I am driven to this mostly out of curiosity, in the quest to create the perfect tag cloud algorithm. When given a data of the form (term,score), it renders the text so that it's visual impact is perfectly commensurate with its score.
As for "visual impact", its how the human eye perceives the size/impact of the text. The image below shows what I mean: both for images whose visual impact can be obviously determined, and text whose visual impact is hard to determine. I am ignorant of art/ sight perception theory, so please excuse me for (re)inventing this metric.
As for finding the visual impact of text, I believe the metrics that come into play are:
- font size
- font strength (normal, bold)
- anti-aliasing (if enabled)
- serifs (a san serif font seems more "solid" than a serif font)
Let me state my problem: "given a bitmap image of a piece of text on an arbitrarily large white canvas, return a numerical metric that is commensurate with how a human eye would judge it's impact".
I am just a CS graduate who dabbled just a bit with image processing, with no training in art or design. I am aware that its tough to programatically measure something subjective.