Is there any implementation for Mask R-CNN in Matlab?

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Mona Al-Kharraz
Mona Al-Kharraz on 12 Apr 2020
Commented: L on 25 Aug 2021
Hi, I am looking for implementation and training of pre-trained Mask RCNN in MATLAB. I found it in Python.
  4 Comments
Ahmed
Ahmed on 28 Feb 2021
I try to implement it but it did not work. I got this error:
Error in RCNN1 (line 16)
rcnn = trainRCNNObjectDetector(stopSigns, layers, options, 'NegativeOverlapRange', [0 0.3]);
I don't know how to solve it. Any assistance?

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Answers (2)

Mike Croucher
Mike Croucher on 1 Mar 2021
  3 Comments
Anchit Dhar
Anchit Dhar on 22 Mar 2021
@Ahmed, could you please provide more details about the issue you are facing with the github mask-rcnn example? The error message you provided appears to be from the RCNN object detector. It'll help me investigate the issue if you could share-
  1. The part of the example erroring out for you.
  2. The error stack that you see.
Thanks.
-Anchit

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L
L on 25 Aug 2021
Edited: L on 25 Aug 2021
Dear Anchit,
I have tried to follow the demo from this link https://www.mathworks.com/help/vision/ug/example-InstanceSegmentationUsingMaskRCNNDeepLearningExample.html, but I can't train the mask rcnn on my on dataset, I get various errors.
I would like to train the net with 10 images. I have the 10 images, and I have the json file with annotations. I did the labeling with Image Labeler.
Is there a demo where can we see the training on custom dataset?
Thank you.
  2 Comments
L
L on 25 Aug 2021
You have problem with your dataset, or with the coding?
The demo from the website is not very clear, I think.
Is there an any demo, for any deep learning image detector with custom dataset (rcnn, yolo,...)?
I can't find any. Maybe you did find? If yes, provide me the link.
It is very unusual that nobody can find demos with custom dataset.

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