Artificial neural networks in the improvement of spatial resolution of thermal infrared data for improved landuse classification

C. Venkateshwarlu, K. Gopal Rao, A. Prakash
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引用次数: 4

Abstract

The spatial resolution of remotely sensed (RS) data in the thermal infrared (TIR) range is very coarse compared to the very fine resolutions in the visible (VIS) and near infrared (NIR) ranges. Despite, the information on emissive properties of TIR data that is complementary to the reflective properties of the VIS and NIR data, the application of TIR data has been rather restricted, mainly due to its coarse spatial resolution. Artificial neural networks (ANN) have proved to be far superior [Govindaraju, R. S. and Rao, A. R., 2000][Heermann, P. D. and Khazenei, K., 1992] to the statistical methods in many applications. Studies have been carried out on the applicability of ANN in the improvement of effective spatial resolution of Landsat-5, TM band 6 (TIR) daytime and nighttime data. The present paper reports the methodology developed and the results of the studies. The results are compared with those of a statistical approach.
人工神经网络在提高热红外数据空间分辨率中的应用,改进土地利用分类
与可见光(VIS)和近红外(NIR)范围内的精细分辨率相比,遥感(RS)数据在热红外(TIR)范围内的空间分辨率非常粗糙。尽管TIR数据的发射特性信息与VIS和NIR数据的反射特性是互补的,但TIR数据的应用受到很大限制,主要是由于其粗糙的空间分辨率。人工神经网络(ANN)已被证明在许多应用中远优于统计方法[Govindaraju, r.s.和Rao, a.r., 2000][Heermann, p.d.和Khazenei, K., 1992]。研究了人工神经网络在提高Landsat-5、TM波段6 (TIR)日夜数据有效空间分辨率中的适用性。本文件报告了所开发的方法和研究的结果。结果与统计方法的结果进行了比较。
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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