首页> 外文期刊>ISPRS Journal of Photogrammetry and Remote Sensing >A new fully convolutional neural network for semantic segmentation of polarimetric SAR imagery in complex land cover ecosystem
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A new fully convolutional neural network for semantic segmentation of polarimetric SAR imagery in complex land cover ecosystem

机译:复杂陆地覆盖生态系统中Polarimetric SAR图像的语义分割新的全卷积神经网络

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Despite the application of state-of-the-art fully Convolutional Neural Networks (CNNs) for semantic segmentation of very high-resolution optical imagery, their capacity has not yet been thoroughly examined for the classification of Synthetic Aperture Radar (SAR) images. The presence of speckle noise, the absence of efficient feature expression, and the limited availability of labelled SAR samples have hindered the application of the state-of-the-art CNNs for the classification of SAR imagery. This is of great concern for mapping complex land cover ecosystems, such as wetlands, where backscattering/spectrally similar signatures of land cover units further complicate the matter. Accordingly, we propose a new Fully Convolutional Network (FCN) architecture that can be trained in an end-to-end scheme and is specifically designed for the classification of wetland complexes using polarimetric SAR (PoISAR) imagery. The proposed architecture follows an encoder-decoder paradigm, wherein the input data are fed into a stack of convolutional filters (encoder) to extract high-level abstract features and a stack of transposed convolutional filters (decoder) to gradually up-sample the low resolution output to the spatial resolution of the original input image. The proposed network also benefits from recent advances in CNN designs, namely the addition of inception modules and skip connections with residual units. The former component improves multi-scale inference and enriches contextual information, while the latter contributes to the recovery of more detailed information and simplifies optimization. Moreover, an in-depth investigation of the learned features via opening the black box demonstrates that convolutional filters extract discriminative polarimetric features, thus mitigating the limitation of the feature engineering design in PoISAR image processing. Experimental results from full polarimetric RADARSAT-2 imagery illustrate that the proposed network outperforms the conventional random forest classifier and the state-of-the-art FCNs, such as FCN-32s, FCN-16s, FCN-8s, and SegNet, both visually and numerically for wetland mapping.
机译:尽管应用最先进的完全卷积神经网络(CNNS)对于非常高分辨率光学图像的语义分割,但它们的容量尚未彻底检查合成孔径雷达(SAR)图像的分类。斑点噪声的存在,没有有效的特征表达,以及标记的SAR样品的有限可用性阻碍了最先进的CNN的应用于SAR图像的分类。这对映射复杂的土地覆盖生态系统(例如湿地)非常关注,其中陆地覆盖单元的反向散射/光谱相似的签名进一步复杂化了此事。因此,我们提出了一种新的全卷积网络(FCN)架构,其可以在端到端方案中训练,并且专门用于使用偏振SAR(POISAR)图像的湿地复合物的分类。所提出的架构遵循编码器 - 解码器范例,其中输入数据被馈送到一堆卷积滤波器(编码器)中,以提取高级抽象特征和一堆转档卷积滤波器(解码器),以逐渐上升到低分辨率输出到原始输入图像的空间分辨率。所提出的网络也从CNN设计中的最近进步中获益,即添加成立模块并与残余单元跳过连接。前一个组件改善了多尺度推断并丰富了上下文信息,而后者有助于恢复更详细的信息并简化优化。此外,通过打开黑匣子的深入研究通过打开黑匣子演示了卷积滤波器提取歧视性极化特征,从而减轻了诗歌图像处理中的特征工程设计的限制。全偏振雷达拉特-2图像的实验结果表明,所提出的网络优于传统的随机林分类器和最先进的FCN,例如FCN-32S,FCN-16S,FCN-8S和SEGNET,视觉上在数值上进行湿地映射。

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