How to import Keras layers for regression?

3 views (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".

Categories

Find more on Deep Learning Toolbox in Help Center and File Exchange

Community Treasure Hunt

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

Start Hunting!