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I'm using fully convolutional networks for semantic segmentation in Caffe, using the Cityscapes dataset.

This script allows to convert IDs of classes, and says to set IDs of classes to ignore at 255, and "ignore these labels during training". How do we do that in practice ? I mean, how do I 'tell' my network that 255 is not a true class as the other integers ?

Thanks for giving me an intuition behind it.

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  • I don't know how to do that in Caffe, but have you considered actually stripping out those samples from the dataset before you start training?
    – Fred
    Apr 26, 2018 at 13:18
  • I mentioned Caffe but it's more a conceptual question. Semantic segmentation means assigning a class to each pixel of an image, so my label is also an image, with a class for each pixel. Therefore, only parts of my images are meant to be ignored (like background zones...), I can't just throw away an image because it contains background
    – MeanStreet
    Apr 26, 2018 at 13:22

1 Answer 1

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Using, e.g. "SoftmaxWithLoss" layer, you can add a loss_param { ignore_label: 255 } to tell caffe to ignore this label:

layer {
  name: "loss"
  type: "SoftmaxWithLoss"
  bottom: "prediction"
  bottom: "labels_with_255_as_ignore"
  loss_weight: 1
  loss_param: { ignore_label: 255 }
}

I did not check it, but I believe ignore_label is also used by InfogainLoss loss and some other loss layer.

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    Great, thanks. I still have a conceptual point I don't understand: what will my network 'learn' from these zones ? For example, if my network predicts, for a car, a zone that overflows on the background (the sky), the loss won't give it penalty for that, altough it's wrong. Once trained, it will still include sky when segmenting cars, won't it ?
    – MeanStreet
    Apr 26, 2018 at 13:32
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    @Mean-Street AFAIK you do not assign "ignore" label to background - but rather to boundary regions where the annotations are not accurate: so if you miss the boundary by a few pixels you do not get penalize (since it might be due to labeling inaccuracy), but the background region/label is not ignored. BTW, using "InfogainLoss" you can assign different "weights" to each mistake: one cost for predicting BG for object and another for predicting object in BG region...
    – Shai
    Apr 26, 2018 at 13:37
  • In that case you're right. But let's way I want to build a network that segments only cars and pedestrians. Everything else will have a 'not car nor pedestrian' label, with a lot of big zones with that label. In that case, I should not ignore that 'not car nor pedestrian' label, right ? Because of what I said before. But how will it behave for this class ? It could be so much things, I feel like the network won't be able to learn features for it. Would it be a problem ? I hope I'm clear
    – MeanStreet
    Apr 26, 2018 at 13:52
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    @Mean-Street you are clear. There are two issues here: 1. "not car/ped" class has large intra class variation. 2. You have severe imbalance in your training data. Regarding the first issue, usually if your net is big enough it should not be a problem. The second issue is much harder, try reading about "focal loss"
    – Shai
    Apr 26, 2018 at 14:04
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    @Shai Thanks a lot for your help
    – S.EB
    Sep 12, 2018 at 15:38

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