This paper https://arxiv.org/pdf/1703.10757.pdf disucces using Regression Activation Mapping (RAM) - instead of Class Activation Mapping (CAM). There are several articles describing how to implement CAM. But i cant find any for RAM - or the code used in the paper.

Anyone got code example of RAM?

Update: Looking at this example: http://www.hackevolve.com/where-cnn-is-looking-grad-cam/

What should line 16 and 17 be when pred is a scalar?

class_idx = np.argmax(preds[0])
class_output = model.output[:, class_idx]

edit: repository for the Diabetic Retinopathy Detection paper: https://github.com/cauchyturing/kaggle_diabetic_RAM

edit2: changed title from InceptionV3 to any CNN architecture

  • For InceptionV4 the width and height goes from (299,299) to (147,147) -> (73,73) -> (71,71) -> (35,35) -> (17,17) -> (8,8). So using a RAM like in the paper above will result in a (8,8) resolution image.
    – Endre Moen
    Jun 11, 2018 at 12:34

2 Answers 2


it seems that there is not a very big difference between RAM and CAM. They all use the weight of the global average pooling layer.

  • 1
    the difference is still that at the end you have a dense layer where every neuron represents a class for classification while for regression you have only one neuron. Does that make a difference? fis it necessary to have the neurons per class before you can analyze which feature map was significant?
    – Khan
    Dec 2, 2021 at 10:57

One of the more popular Grad-CAM libraries - specific to pytorch - is Jacob Gil's: https://github.com/jacobgil/pytorch-grad-cam/ . One of the output targets (BinaryClassifierOutputTarget) can readily be used for regression activation mapping, as mentioned in this issue: https://github.com/jacobgil/pytorch-grad-cam/issues/360.

  • Please post an answer and then references for more details. Aug 27, 2023 at 3:31

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