In this video, we are going to build a python application which would help in removing background from human videos using deep learning. For this purpose, we are going to a custom model trained on the human image segmentation task in the TensorFlow framework.
Background Removal using Deep Learning in TensorFlow: • Background Removal using Deep Learnin...
Code: https://github.com/nikhilroxtomar/Bac...
Dataset: https://www.kaggle.com/datasets/nikhi...
Timeline:
00:00 - Introduction
00:27 - Video samples for removing background
01:15 - Weight file of the model trained on the People Segmentation dataset
02:01 - Importing the required libraries
03:35 - Defining the global parameters
03:48 - Defining a function to create a directory
04:16 - Main function
04:26 - Seeding the environment
04:56 - Create a directory/folder to save the output videos
05:11 - Loading the trained model
06:22 - Video path
07:15 - Reading the video to get the frame height and width
08:12 - Defining the variable for saving the output video
09:10 - Reading the video frame
10:27 - Processing the video frame
12:33 - Predicting the binary mask
16:07 - Processing the binary mask
17:42 - Removing background from the original frame
20:30 - Apply a custom colour to the background
23:26 - Saving the custom background coloured frame in the output video
25:06 - Videos with background removed
26:42 - Ending
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Watch video Background Removal from Video using Deep Learning | TensorFlow | Semantic Segmentation | OpenCV online without registration, duration hours minute second in high quality. This video was added by user Idiot Developer 01 January 1970, don't forget to share it with your friends and acquaintances, it has been viewed on our site 1,704 once and liked it 35 people.