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How many pixels wide is a Chromebook? 

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The findings confirm the advantage of the smallest pixels in this range and the advantage of square pixels over rectangular pixels.
Proceedings ArticleDOI
14 Mar 2014
28 Citations
This allows to exchange detailed shading between pixels close to a surfel and approximate shading between pixels distant to a surfel.
It is also found that the proposed model is useful to interpret mixed pixels.
Proceedings ArticleDOI
Masoud Afrakhteh, Subariah Ibrahim 
25 Jun 2010
15 Citations
The more surrounding pixels around a target pixel are utilized to find the most appropriate capacity value, the more precise capacity value is achieved.
Our method yields near-perfect, extremely high aspect ratio pixels.
Hexagonal pixels offer the advantage of greater rotational symmetry, a close packed structure and a nearly circular pixel.
It improves on the existing method of approximating rectangular image pixels as square pixels, and has a higher degree of accuracy in detecting edges.
Here we propose a novel approach to enhancing resolution beyond the limit set by the CCD's pixels.
In addition, broadening of the colour range of electrochromic pixels is a factor that is compelling to the commercial uptake and usage of electrochromic “paper-quality” displays.

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