Tidbits tagged with #machine-learning (5)
In part 1 I discovered the three steps that face recognition consists of, detection, identification and recognition. Now I want to dive a bit deeper into the first step, face detection by telling my story how I learned (about) it by doing it.
Continue reading →
Reading
http://neuralnetworksanddeeplearning.com/chap1.html
Continue reading →
I renamed the series to "ML for VRT" instead of "ML vs. VRT" since that is what I actually want to achieve (eventually), as you can read in
Part 1 - Machine Learning vs. Screenshot Comparing?. Read on to figure out how I ended up next to learn about neural networks, because I figured out just applying some code examples learned from tutorials won't suffice my learning and they won't answer the questions I actually have to understand how to tune a neural network to do what I image it to do, detecting screenshots for visual regression testing.
Continue reading →
In part 1
I started my naive investigation on how to apply machine learning for making visual regression tests (VRT) better. I described the problem to solve, explored Keras very superficially and did also touched on the complexity of doing ML myself as opposed to having colleagues who are experts and who throw phrases like "train a model" and "predict" etc. around.
Oh boy, did I underestimate this.
Continue reading →
I broke this site, and thanks to @Holger reporting the error I figured out I should have done more testing instead of just tweeting that I should :).
Continue reading →