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Invisible Cloak using OpenCV | Python Project

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Have you ever seen Harry Potter’s Invisible Cloak; Was it wonderful? Have you ever wanted to wear that cloak? If Yes!! then in this post, we will build the same cloak which Harry Potter uses to become invisible. Yes, we are not building it in a real way but it is all about graphics trickery.

In this post, we will learn how to create our own ‘Invisibility Cloak’ using simple computer vision techniques in OpenCV. Here we have written this code in Python because it provides exhaustive and sufficient library to build this program.

Here, we will create this magical experience using an image processing technique called Color detection and segmentation. In order to run this code, you need an mp4 video named “video.mp4“. You must have a cloth of same color and no other color should be visible into that cloth. We are taking the red cloth. If you are taking some other cloth, the code will remain the same but with minute changes.

Why Red? Green is my favorite?
Sure, we could have used green, isn’t Red the magician’s color? Jokes aside, colors like green or blue will also work fine with a little bit of changes in code.
This technique is opposite to the Green Screening. In green screening, we remove background but here we will remove the foreground frame. So let’s start our code.


1. Capture and store the background frame [ This will be done for some seconds ]
2. Detect the red colored cloth using color detection and segmentation algorithm.
3. Segment out the red colored cloth by generating a mask. [ used in code ]
4. Generate the final augmented output to create a magical effect. [ video.mp4 ]

Below is the Code:

import cv2
import numpy as np
import time
# replace the red pixels ( or undesired area ) with
# background pixels to generate the invisibility feature.
## 1. Hue: This channel encodes color information. Hue can be
# thought of an angle where 0 degree corresponds to the red color, 
# 120 degrees corresponds to the green color, and 240 degrees 
# corresponds to the blue color.
## 2. Saturation: This channel encodes the intensity/purity of color.
# For example, pink is less saturated than red.
## 3. Value: This channel encodes the brightness of color.
# Shading and gloss components of an image appear in this 
# channel reading the videocapture video  
# in order to check the cv2 version
# taking video.mp4 as input.
# Make your path according to your needs 
capture_video = cv2.VideoCapture("video.mp4")
# give the camera to warm up
count = 0 
background = 0 
# capturing the background in range of 60
# you should have video that have some seconds
# dedicated to background frame so that it 
# could easily save the background image
for i in range(60):
    return_val, background =
    if return_val == False :
background = np.flip(background, axis = 1) # flipping of the frame 
# we are reading from video 
while (capture_video.isOpened()):
    return_val, img =
    if not return_val :
    count = count + 1
    img = np.flip(img, axis = 1)
    # convert the image - BGR to HSV
    # as we focused on detection of red color 
    # converting BGR to HSV for better 
    # detection or you can convert it to gray
    hsv = cv2.cvtColor(img, cv2.COLOR_BGR2HSV) 
    # ranges should be carefully chosen
    # setting the lower and upper range for mask1
    lower_red = np.array([100, 40, 40])       
    upper_red = np.array([100, 255, 255])
    mask1 = cv2.inRange(hsv, lower_red, upper_red)
    # setting the lower and upper range for mask2 
    lower_red = np.array([155, 40, 40])
    upper_red = np.array([180, 255, 255])
    mask2 = cv2.inRange(hsv, lower_red, upper_red)
    # the above block of code could be replaced with
    # some other code depending upon the color of your cloth 
    mask1 = mask1 + mask2
    # Refining the mask corresponding to the detected red color
    mask1 = cv2.morphologyEx(mask1, cv2.MORPH_OPEN, np.ones((3, 3),
                                         np.uint8), iterations = 2)
    mask1 = cv2.dilate(mask1, np.ones((3, 3), np.uint8), iterations = 1)
    mask2 = cv2.bitwise_not(mask1)
    # Generating the final output
    res1 = cv2.bitwise_and(background, background, mask = mask1)
    res2 = cv2.bitwise_and(img, img, mask = mask2)
    final_output = cv2.addWeighted(res1, 1, res2, 1, 0)
    cv2.imshow("INVISIBLE MAN", final_output)
    k = cv2.waitKey(10)
    if k == 27:


You can check source code on the project github repository, for input video and more details – here

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Last Updated : 04 Jan, 2023
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