Predicting Missing Image in Remote Sensing Time Series Using Spatial-Temporal-Spectral Data

Deepa Palanisamy, R. Senthilkumar
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Abstract

Remote sensing is the acquisition of physical characteristics (reflecting radiation) of the remote object. It can be collected via special cameras or sensors in the satellite or aircraft or weather balloons. Each remote sensing images has multiple spectral bands. The remote sensing images analysis is used by multiple applications like metrological prediction, Land Cover and Land Usage prediction (LCLU), vegetation change detection. Missing image in the remote sensing time series produces a lot of glitches, causing serious upshot in the multi-temporal analysis, when the images at various time stamps are missing over a period of time. The existing work reconstructs missing image in remote sensing time series via spatial and temporal data. The proposed method Tensor-Deep Stacking Network Spatial-Temporal-Spectral (TDSN-STS) helps to reconstructs the missing image in remote sensing time series using spatial, temporal and spectral data. Thus the accuracy of the reconstructed image in TDSN-STS was increased substantially compared to the existing work.
利用时空光谱数据预测遥感时间序列中的缺失图像
遥感是获取远程目标的物理特性(反射辐射)。它可以通过卫星、飞机或气象气球上的特殊摄像机或传感器收集。每幅遥感图像都有多个光谱波段。遥感影像分析可用于气象预报、土地覆盖与土地利用预测、植被变化检测等多种应用。在一段时间内,不同时间戳上的图像缺失,会导致遥感时间序列中的图像缺失产生很多小故障,给多时相分析带来严重后果。现有的工作是利用时空数据重建遥感时间序列中的缺失图像。提出的张量-深度叠加网络时空-光谱(TDSN-STS)方法利用空间、时间和光谱数据重建遥感时间序列中的缺失图像。因此,与现有工作相比,TDSN-STS重建图像的精度大大提高。
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