I don't see a golden hour in your pics. I see a purple hour. Basically purple in all the images you favour All the NLP images look much better, and you can adjust the exposure and you can adjust the luminosity to bring it down if you want to show more of that golden light. For some reason you are fine with having to adjust your purple pics, but have a problem having to adjust NLP pics.
these "purple" images ARE NOT the final images. I didn't write that. These are a first output of CP. They are wrong, but close to true, contrary to the overexposed and washed NLP first output. I'll show what these purple pictures are almost there.
golden hour:
my english is bad, but whatever it is in english, it's about the moment of the day when the sun is getting down, still up over the azimuth but low enough that, when the sky is clear, it produces a more or less golden shining.
for instance, in pictures:
before Christmans I took an old camera I wanted to test to a place nearby. It was I think the 23 dec. and around 14:00/14:30.
The astronomical map of the sun movements this day, time and place, projected over a satelite view (oriented North) shows the point where the sun rises, it's path from East to West (yellow arc) and the point where it sets. The rays show the direction of main illumination, the small arrow in the centre of the circle is pointed at the area where I was taking pictures from. Beside the sun path, its elevation matters, and this time of the year, around winter solstice it is very low:
here a photo pointing at the brigde seen at the top of the satelite view. Not so noticeable bu there, a specific illumination on some poles, and the red, a bit of yellow reflection on the foreground snow. Luminosity of the landscape is getting low.
now a photo pointing a bit to the shore on the left of this one. There's the slightly golden light on trees to the right and the top of the boat:
now I turn 180, my back to the boat, and I take a picture the other end of the river, South-West, so I am shooting to the sun, in order to check flare effects of this lens.
The negative is burnt by the sun:
there are different interpretation in positive inversion. For instance this:
or this:
so, by "golden hour" i meant this position of the sun.
...
now the very purple picture of the cathedrals and towers were taken at a similar moment. It was the 28 dec. 2019 (last Christmas) around 14:00 to 15:00. Vologda is at the same latitude than my place, ~60N.
The map of the sun position and path, on the city's map and the position where I was shooting from:
here i draw the position of the building in the purple photo, relatively to that satellite view:
of course the sun isn't hitting directly like in the case of the picture taken by the river, because there are buildings in the city and the kreml itself that do partially block the most lower rays. But in this purple picture we can see on the white Sofia cathedral the line light/shadow. The square is partially shadowed.
now, to complete the description of the setting, a couple photos from the mobile phone. The days before i was in a city where the weather was quite dark. I arrived in Vologda in the night and then in the day I had this beautiful weather, I took couple shots to sane a friend ("see what nice weather we have today in Vologda!).
it's not much, just a mobile phone, but not too bad, it has Zeiss optics. The square. Almost no clouds, very sunny. in reality the sky was looking deeper blue. Sun is hitting from my back and a bit left, we can see the reflection on the cupulas, telling the direction of the strongest sun beam. The sun is moving to the left (West)
from the end of the square near the small church, we see the strong shine of the sun from the back of the kreml and low on the azimuth (not hanging up in the sky):
so that's the setting. I grabbed a Salyut and couple Mir lenses and started taking pictures like one hour after this. Which means that the "white" NLP rendering is a messed overexposure. Somehow its algorithm may pump up the amount of luminosity and exposure when averaging the measures brightest points of the negative. Whatever, in such case it's wrong.
The purple picture is wrong but not far because the real sky was deep blue darkening, there's a gradation from purple to blue.
i can do it in ColorPerfect panel but I'll show in a generic colour balancing tool, here in Photoline (I run CP inside Photoline). The tool has a preview windows, vertically split, showin the before/after:
I will just push to the Green, away from the Magenta:
that's almost it ... see purple > blue.
I can call the exposure tool also:
in order to get most possible close to what was the real life, I can compare with the photos I took just before and after, but basically something like one of these two, there in the middle, where purple is the CP first try and white the NLP one:
in short: purple was no problem there, it was just about moving away a veil, and the general mood and structure of the picture was there.
But it is not just about these examples. I have many cases where the CP output is closer to reality. Will post a follow-up soon with more negatives.
NLP makes it very very easy to get the result you want. Either by using the presets, or by using the presets and then making slight adjustments. It seems that you choose to show NLP in the worst possible way to prove a point. Kinda like claiming a lens is unsharp ignoring the fact that it hasn't been focused correctly.
I bought NLP end March, started using it a lot but not exclusively (i still use Gimp much) April to now. I am familiar. There's something to say about the presets. but one thing at a time.
Since november with winter again I have noticed NLP wasn't so useful, that's when I took archives from last winter,. I even re-scanned some rolls just to be sure. Ran tests in NLP and in the CP trial (with a grid embedded in the photo) and bought myself a CP license. Which meant buy also an editor able to run it, so I opted for Photoline. All together not much. like ~ 120€, but for a good reason.