基于数据管理的离散目标检测和运动配准方法

Hans Hinterberger, B. Bauer-Messmer
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引用次数: 4

摘要

当科学数据集可以直观地解释时,它们通常作为图片进行管理,因此存储为大型位图集合。然而,图像中包含的有价值的信息通常没有被利用,仅仅是因为数据没有被进一步处理。造成这种情况的常见原因是访问图像集合中的信息非常困难,而且有趣的应用程序通常依赖于格式不兼容的补充数据。如果将这些数据集视为高维点数据而不是字节流,并使用合适的多维文件结构进行管理,那么就有可能将“模糊”对象转换为n维实体。这样做有几个好处:基于内容的访问成为可能,在不丢失相关信息的情况下进行数据压缩的可能性存在,通过增加文件结构的维数,可以很容易地合并额外的信息。本文描述了这种方法如何成功地应用于天气雷达和各种卫星图像中探测和跟踪风暴单体。关键是根据几种不同的图像属性对数据进行参数化,以便进行有效的访问。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discrete object detection and motion registration based on a data management approach
When scientific data sets can be interpreted visually they are typically managed as pictures and consequently stored as large collections of bitmaps. Valuable information contained in images is often not exploited, however simply because the data is not processed further. Common reasons for this are that access to information in image collections is notoriously difficult and that interesting applications often depend on supplementary data with incompatible formats. If such data sets are treated as higher-dimensional point data instead of byte streams and managed with a suitable multidimensional file structure, then it is possible to transform "fuzzy" objects into n-dimensional solids. Several benefits result: content based access becomes possible, the potential for data compression without loss of relevant information exists and additional information can readily be incorporated simply by increasing the file structure's dimensionality. This paper describes how this approach has been successfully applied to detect and track storm cells in weather radar and various satellite images. The key is to parametrize the data for efficient access based on several different image attributes.
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