首页> 外文期刊>IEEE transactions on visualization and computer graphics >Relaxing Dense Scatter Plots with Pixel-Based Mappings
【24h】

Relaxing Dense Scatter Plots with Pixel-Based Mappings

机译:放松与基于像素的映射的密集散点图

获取原文
获取原文并翻译 | 示例
       

摘要

Scatter plots are the most commonly employed technique for the visualization of bivariate data. Despite their versatility and expressiveness in showing data aspects, such as clusters, correlations, and outliers, scatter plots face a main problem. For large and dense data, the representation suffers from clutter due to overplotting. This is often partially solved with the use of density plots. Yet, data overlap may occur in certain regions of a scatter or density plot, while other regions may be partially, or even completely empty. Adequate pixel-based techniques can be employed for effectively filling the plotting space, giving an additional notion of the numerosity of data motifs or clusters. We propose the Pixel-Relaxed Scatter Plots, a new and simple variant, to improve the display of dense scatter plots, using pixel-based, space-filling mappings. Our Pixel-Relaxed Scatter Plots make better use of the plotting canvas, while avoiding data overplotting, and optimizing space coverage and insight in the presence and size of data motifs. We have employed different methods to map scatter plot points to pixels and to visually present this mapping. We demonstrate our approach on several synthetic and realistic datasets, and we discuss the suitability of our technique for different tasks. Our conducted user evaluation shows that our Pixel-Relaxed Scatter Plots can be a useful enhancement to traditional scatter plots.
机译:散点图是最常用的双变量数据的技术。尽管他们的多功能性和表现力,但在显示数据方面,例如集群,相关性和异常值,散点图面临着主要问题。对于大而密集的数据,表示由于超细的杂乱而受到杂乱。随着使用密度图,通常部分地解决了这一点。然而,数据重叠可能在散射或密度图的某些区域中发生,而其他区域可以部分地,甚至完全空。可以采用足够的基于像素的技术来有效地填充绘图空间,从而额外的数据图案或簇的数量概念。我们提出了像素放松的散点图,一种新的简单变体,以改善使用像素的空间填充映射的密集散射图的显示。我们的像素放松的散点图可以更好地利用绘图画布,同时避免数据超标,并在数据图案的存在和大小中优化空间覆盖和洞察。我们采用了不同的方法来映射散点图指向像素并在视觉上呈现此映射。我们在几个合成和现实数据集中展示了我们的方法,我们讨论了我们对不同任务的技术的适用性。我们进行的用户评估表明,我们的像素放松的散点图可以是对传统散点图的有用的增强。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号