A Euclidean Distance based Super Resolution Method for Sub pixel target detection in Hyper Spectral Images

Q4 Earth and Planetary Sciences
K. C. Tiwari, Amrita Bhandari
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引用次数: 1

Abstract

Most target detection algorithms suffer from the limitation that they can detect only the full pixels of the target while the target may also reside, besides the full pixel, partially in several surrounding pixels. In some cases, the target may even be embedded completely within the pixel. Both these cases are known as subpixel target detection problem. Many target detection applications, however, require detection of full pixels as well as detection of subpixel targets in the surrounding pixels which constitute a case of the mixed pixel. The problem is addressed by full pixel detection followed by spectral unmixing to determine the abundance fraction of the target. Though spectral unmixing gives the abundance fractions, it still does not give the spatial distribution/ arrangement of subpixels of the target with the surrounding pixels. The process of optimizing the spatial distribution of subpixels inside any given pixel based on the available abundance fractions is known as super resolution. This paper investigates Inverse Euclidean distance based super resolution. The algorithm performs well at different scale factors both for synthetic and real hyperspectral data which can aid the super resolution process significantly and thereby enhance the identification and recognition of target. A comparative assessment is also performed with Pixel Swap algorithm.
一种基于欧氏距离的超分辨率高光谱图像亚像素目标检测方法
大多数目标检测算法都存在只能检测目标的全像素,而目标除了全像素之外,还可能部分存在于周围的几个像素中。在某些情况下,目标甚至可以完全嵌入像素内。这两种情况被称为亚像素目标检测问题。然而,许多目标检测应用既需要检测全像素,也需要检测构成混合像素的周围像素中的亚像素目标。该问题是通过全像素检测和光谱解混来确定目标的丰度分数来解决的。虽然光谱分解得到了丰度分数,但它仍然没有给出目标子像元与周围像元的空间分布/排列。基于可用的丰度分数优化任意给定像素内子像素的空间分布的过程称为超分辨率。本文研究了基于逆欧氏距离的超分辨率。该算法在不同尺度因子下对合成高光谱数据和真实高光谱数据均表现良好,可显著辅助超分辨过程,从而增强目标的识别能力。并与像素交换算法进行了比较评价。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
GIS-Business
GIS-Business Earth and Planetary Sciences-Earth and Planetary Sciences (all)
自引率
0.00%
发文量
0
期刊介绍: GIS Business with ISSN no. 1430-3663 is bimonthly UGC Approved journal for publication of research papers related to planning, managment, GIS, geography, geology, geoinformatics, earth sciences, remote sensing, satellites, GPS, coodinate systems, urban planning, spatial studies, human settlements, and many more related subjects. Remote sensing is the art and science of making measurements of the earth using sensors on airplanes or satellites and geographic information system (GIS) is a computer-based tool for mapping and analyzing feature events on earth. It integrates common database operations, such as query and statistical analysis, with maps. The open access journal GIS Business is a scientific journal that includes a wide range of fields in its discipline and reports the acquisition of information about an object or phenomenon without making physical contact with the object. It allows to view and analyse multiple layers of spatially related information associated with a geographic region/location. It publishes all concerned research findings and discoveries pertaining to the ingredients and their mode of therapeutic nature to create a platform for the authors to make their contribution towards the journal.
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