When you write your PhD dissertation you are supposed to be an expert in your field, so you write it showing your knowledge in that field. That's one of the reasons you have a chapter introducing the tools you've used (algorithms and models, mainly).
What if you are not such an expert? I'm an engineer. Tell me a problem and I'll solve it. I'll look for algorithms doing something similar, compare them and modify them to solve the problem. If there's no algorithm available to solve your problem, I'll combine some of them, innovating a solution. Moreover, I can analyse the results, measure execution time, make some fancy graphs and even write the process down for somebody else to reproduce it (and in LaTeX, ladies and gentlemen).
But I'm not a scientist. I don't really care why, mathematically talking, one algorithm is better than another. I don't mind why the second derivative of the Gaussian filter is equivalent to convolve the image with a given mask. I could do some maths that I don't fully understand and extract one formula from another until I can prove that my solution is correct... or even copy them from Wikipedia... but I don't really care.
I'm an engineer. I analyse a problem, extract requirements and solve them. I'm writing my "Introduction to Computer Vision" for dummies: algorithm names, when to use them and how to implement them. And I'm proud of it.
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And I will gladly use it, since it will be oriented to people who use things that they don't really understand (mainly everybody, especially me...).
BTW, an "Introduction for PhD in Computer Vision for dummies" would have been invaluable when I began xDDD
La verdad es que para los que nos dedicamos al mkt, es complicado programar hasta en fases muy iniciales. Gracias por el recurso!!
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