Has anyone implement the FRCNN for TensorFlow version? I found some related repos as following:

  1. Implement roi pool layer
  2. Implement fast RCNN based on py-faster-rcnn repo

but for 1: assume the roi pooling layer works (I haven't tried), and there are something need to be implemented as following:

  • ROI data layer e.g. roidb.
  • Linear Regression e.g. SmoothL1Loss
  • ROI pool layer post-processing for end-to-end training which should convert the ROI pooling layer's results to feed into CNN for classifier.

For 2: em...., it seems based on py-faster-rcnn which based on Caffe to prepared pre-processing (e.g. roidb) and feed data into Tensorflow to train the model, it seems weird, so I may not tried it.

So what I want to know is that, will Tensorflow support Faster RCNN in the future?. If not, do I have any mis-understand which mentioned above? or has any repo or someone support that?

  • SmoothL1Loss should be relatively easy to implement using the actual tf for ROI pooling no idea...
    – jeandut
    Jul 13, 2016 at 11:56
  • I am working on the similar target of your question. I found that it hard to represent dynamic bboxes in tensor. That maybe the reason why the method 2 you mentioned use caffe to pre-process data. I am trying to figure out whether there is some other way to achieve that in TensorFlow.
    – Da Tong
    Sep 23, 2016 at 6:01
  • 4
    How about this implementation?
    – Shai
    Jan 9, 2017 at 6:05

1 Answer 1


Tensorflow has just released an official Object Detection API here, that can be used for instance with their various slim models.

This API contains implementation of various Pipelines for Object Detection, including popular Faster RCNN, with their pre-trained models as well.

  • 8
    to all mods/reviewers: please do NOT delete this answer as "link only": the nature of the question permits such answers and this particular one is okay.
    – Shai
    Jun 15, 2017 at 8:18
  • 2
    Links seem dead Oct 17, 2017 at 22:32
  • 2
    I've fixed them
    – gdelab
    Oct 18, 2017 at 7:15

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