by mr_jezy
MP - Colors
IPFS
PARAMS
4 April 2023•TEZOS•IPFS
Movie Posters
--- --- --- --- ---
I had this idea a couple of years ago when started to create my "portfolio projects" that I can showcase as an aspiring data scientist. At that time I created a webapp that scraped the movie posters based on the user input then applied k-means clustering to extract the dominant colors from the image and at the final step it created a list of colors and their respective hex codes. I remember showing this little project of mine at one of the job interview back then and I got hired.
Few months ago, when I started to discover generative art as my new artistic hobby, I revisited this project and wanted to create something nice that I would like to showcase. Then I started to jot down my ideas and discovered different ways to visualize values and colors. Finally I ended up scraping 200 movie posters and using a k-means clustering to extract the dominant colors from the images in python. I saved the data in JSON and started to work on the visual part. When I started to discover artists using isometric views, I really fell in love with the idea to apply it to my project as well. With the coding almost finished, fxhash came out with fx(params) which I really liked as an idea and immediately wanted to utilize. So I had to go back and change my code a bit, but it is finally finished.
Hope you find a good combination for your own movie poster!
Params
--- --- --- --- ---
Background mode: [day, night]
Line style: [relaxed, chaotic]
Number of clusters: [5,6,7,8,9,10]
Cluster height: [1,2,3,4,5]
Cluster order: [Biggest is at the back, Shuffled]
Frame: [True, False]
Text: [True, False]
Annotation: [None, Palette, Palette + Hex Code]
Features
--- --- --- --- ---
In addition to the Params, there is Title and Release Year for the Movies.
--- --- --- --- ---
Press [s] to save captured image in high resolution
--- --- --- --- ---
(c) 2023 by mr_jezy
--- --- --- --- ---
I had this idea a couple of years ago when started to create my "portfolio projects" that I can showcase as an aspiring data scientist. At that time I created a webapp that scraped the movie posters based on the user input then applied k-means clustering to extract the dominant colors from the image and at the final step it created a list of colors and their respective hex codes. I remember showing this little project of mine at one of the job interview back then and I got hired.
Few months ago, when I started to discover generative art as my new artistic hobby, I revisited this project and wanted to create something nice that I would like to showcase. Then I started to jot down my ideas and discovered different ways to visualize values and colors. Finally I ended up scraping 200 movie posters and using a k-means clustering to extract the dominant colors from the images in python. I saved the data in JSON and started to work on the visual part. When I started to discover artists using isometric views, I really fell in love with the idea to apply it to my project as well. With the coding almost finished, fxhash came out with fx(params) which I really liked as an idea and immediately wanted to utilize. So I had to go back and change my code a bit, but it is finally finished.
Hope you find a good combination for your own movie poster!
Params
--- --- --- --- ---
Background mode: [day, night]
Line style: [relaxed, chaotic]
Number of clusters: [5,6,7,8,9,10]
Cluster height: [1,2,3,4,5]
Cluster order: [Biggest is at the back, Shuffled]
Frame: [True, False]
Text: [True, False]
Annotation: [None, Palette, Palette + Hex Code]
Features
--- --- --- --- ---
In addition to the Params, there is Title and Release Year for the Movies.
--- --- --- --- ---
Press [s] to save captured image in high resolution
--- --- --- --- ---
(c) 2023 by mr_jezy
Data Scientist and art lover with the goal to create minimalistic and visually pleasing generative art.
200 EDITIONS
•18 RESERVES
minted
16 / 200
dutch auction
3 TEZ
Lorem ipsum project longer longer
0.00001 ETH
Lorem ipsum project longer longer
0.00001 ETH
Lorem ipsum project longer longer
0.00001 ETH
Lorem ipsum project longer longer
0.00001 ETH
Lorem ipsum project longer longer
0.00001 ETH
Lorem ipsum project longer longer
0.00001 ETH
Lorem ipsum project longer longer
0.00001 ETH
Lorem ipsum project longer longer
0.00001 ETH
Lorem ipsum project longer longer
0.00001 ETH
Lorem ipsum project longer longer
0.00001 ETH
Lorem ipsum project longer longer
0.00001 ETH
Lorem ipsum project longer longer
0.00001 ETH
Lorem ipsum project longer longer
0.00001 ETH
Lorem ipsum project longer longer
0.00001 ETH
Lorem ipsum project longer longer
0.00001 ETH
Lorem ipsum project longer longer
0.00001 ETH
Lorem ipsum project longer longer
0.00001 ETH
Lorem ipsum project longer longer
0.00001 ETH
Lorem ipsum project longer longer
0.00001 ETH
Lorem ipsum project longer longer
0.00001 ETH
Lorem ipsum project longer longer
0.00001 ETH
Lorem ipsum project longer longer
0.00001 ETH
Lorem ipsum project longer longer
0.00001 ETH
Lorem ipsum project longer longer
0.00001 ETH