Sequence to Sequence Classification with Deep Learning CNN+LSTM

I was looking through the possible implementation of sequence classification using deep-learning.
There are pllenty of example of LSTM/BILSTM implementations
and 1D-Convolutional implementations of the problem.
My question is there is a way to combine the two solutions?
If for the first one the building of the net seems pretty immediate by stacking series of custom layers:
layers = [ ...
sequenceInputLayer(numFeatures)
lstmLayer(numHiddenUnits,'OutputMode','sequence')
fullyConnectedLayer(numClasses)
softmaxLayer
classificationLayer];
The convolution implementation seems indeed more complex, as it directly defines the various computational blocks.
Can i use a pre-defined convolution2Dlayer in the layers structure like in A) or do i have to go deeply in coding as described in B)?

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Srivardhan Gadila
Srivardhan Gadila am 25 Mär. 2020

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I think you can use the convolution2Dlayer with appropriate input arguments but make sure you use the sequenceFoldingLayer, sequenceUnfoldingLayer wherever necessary. Also refer to List of Deep Learning Layers.

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Thanks for the early response,
It indeed came with good news since i am actually trying to solve the problem using custom loop and dlarrays with not satisfying results. However it is not clear for me the need for sequenceFolding/UnfoldingLayer since i am working on accelerometry data and not images. As a first rude approach, starting from the convolutional block described in:
I would concatenate the convolutional2DLayer just after the sequenceInputLayer. Is there any implicit step that i lost in the workflow?
Refer to the following MATLAB Answer: CNN code and Sequence Input Error

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