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hey everyone welcome back so as the son of photographers and also a very big fan of data science something thatamp;#39;s been a long long time fascination of mine has been the field of digital images since I learned that images are just giant matrices full of pixel values between zero and one and learning that we could do very intuitive operations on these matrices to do real world things the floodgates just opened for me it was super cool to learn that we could do these intuitive operations called convolutions on these giant image matrices in order to do real world things like blur images or detect the edges in an image but there was always this one operation that eluded me when I learned about it it didnamp;#39;t make sense why the convolution kernel looked the way it did and that was sharpening an image weamp;#39;ve all heard of sharpening an image heck your smartphone probably has a feature to help you sharpen the lines in an image but how does this actually work and how