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The experimental results clearly show that the proposed method outperforms existing source color laser printer identification methods.
The testing performance justifies the proposed identification method is very useful for source color laser printer identification.
Based on this analysis, a number of necessary modifications are proposed to laser systems commonly used for monochrome marking in order to improve repeatability in color marking.
Experimental results on total 2,597 images from 7 color laser printers prove that the presented method identifies the color laser printers well.
This study offers a new controllable parameter to produce diverse colors, which may find a wide range of applications in the laser color marking, art designing and so on.

Related Questions

How cost effective are sports?5 answersSports have shown varying degrees of cost-effectiveness based on different interventions and settings. Studies have highlighted the potential cost-effectiveness of sports interventions in different scenarios. For instance, a study on programmed sports therapy (PST) for people with haemophilia demonstrated a significant gain in quality-adjusted life-years (QALYs) and a potential to reduce healthcare costs, indicating the cost-effectiveness of such interventions. On the other hand, community-based sports interventions have shown that less intensive sports sessions may be more effective and cost-effective in increasing physical activity among inactive individuals, with a cost per QALY of £50,000 for certain interventions. Additionally, the form of management in sports services can impact cost efficiency, with direct municipal management being identified as the most efficient delivery form in some cases.
What is the cost-effectiveness between sunglasses and photochromic lenses?5 answersThe cost-effectiveness between sunglasses and photochromic lenses is not directly addressed in the abstracts provided. However, the abstracts do mention the benefits and features of both sunglasses and photochromic lenses. Sunglasses with photochromic polarized light lenses are described as providing photochromism, light brightness adjustment, and protection against bright light and glare reflected light. Photochromic lenses are mentioned to have a liquid crystal cell and a strengthening layer to prevent breakage. Three-dimensional multifunctional photochromic sunglasses are described as providing color-changing capabilities and enhanced wear-resistant properties. A study on wearing patterns of sunglasses and photochromic lenses found that spectacle wearers used sunglasses more than photochromic lenses, and gray was the preferred lens tint. A photochromic and polarizing lens for sunglasses is mentioned to provide the same brightness on the inside and outside.
Why green gram is cost effective?5 answersGreen gram is cost-effective because it is a short duration pulse crop with high protein content, making it a valuable source of nutrition. Additionally, intercropping green gram with jute can help control weeds, reduce the cost of cultivation, and increase the overall productivity of the system. This intercropping system not only provides weed control but also improves soil health and strengthens the economy of jute farmers. Furthermore, the low cost of cultivation and the potential for high yields make green gram a viable option for small and marginal farmers, leading to net savings compared to traditional practices. Overall, the combination of its nutritional value, weed control benefits, and economic viability contribute to the cost-effectiveness of green gram cultivation.
What is the most cost effective home flooring?6 answers
What printer has the most cost effective ink?7 answers
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