📺 In this video, we'll learn how to implement ResUNet+, an architecture for medical image segmentation.
What is ResUNet++:
The ResUNet++ architecture is based on the Deep Residual U-Net (ResUNet), which uses the strength of deep residual learning and U-Net. The proposed ResUNet++ architecture takes advantage of the residual blocks, the squeeze and excitation block, ASPP, and the attention block.
Research Paper: https://arxiv.org/pdf/1911.07067.pdf
🔧 Code: https://github.com/nikhilroxtomar/Sem...
🕒 Timeline:
00:00 - Introduction
00:10 - What is ResUNet++
01:07 - Importing TensorFlow
01:20 - Squeeze and Excitation Network
06:20 - Stem block
09:24 - ResNet block
12:22 - ASPP block
13:56 - Building ResUNet++ (Encoder and Bridge)
16:03 - Attention block
18:18 - Building ResUNet++ (Decoder and Output)
20:56 - Ending
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Watch video Implementing ResUNet++ For Image Segmentation in Tensorflow Keras | Deep Learning In Computer Vision 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 708 once and liked it 22 people.