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Intelligent Object Recognition of Urban Water Bodies Based on Deep Learning for Multi-Source and Multi-Temporal High Spatial Resolution Remote Sensing Imagery

机译:基于深度学习的多源和多时间高空间分辨率遥感图像智能对象识别城市水体

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摘要

High spatial resolution remote sensing image (HSRRSI) data provide rich texture, geometric structure, and spatial distribution information for surface water bodies. The rich detail information provides better representation of the internal components of each object category and better reflects the relationships between adjacent objects. In this context, recognition methods such as geographic object-based image analysis (GEOBIA) have improved significantly. However, these methods focus mainly on bottom-up classifications from visual features to semantic categories, but ignore top-down feedback which can optimize recognition results. In recent years, deep learning has been applied in the field of remote sensing measurements because of its powerful feature extraction ability. A special convolutional neural network (CNN) based region proposal generation and object detection integrated framework has greatly improved the performance of object detection for HSRRSI, which provides a new method for water body recognition based on remote sensing data. This study uses the excellent "self-learning ability" of deep learning to construct a modified structure of the Mask R-CNN method which integrates bottom-up and top-down processes for water recognition. Compared with traditional methods, our method is completely data-driven without prior knowledge, and it can be regarded as a novel technical procedure for water body recognition in practical engineering application. Experimental results indicate that the method produces accurate recognition results for multi-source and multi-temporal water bodies, and can effectively avoid confusion with shadows and other ground features.
机译:高空间分辨率遥感图像(HSRRSI)数据提供丰富的纹理,几何结构和地表水体的空间分布信息。丰富的详细信息提供了每个对象类别的内部组件的更好表示,并且更好地反映了相邻对象之间的关系。在这种情况下,识别方法,例如基于地理对象的图像分析(Geobia)显着提高。但是,这些方法主要关注从视觉功能到语义类别的自下而上的分类,而忽略了可放大识别结果的自上而下的反馈。近年来,由于其强大的特征提取能力,在遥感测量领域应用了深度学习。基于特殊的卷积神经网络(CNN)的区域提议生成和物体检测集成框架大大提高了HSRRSI对象检测的性能,这为基于遥感数据提供了一种新的水体识别方法。本研究采用了深度学习的优异“自学能力”,构建了掩模R-CNN方法的改进结构,该方法集成了自下而上的水识别过程。与传统方法相比,我们的方法完全是数据驱动,无需先验知识,可以将其视为实际工程应用中的水体识别的新技术程序。实验结果表明,该方法为多源和多颞水体产生准确识别结果,可以有效地避免与阴影和其他地面特征的混淆。

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