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What is used to adjust user interface background colors text and what will automatically show in the workspace? 

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For certain kinds of tasks, background colors improve program comprehension.
Experimental results show that the proposed method is able to detect text of different font size, complex background and contrast.
The results show that our system can localize text of various font sizes and styles in complex background.
Open accessProceedings ArticleDOI
Frode Eika Sandnes, Xiaoli Zhang 
04 Sep 2012
19 Citations
The results can be used for automatic user interface customization.
Findings show that there is a significant differences in the children preferences for interface type, font type and background color.
The results showed that there were significant differences in performance influenced by the composition of colors in the workspace based on the number of pages as indicator.
The results presented in the paper show the improvement of the system in situations where the foreground objects have similar colors to those of the background.
Furthermore, subjects generally favor background colors.
Proceedings ArticleDOI
18 Sep 2003
92 Citations
Our proposal is robust with respect to different font sizes, font colors, languages and background complexities.

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