Implementing CNN and LSTM in parallel
40 visualizaciones (últimos 30 días)
Mostrar comentarios más antiguos
How to implment a CNN to work for image classifaction and in parallel with LSTM to classify the signals?
0 comentarios
Respuestas (1)
Krishna
el 7 de Feb. de 2024
Hello Mahmoud,
To achieve image classification with a CNN and concurrently classify signals with an LSTM, you can employ deep learning networks. Here's a structured approach:
Construct the CNN for Image Classification, build a sequence of convolutional layers with activation functions like ReLU to process images and extract their features.
Develop the LSTM Network for Signal Classification, initiate with an input layer tailored for sequential data such as signals. Insert LSTM layers to handle the time-series data and identify time-related patterns. Post-LSTM, add dense layers to make sense of the extracted sequence features.
Merge the CNN and LSTM for Concurrent Processing, Forge two distinct input pathways, one for the CNN (handling images) and another for the LSTM (processing signals). Each pathway should analyse its input and extract relevant features. Fuse the outputs from both pathways to add the feature sets. If necessary, introduce more dense layers to effectively blend the features for the classification task. To add 2 layers together you’ll need to use ‘additionLayer’. Please go through this example to know how to do this,
After you can follow the normal procedure of Neural Networks training like defining optimizers and all. For a practical example of integrating CNN with LSTM, you can refer to this resource:
Additionally, to deepen your understanding of the layers and their functions,
Hope this helps.
4 comentarios
Venu
el 21 de Mzo. de 2024
You can use imageDatastore for handling images, signalDatastore or arrayDatastore for signals and you can combine those data stores to pass through trainNetwork
Ver también
Categorías
Más información sobre Get Started with Deep Learning Toolbox en Help Center y File Exchange.
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!