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Please look at this github page. I want to generate heat maps in this way using Python PIL,open cv or matplotlib library. Can somebody help me figure it out? Superimposed heatmaps

I could create a heat map for my network at the same size as the input, but I am not able superimpose them. The heatmap shape is (800,800) and the base image shape is (800,800,3)

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You can superimpose your heatmap on the image using the function cv2.addweighted() available in OpenCV.

Here is an example

Sample image:

img = cv2.imread('Sample.jpg', 1)
gray_img = cv2.cvtColor(img, cv2.COLOR_BGR2GRAY)

enter image description here

Heatmap:

heatmap_img = cv2.applyColorMap(gray_img, cv2.COLORMAP_JET)

enter image description here

Superimposed:

Now if you want to superimpose this on top of the original image, you can use cv2.addweighted() function

fin = cv2.addWeighted(heatmap_img, 0.7, img, 0.3, 0)

enter image description here

You can vary the weight parameters in the function for both the images.

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  • Yes it is. Why do you doubt it? You can try it out for yourself on the grayscale image – Jeru Luke Sep 3 '17 at 12:31
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    I mean the second image. please correct it! heated_img and fin look same. – curio1729 Sep 3 '17 at 12:33
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    Your overall method is correct. But second and third image look the same, that's it! Change the picture of second. – curio1729 Sep 3 '17 at 12:35
  • The second image is the heatmap.Since you wanted it superimposed with the original image I used the cv2.addweighted() function to do the same. You can use it if you want or else stop with the second image itself. – Jeru Luke Sep 3 '17 at 12:37
  • Let us continue this discussion in chat. – curio1729 Sep 3 '17 at 12:38
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My code starts from a heatmap matrix (224,224) called cam, which is applied to the original image called frame, via opencv;

and it seems to work pretty well:

import numpy as np
from cv2 import cv2
from skimage import exposure 
...

capture = cv2.VideoCapture(...)
while True:
    ret, frame = capture.read()

    if ret:
        #resize original frame
        frame = cv2.resize(frame, (224, 224)) 

        #get color map
        cam = getMap(frame)
        map_img = exposure.rescale_intensity(cam, out_range=(0, 255))
        map_img = np.uint8(map_img)
        heatmap_img = cv2.applyColorMap(map_img, cv2.COLORMAP_JET)

        #merge map and frame
        fin = cv2.addWeighted(heatmap_img, 0.5, frame, 0.5, 0)

        #show result
        cv2.imshow('frame', fin)

the getMap() function gets the headmap given the frame;

I found some interesting free videos about this topic:

https://www.youtube.com/watch?v=vTY58-51XZA&t=14s

https://www.youtube.com/watch?v=4v9usdvGU50&t=208s

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