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hey everyone welcome to my channel this is part two of the ocr with opencv tutorial now the idea is that we are going to use a forum and we are going to detect the text individual text information out of it so we have this awesomeness form uh which basically you have to register to being awesome right so so far in the part one what we did was we extracted this a form and we got the birds eye view of this forum using feature detection and in this part we are going to extract the regions of interest and then we are going to send it to our pi tester act to give us the final answers and then we will overlay it on the original image so without further ado lets get started so here we are in the pycharm environment and you can see that we have the code from our previous video we are importing the packages we have the image imported and then we have created the detector and found out the key points and the descriptors and then we extracted or imported all of these images that we had in the