How to deploy SVM on ARM Cortex-M processor

19 visualizaciones (últimos 30 días)
Micael Coutinho
Micael Coutinho el 1 de En. de 2019
Comentada: Walter Roberson el 18 de Mzo. de 2019
Hi everyone.
I have a project in which I have to deploy a SVM (support vector machine) model into an ARM Cortex-M processor. I have already successfully trained my SVM, but I don't know how to deploy it on my edge device (microcontroller). I know that there is a library for neural network (CMSIS NN), but it has little support, as far as I can see. Can anyone help?

Respuesta aceptada

Walter Roberson
Walter Roberson el 1 de En. de 2019
In your interactive MATLAB session, you save() the classification model you trained. In the code for use on the deployed machine, you load() the model and predict() using it.
  2 comentarios
Nikhilesh Karanam
Nikhilesh Karanam el 15 de Mzo. de 2019
Dear Walter Roberson,
Which interactive MATLAB session you mean? Could you please share the link of it? Thanks in advance :)
Regards,
Nikhilesh K
Walter Roberson
Walter Roberson el 15 de Mzo. de 2019
I am referring to the matlab desktop .

Iniciar sesión para comentar.

Más respuestas (1)

Micael Coutinho
Micael Coutinho el 2 de En. de 2019
Thank you. It worked.
  4 comentarios
Nikhilesh Karanam
Nikhilesh Karanam el 18 de Mzo. de 2019
Editada: Nikhilesh Karanam el 18 de Mzo. de 2019
Thanks. Well, yes. deploying the training portion is not possible. I have used classification learner App, selected Linear SVM for my project, trained the model got a validation accuracy of 98%. I generated a matlab script from the App and used the function for prediction of new data in the generated script which looks like this:
yfit = trainedClassifier.predictFcn(T2)
I get good results on MATLAB and I am stuck here. Please let me know how I can move forward from this point in generating C code if you have any idea. Thanks :)
Walter Roberson
Walter Roberson el 18 de Mzo. de 2019
I am not sure. You might have to alter that to use
yfit = predict(trainedClassifier, T2);

Iniciar sesión para comentar.

Productos


Versión

R2018a

Community Treasure Hunt

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

Start Hunting!

Translated by