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Photo-unrealistic Image Enhancement for Subject Placement in Outdoor Photography

2018-07-17 03:24:14
Christian Tendyck, Andrew Haddad, Mireille Boutin

Abstract

Camera display reflections are an issue in bright light situations, as they may prevent users from correctly positioning the subject in the picture. We propose a software solution to this problem, which consists in modifying the image in the viewer, in real time. In our solution, the user is seeing a posterized image which roughly represents the contour of the objects. Five enhancement methods are compared in a user study. Our results indicate that the problem considered is a valid one, as users had problems locating landmarks nearly 37% of the time under sunny conditions, and that our proposed enhancement method using contrasting colors is a practical solution to that problem.

Abstract (translated)

在明亮的光线条件下,相机显示反射是一个问题,因为它们可能会阻止用户正确地将主体定位在图片中。我们提出了一个解决这个问题的软件,它包括实时修改查看器中的图像。在我们的解决方案中,用户正在看到一个大致代表物体轮廓的分色图像。在用户研究中比较了五种增强方法。我们的结果表明所考虑的问题是有效的,因为用户在阳光充足的条件下将近37%的地标定位于地标,并且我们提出的使用对比色的增强方法是该问题的实际解决方案。

URL

https://arxiv.org/abs/1807.06196

PDF

https://arxiv.org/pdf/1807.06196.pdf


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