Using Transfer Learning | Deep Learning for Engineers, Part 4
Автор: MATLAB
Загружено: 2021-04-22
Просмотров: 30350
This video introduces the idea of transfer learning. Transfer learning is modifying an existing deep network architecture and then retraining it to accomplish your task rather than the task it was original trained for. In this video, we walk through how transfer learning was used to develop a network that could recognize high five motions in acceleration data.
Check out these other resources:
• MATLAB Deep learning examples: https://bit.ly/DL-examples
• 5 Reasons to use MATLAB for deep learning: https://bit.ly/2QlbNNc
• Getting Started with Deep Network Designer: https://bit.ly/2Qof12l
• Classify Time Series Using Wavelet Analysis and Deep Learning: https://bit.ly/3deq6wb
• Pretrained Deep Neural Networks: https://bit.ly/2QgC7rQ
Note: Starting with R2024a, importing data and training the network is no longer part of the Deep Network Designer App. This functionality is now done using the MATLAB function trainnet. Learn more: https://bit.ly/trainnet
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