I'm not looking to associate the "notes" with actual musical notes like A4 or specific chords or anything like that, I'm only looking for recent methods in finding all sustained frequencies along with their duration. I know this is a very open, very hard problem, but beyond that I have little experience in the area. I'm curious about all of the potential techniques for doing so. I'll add that my data is going to be rather simple, maybe not quite as simple as my example below but nowhere near actual "music".
Let's assume I'm starting with something really basic. Here is the CWT (using morlet mother wavelet) of two sine waves, 50 Hz and 250 Hz, over 1/10 of a second and on a range of frequencies roughly ~20 Hz to ~4000 Hz, with the rows scaled logarithmically (the row frequency changes more per row at higher frequencies). This is computed from the C++ TSPL library, which seems rather nifty.
Anyway, my goal would be to take this data and see that there are 2 notes, one 50 Hz and one 250 Hz, spanning its duration. So the end goal of all of this is to have abstracted line objects saying something like "50 Hz time 0 to 0.1" (rather than just being some uncomputed line in the data), which I can then use to refer back to my CWT output to grab extra feature data associated with it. So I don't want to just do image processing on this.
Now, in my ignorance, I look at these two bands of oscillating color and think "they are really tall!" They cover a lot of rows (so a large range of frequencies), when I know the input is precisely 50 Hz and 250 Hz. Despite covering that large frequency range, it seems that the pattern of white to black, which is the same rate regardless of row for any one note, is giving away the real frequency. While each row it contains is linked to a different frequency, the frequency of the oscillation in color is the same in each one.
How is this typically approached? My actual data will be (mostly) not much more complicated than this.
However, I was curious about a more complex case: This is also two sine waves, with one being 250 Hz and the other linearly scaling from 50 Hz to 450 Hz. Are any current methods of note detection capable of giving me two notes in this case? So able to understand that one of the notes is at an "angle" rather than horizontal, and being able to draw some rough line over it. This isn't as important, but I'm really interested in techniques that can handle my above simple case and also crazy stuff like this. My data will never be this complex, I'm pretty sure. Any reading on it, though?