UPDATE: So as far as i understand, if i give in input a cell array of sequence of images NxNx3xNobs the fold layer transform the cell array in a 4D-double NxNxNobs1+Nobs2+... Now the question is what happened when I apply the filter along the temporal dimension ? In particular at the end of a sequence and the beginning of another the convolution over 3 samples will aggregate the contributes of multiple sequences? And since the temporal component is the fourth dimension, should my filter be defined as 1x1x1x3?
How to deal with Time Sequence Inputs for 1D Convolutional-LSTM networks.
4 views (last 30 days)
Show older comments
I am trying to combine two approach for Time Sequence Classification using deep learning.
The first one implement LSTM networks and it is described here:
The seccond apply convolutional networks and it is described here:
Following previous advices on ANSWERS I used the Deep Network builder object to recreate the main convolutional block of 2) as
Now my doubt is how should i format the accelerometry data for the input of this network?
My data are 42 features signals from accelerometry represented as 42xN°observations.
I tried to format the data as a sequence of images as 1x1x42xN°observations, and it seemed work but still my doubt remains.
Is this data format correct ? and if so:
It is correct to define 1x3 as dimension of the filter?
Thank in advance,
3 Comments
krishna Chauhan
on 6 Jul 2020
@Mirko Job
did you find your answers sir?
I am dealing with sequence classification using TCN.
Answers (0)
See Also
Categories
Find more on Image Data Workflows in Help Center and File Exchange
Products
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!