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Estimation of forest biomass using remote sensing.

机译:利用遥感估算森林生物量。

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摘要

Forest biomass estimation is essential for greenhouse gas inventories, terrestrial carbon accounting and climate change modelling studies. The availability of new SAR, (C-band RADARSAT-2 and L-band PALSAR) and optical sensors (SPOT-5 and AVNIR-2) has opened new possibilities for biomass estimation because these new SAR sensors can provide data with varying polarizations, incidence angles and fine spatial resolutions. 'Therefore, this study investigated the potential of two SAR sensors (RADARSAT-2 with C-band and PALSAR with L-band) and two optical sensors (SPOT-5 and AVNIR2) for the estimation of biomass in Hong Kong. Three common major processing steps were used for data processing, namely (i) spectral reflectance/intensity, (ii) texture measurements and (iii) polarization or band ratios of texture parameters. Simple linear and stepwise multiple regression models were developed to establish a relationship between the image parameters and the biomass of field plots.;The results demonstrate the ineffectiveness of raw data. However, significant improvements in performance (r2) (RADARSAT-2=0.78; PALSAR=0.679; AVNIR-2=0.786; SPOT-5=0.854; AVNIR-2 + SPOT-5=0.911) were achieved using texture parameters of all sensors. The performances were further improved and very promising performances (r2) were obtained using the ratio of texture parameters (RADARSAT-2=0.91; PALSAR=0.823; PALSAR two-date=0.921; AVNIR-2=0.899; SPOT-5=0.916; AVNIR-2 + SPOT-5=0.939). These performances suggest four main contributions arising from this research, namely (i) biomass estimation can be significantly improved by using texture parameters, (ii) further improvements can be obtained using the ratio of texture parameters, (iii) multisensor texture parameters and their ratios have more potential than texture from a single sensor, and (iv) biomass can be accurately estimated far beyond the previously perceived saturation levels of SAR and optical data using texture parameters or the ratios of texture parameters. A further important contribution resulting from the fusion of SAR & optical images produced accuracies (r2) of 0.706 and 0.77 from the simple fusion, and the texture processing of the fused image, respectively. Although these performances were not as attractive as the performances obtained from the other four processing steps, the wavelet fusion procedure improved the saturation level of the optical (AVNIR-2) image very significantly after fusion with SAR, image.;Keywords: biomass, climate change, SAR, optical, multisensors, RADARSAT-2, PALSAR, AVNIR-2, SPOT-5, texture measurement, ratio of texture parameters, wavelets, fusion, saturation
机译:森林生物量估计对于温室气体清单,陆地碳核算和气候变化模型研究至关重要。新型SAR(C波段RADARSAT-2和L波段PALSAR)和光学传感器(SPOT-5和AVNIR-2)的出现为生物量估算开辟了新的可能性,因为这些新型SAR传感器可以提供极化不同的数据,入射角和良好的空间分辨率。 ``因此,这项研究调查了两个SAR传感器(带C波段的RADARSAT-2和带L波段的PALSAR)和两个光学传感器(SPOT-5和AVNIR2)估计香港生物量的潜力。三个常用的主要处理步骤用于数据处理,即(i)光谱反射率/强度,(ii)纹理测量和(iii)纹理参数的偏振或带比。建立了简单的线性和逐步多元回归模型,以建立图像参数与田间生物量之间的关系。结果表明原始数据无效。但是,使用所有传感器的纹理参数,可以显着提高性能(r2)(RADARSAT-2 = 0.78; PALSAR = 0.679; AVNIR-2 = 0.786; SPOT-5 = 0.854; AVNIR-2 + SPOT-5 = 0.911) 。使用纹理参数的比率(RADARSAT-2 = 0.91; PALSAR = 0.823; PALSAR两日期= 0.921; AVNIR-2 = 0.899; SPOT-5 = 0.916; AVNIR-2 + SPOT-5 = 0.939)。这些性能表明,这项研究产生了四个主要贡献,即(i)通过使用纹理参数可以显着改善生物量估计,(ii)使用纹理参数的比率可以获得进一步的改善,(iii)多传感器纹理参数及其比率具有比来自单个传感器的纹理更大的潜力,并且(iv)使用纹理参数或纹理参数的比率,可以精确地估计出远远超出SAR和光学数据的饱和度的生物量。 SAR和光学图像融合产生的另一重要贡献是,简单融合和融合图像的纹理处理分别产生0.706和0.77的精度(r2)。尽管这些性能不如从其他四个处理步骤中获得的性能那样吸引人,但小波融合程序在与SAR图像融合后极大地提高了光学(AVNIR-2)图像的饱和度。变化,SAR,光学,多传感器,RADARSAT-2,PALSAR,AVNIR-2,SPOT-5,纹理测量,纹理参数比率,小波,融合,饱和度

著录项

  • 作者

    Sarker, Md. Latifur Rahman.;

  • 作者单位

    Hong Kong Polytechnic University (Hong Kong).;

  • 授予单位 Hong Kong Polytechnic University (Hong Kong).;
  • 学科 Geodesy.;Remote Sensing.
  • 学位 Ph.D.
  • 年度 2011
  • 页码 221 p.
  • 总页数 221
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

  • 入库时间 2022-08-17 11:44:53

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