to simply like the video and give it a thumbs up & also it's a huge help to share these videos with anyone who you think would find them useful.
Please consider clicking the SUBSCRIBE button to be notified for future videos.
⭐️ ABOUT ME ⭐️
I am Yashvi Patel, Software Developer with Data science skills and Kaggle Notebook Master. I created this channel to share my knowledge and experience with you all. This channel will include practical tutorials solving problems from Kaggle datasets and competitions. I will upload videos related to Data Science, Machine learning, Deep learning, Natural Language Processing, and Computer vision.
Тэги:
#yashvi_patel #yashvi_patel_kaggle #yashvi #yashvi_patel_datascience #computer_vision_playlist #image_processing_python_tutorial #image_processing_python #introduction_to_opencv_python #opencv_tutorial_python #opencv_tutorial #image_processing_using_python #opencv_tutorial_for_beginners #opencv_image_processing_python_tutorial #python_for_beginners #Kaggle #kaggle_competition #kaggle_competition_tutorial #Geometric_transformations #morphological_transformation #descent_gradient