Hexagonal Grid Shadow Generation using Bézier Curves

Minseok Kim, T. Nam, Youngjin Park
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Abstract

The hexagonal grid structure has been studied for processing and representing spatial information data in Geographic Information Systems. Visualization using a hexagonal grid has high visibility compared to other grid representation methods. However, it is difficult to effectively convey quantitative data and differences between grids depending on the geospatial data represented. In this paper, we propose a method to visually emphasize the hexagonal grid by generating shadow on the outside of the hexagonal grid. To do so, we offset the outer line segments of the hexagonal grid to be emphasized and generate a Bézier curve based on that information to determine the final shadow shape. We also apply variable transparency toward the edges of the shadow because the shadow gradually fades away from the hexagonal grid. We have shown that the proposed method can effectively generate shadow areas given not only a single hexagonal grid but also multiple hexagonal grids and can generate various shadow shapes based on user interface inputs. We apply the proposed method to Yongsan-gu, one of the districts of Seoul, and show the results of visually emphasizing it after generating shadow using the proposed method.
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六边形网格阴影生成使用bsamizier曲线
研究了六边形网格结构在地理信息系统中对空间信息数据的处理和表示。与其他网格表示方法相比,使用六边形网格的可视化具有较高的可见性。然而,根据所表示的地理空间数据,很难有效地传达定量数据和网格之间的差异。在本文中,我们提出了一种通过在六边形网格的外部产生阴影来在视觉上强调六边形网格的方法。为此,我们偏移要强调的六边形网格的外部线段,并根据该信息生成bsamzier曲线,以确定最终的阴影形状。我们还对阴影的边缘应用可变透明度,因为阴影会逐渐从六边形网格中消失。我们已经证明,该方法不仅可以在给定单个六边形网格的情况下有效地生成阴影区域,而且可以在给定多个六边形网格的情况下有效地生成阴影区域,并且可以根据用户界面输入生成各种阴影形状。我们将该方法应用于首尔龙山区,并展示了使用该方法生成阴影后在视觉上强调该区域的结果。
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