Partice Swarm Optimization based fusion of MODIS and PALSAR images for hotspot detection

Tasneem Ahmed, Dharmendra Singh, Shweta Gupta, B. Raman
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引用次数: 5

Abstract

SAR images have the capability to detect and identify various features of lands on the basis of scattering behavior of the targets. It is observed that various features like soil moisture, roughness, crop health and crop growth etc., can be easily detected with SAR, but detection of subsurface fire (hotspot) with SAR images has to be explored. Therefore, in this paper we have explored the possibility of detection of hotspots with fully polarimetric SAR images. Several polarimetric indices like CPR (Cross Polarization Ratio), HV/HH and HV/VV have been extensively studied on PALSAR (Phased Array type L-band Synthetic Aperture Radar) data to check the sensitivity of detection of subsurface fire by which proper indices can be selected to detect hotspots. Many researchers were using high resolution optical and thermal images for hotspot detection. But, still several challenges exist. It is known that SAR and Optical images are providing some complementary information. Therefore, in this paper, Particle Swarm optimization (PSO) based image fusion technique has been proposed to detect hotspots. SAR and Optical data i.e. MODIS (Moderate Resolution Imaging Spectroradiometer) data are used for fusion purpose. Before fusing the MODIS, several indices like MSAVI (Modified Soil Adjusted Vegetation Index), PAVI (Purified Adjusted Vegetation Index) etc. indices were tested for their sensitivity to detect hotspots. A quite good result has been observed after fusion of SAR and MODIS data.
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基于粒子群算法的MODIS和PALSAR图像融合热点检测
SAR图像能够根据目标的散射行为来检测和识别陆地的各种特征。研究发现,利用SAR可以很容易地检测到土壤湿度、粗糙度、作物健康状况和作物生长等多种特征,但利用SAR图像检测地下火(热点)还有待探索。因此,在本文中,我们探索了用全偏振SAR图像检测热点的可能性。在PALSAR(相控阵型l波段合成孔径雷达)数据上广泛研究了交叉极化比(Cross Polarization Ratio, CPR)、HV/HH、HV/VV等几种极化指标,以检验探测地下火灾的灵敏度,从而选择合适的指标来探测热点。许多研究人员使用高分辨率的光学和热图像进行热点检测。但是,仍然存在一些挑战。众所周知,SAR和光学图像提供了一些互补的信息。为此,本文提出了基于粒子群优化(PSO)的图像融合技术来检测热点。SAR和光学数据,即MODIS(中分辨率成像光谱仪)数据用于融合目的。在融合MODIS之前,对MSAVI (Modified Soil Adjusted Vegetation Index)、PAVI (Purified Adjusted Vegetation Index)等指标检测热点的灵敏度进行了测试。将SAR数据与MODIS数据进行融合,取得了较好的效果。
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