how to use multiple input layers in DAG net as shown in the figure
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I have DAG graph with two paths of layers inside it.
I am planning to feed this DAG with two types of data (D1, D2) but I can't do it as the DAG in matlab accept just one input layer.
I need to form a layer such as:

I noticed that there is a custom network that can provide a network with multiple inputs but how can I connect between this network and DAG graph? or how could I use DAG with two inputs?
4 comentarios
Ben Hur
el 26 de Nov. de 2017
Ben Hur
el 27 de Nov. de 2017
Ville Laukkanen
el 5 de Dic. de 2017
This would be nice to have an answer to.
I have a similar situation with three image + three float-variables regression case. We're trying to estimate the output of an industrial process with images of material flows in from three different lines and their respective line-speed (float). I get the true output result much later. Would like to train the whole image regression thing together.
Maybe some modified version of LSTM would work or perhaps some funny layer which would decompose the input to six different layergraph-lines, but I can't find a way to do this in MatLab.
On Python Tensorflow there is the node structure and inputs given in dictionary (matlabs' struct). Would there be a way to do this in Matlab? - Input to several points in an layer graph.
Kenta
el 29 de Mzo. de 2020
As of 2019b, you can use custom training loop which allows you to do multi-input CNN.
This shows a demo to classify images with two-path sequence layers using two kinds of input images.
Respuesta aceptada
Más respuestas (5)
Mahmoud Afifi
el 28 de Oct. de 2019
Editada: Mahmoud Afifi
el 29 de Oct. de 2019
3 votos
I just released an example Matlab code of how to implemenet multiple-input CNN in Matlab 2019b. You can find it here:
please if it works for you, accept this answer.
1 comentario
dinial utami
el 14 de Jun. de 2020
thank you for your helping Mr.
in the code you have share, has multiple input in layer. not in trainNetwork.
Mr, can you help if we has 3 input in different image for training set, we set 3 input layers, but we can't set 3 training set. in the reality we need 3 input layers, and 3 training set.
thank you Mr. Mahmoud Afifi
Shounak Mitra
el 8 de Oct. de 2018
2 votos
Hi Marcello and Arjun,
Support for multiple Input layers are not supported as of the 18b release. We are working on it and it should be available soon.
Thanks Shounak
2 comentarios
abir zendagui
el 6 de En. de 2019
Hi,
Is the multiple input layers are really supported now (In 18b)? if it' is the case ,how this is done please?
Bodo Rosenhahn
el 16 de Mayo de 2019
Hi,
are multiple input /output layers for DAG networks supported in 19a ? Can you provide an example ?
Bernhard Suhm
el 12 de Dic. de 2017
0 votos
Modeling DAG graphs with multiple inputs and/or outputs is currently not supported in our deep learning framework, but we are working on it. So hold your breath for one of the next releases.
5 comentarios
Mammo Image
el 15 de Dic. de 2017
@ Bernhard Suhm, So any alternative suggestion for now?
Sara Abdeldayem
el 20 de Dic. de 2017
Is it in 2018a?
Bernhard Suhm
el 29 de Dic. de 2017
It's our policy to not officially commit to functionality prior to the release date, but more support for DAG is planned for 18a.
Arjun Desai
el 30 de Jun. de 2018
Is it supported now?
Marcello Venzi
el 20 de Sept. de 2018
Hello, can you please comment if multiple input layers are now supported (as of maltab 2018b)? I could not find this option in the documentation.
Yanhui Guo
el 24 de Oct. de 2018
0 votos
In the DAGNetwork file, I found the property: InputLayerIndices. In the fasterrcnn, I also found two input for this network. I am wondering if matlab2018b has an indirect way to support multiple inputs? Thanks.
sinan salim
el 4 de Ag. de 2020
0 votos
hi is there any update to manage multi-input layer >>because i want use different classes each 2 classes have to be assign for separate input layer
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