Cnn Rnn Combination
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![Illustrative examples of CNN (redrawn from [94]), RNN (adapted from ...](https://www.researchgate.net/publication/359936577/figure/fig1/AS:1144614228635649@1649908706555/Illustrative-examples-of-CNN-redrawn-from-94-RNN-adapted-from-41-MLP-and-GNN.png)

























































![The architecture of the combined RNN-CNN model [9] | Download ...](https://www.researchgate.net/publication/365298941/figure/fig1/AS:11431281096633375@1668183215343/The-architecture-of-the-combined-RNN-CNN-model-9_Q320.jpg)

![The architecture of the combined CNN-RNN model [9] | Download ...](https://www.researchgate.net/publication/365298941/figure/fig2/AS:11431281096642794@1668183215370/The-architecture-of-the-combined-CNN-RNN-model-9.png)



![The architecture of the combined RNN-CNN model [9] | Download ...](https://www.researchgate.net/publication/365298941/figure/fig1/AS:11431281096633375@1668183215343/The-architecture-of-the-combined-RNN-CNN-model-9.png)
![The architecture of the combined CNN-RNN model [9] | Download ...](https://www.researchgate.net/publication/365298941/figure/fig2/AS:11431281096642794@1668183215370/The-architecture-of-the-combined-CNN-RNN-model-9_Q320.jpg)


![[CNN]Convolutional Neural Network](https://velog.velcdn.com/images/dltjrdud37/post/c6c85370-639c-4261-8cef-f418226d66f5/cnn_banner.png)













![[Outline] Deep learning (CNN, RNN)](https://static.wixstatic.com/media/a27d24_25d31896063f424296d0a41d1e9abb6a~mv2.png/v1/fill/w_601,h_235,al_c/a27d24_25d31896063f424296d0a41d1e9abb6a~mv2.png)








![The architecture of the combined CNN-RNN model [9] | Download ...](https://www.researchgate.net/publication/366652974/figure/fig5/AS:11431281110166555@1672359722619/CNN-model-structure_Q640.jpg)









