增强虚拟自然场景使用快速和肮脏的图像为基础的食谱

M. Jaeger
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引用次数: 2

摘要

计算机生成场景在关注植物、作物和森林结构和功能建模的科学界越来越受欢迎。我们表明,真实的图像可以以低成本从科学可视化中产生,并将后处理功能应用于有或没有相关深度图的输出图像。我们说明使用经验快速和脏图像为基础的函数来模拟天气条件和摄影效果。2D粒子系统,深度梯度处理,图像与深度图组成,允许模拟雨,雪沉积和景深效果。此外,给出了一个观看矩阵,在与视野和光照有关的限制性假设下,图像可以添加天空圆顶,假反射等处理。与现有工具(通常很复杂)相比,这些实验配方的应用显示出快速的专用参数化,易于处理和应用,涵盖了从单个植物到景观水平的广泛应用,包括小森林林分,在不同的季节和白天。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Enhancing virtual natural scenes using quick and dirty image based recipes
Computer generated scenes are getting popular in the scientific communities concerned by plant, crop and forest structural and functional modeling. We show that realistic images can be produced from scientific visualizations at low costs, with post-processing functions applied to output images with or without their associated depth maps. We illustrate the use of empirical quick and dirty image based functions to mimic weather conditions and photographic effects. 2D particle systems, depth gradient processes, image with depth maps composing, allow to mimic rain, snow deposit and depth of field effects. Giving moreover a viewing matrix, on restrictive hypothesis related to the view and the illumination, images can be added sky-domes, fake reflections among other process. Compared to existing tools (often complex), the application of these experimental recipes shows fast dedicated parametrization, easy to handle and apply, covering a wide range of applications from single plant to landscape levels, including small forest stands, at various seasons and day times.
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