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)


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

enter image description here


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
  • 1
    I mean the second image. please correct it! heated_img and fin look same. – curio1729 Sep 3 '17 at 12:33
  • 3
    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

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:



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