How to import Keras layers for regression?

1 view (last 30 days)
Hi all. I am playing around with importing Keras layers for an LSTM problem but can't seem to get even a basic fully connected single layer network to work. Even though my Keras model just has a basic input layer, Matlab reads it as an "ImageInputLayer". This is for a simple sequence-to-sequence regression problem. I just want to feed in a 2D matrix with multiple features and a series of timesteps but it expects a 3D image tensor. Is there something wrong with the Keras model or do I need to preprocess my data differently? Thanks in advance!
  2 Comments
Friedrich Seiffarth
Friedrich Seiffarth on 24 Aug 2020
Did you find a solution for your problem ? Because I am running into the same problem.
Divya Gaddipati
Divya Gaddipati on 1 Sep 2020
Could you mention the error you are getting?

Sign in to comment.

Answers (1)

Sivylla Paraskevopoulou
Sivylla Paraskevopoulou on 9 May 2022
Since R2020b, Deep Learning Toolbox provides the featureInputLayer layer, and since R2021a you can import the TensorFlow-Keras layer Input as a featureInputLayer. For a complete list, see TensorFlow-Keras Layers Supported for Conversion into Built-In MATLAB Layers.
The importTensorFlowNetwork function tries to append an output layer to the imported network by interpreting the loss function of the TensorFlow model. If your model doesn't specify a loss function, specify the OutputLayerType name-value argument of importTensorFlowNetwork as "regression".

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!