首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >Understanding the synergies of deep learning and data fusion of multispectral and panchromatic high resolution commercial satellite imagery for automated ice-wedge polygon detection
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Understanding the synergies of deep learning and data fusion of multispectral and panchromatic high resolution commercial satellite imagery for automated ice-wedge polygon detection

机译:了解自动冰楔多边形检测的多光谱和全形高分辨率商业卫星图像深度学习和数据融合的协同作用

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The utility of sheer volumes of very high spatial resolution (VHSR) commercial imagery in mapping the Arctic region is new and actively evolving. Commercial satellite sensors typically record image data in low-resolution multispectral (MS) and high-resolution panchromatic (PAN) mode. Spatial resolution is needed to accurately describe feature shapes and textural patterns, such as ice-wedge polygons (IWPs) that are rapidly transforming surface features due to degrading permafrost, while spectral resolution allows capturing of land-use and land-cover types. Data fusion, the process of combining PAN and MS images with complementary characteristics often serves as an integral component of remote sensing mapping workflows. The fusion process generates spectral and spatial artifacts that may affect the classification accuracies of subsequent automated image analysis algorithms, such as deep learning (DL) convolutional neural nets (CNN). We employed a detailed multidimensional assessment to understand the performances of an array of eight application-oriented data fusion algorithms when applied to VHSR image scenes for DLCNN-based mapping of ice-wedge polygons. Our findings revealed the scene dependency of data fusion algorithms and emphasized the need for careful selection of the proper algorithm. Results suggested that the fusion algorithms that preserve spatial character of original PAN imagery favor the DLCNN model performances. The choice of fusion approach needs to be considered of equal importance to the required training dataset for successful applications using DLCNN on VHRS imagery in order to enable an accurate mapping effort of permafrost thaw across the Arctic region.
机译:在绘制北极地区的非常高空间分辨率(VHSR)商业图像的纯粹体积的效用是新的并积极发展。商业卫星传感器通常在低分辨率多光谱(MS)和高分辨率平板(PAN)模式下记录图像数据。需要空间分辨率来准确描述特征形状和纹理图案,例如冰楔多边形(IWP),其由于DRIDADROST而迅速变换表面特征,而光谱分辨率允许捕获土地使用和陆地覆盖类型。数据融合,组合平移和具有互补特性的MS图像的过程通常用作遥感映射工作流的积分组件。融合过程产生频谱和空间伪像,其可能影响随后的自动图像分析算法的分类精度,例如深度学习(DL)卷积神经网络(CNN)。我们使用详细的多维评估,以了解应用于冰楔多边形的DLCNN映射的VHSR图像场景时,了解八个应用导向数据融合算法数组的性能。我们的研究结果揭示了数据融合算法的场景依赖性,并强调需要仔细选择正确算法。结果表明,保留原始PAN图像空间特征的融合算法赞成DLCNN模型性能。融合方法的选择需要考虑使用VHRS图像上的DLCNN的成功应用程序所需的培训数据集,以便在北极地区的Pumafrost解冻的准确映射工作。

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