首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >END-TO-END BUILDING CHANGE DETECTION MODEL IN AERIAL IMAGERY AND DIGITAL SURFACE MODEL BASED ON NEURAL NETWORKS
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END-TO-END BUILDING CHANGE DETECTION MODEL IN AERIAL IMAGERY AND DIGITAL SURFACE MODEL BASED ON NEURAL NETWORKS

机译:基于神经网络的空中图像和数字表面模型的端到端建筑物改变检测模型

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Multi-temporal building change detection is one of the most essential major issues of photogrammetry and remote sensing at current stage, which is of great significance for wide applications as offering real estate indicators as well as monitoring urban environment. Although current photogrammetry methodologies could be applicated to 2-D remote sensing imagery for rectification with sensor parameters, multi-temporal aerial or satellite imagery is not adequate to offer spectral and textual features for building change detection. Alongside recent development of Dense Image Matching (DIM) technology, the acquisition of 3-D point cloud and Digital Surface Model (DSM) has been generally realized, which could be combined with imagery, making building change detection more effective with greater spatial structure and texture information. Over the past years, scholars have put forward vast change detection techniques including traditional and model-based solutions. Nevertheless, existing appropriate methodology combined with Neural Networks (NN) for accurate building change detection with multi-temporal imagery and DSM remains to be of great research focus currently due to the inevitable limitations and omissions of existing NN-based methods, which is of great research prospect. This study proposed a novel end-to-end model framework based on deep learning for pixel-level building change detection from high-spatial resolution aerial ortho imagery and corresponding DSM sharing same resolution, which is from the dataset of Tokyo whole area.
机译:多时间建筑变革检测是当前舞台摄影测量和遥感的最重要的主要问题之一,对于提供房地产指标以及监测城市环境的广泛应用具有重要意义。尽管目前的摄影测量方法可以应用于2-D遥感图像,但是用传感器参数进行整流,多时间空中空中或卫星图像不足以提供用于构建变化检测的光谱和文本特征。沿着最近的致密图像匹配(DIM)技术的开发,一般实现了3-D点云和数字表面模型(DSM)的采集,可以与图像相结合,使建筑变化检测更有效地具有更大的空间结构和更大的空间结构纹理信息。在过去几年中,学者提出了巨大的变化检测技术,包括传统和基于模型的解决方案。然而,现有的适当方法与神经网络(NN)结合使用多时间图像和DSM的准确构建变化检测,目前是由于现有的基于NN的方法的必然局限性和遗漏,这是伟大的研究前景。本研究提出了一种基于深度学习的新型端到端模型框架,用于来自高空间分辨率的高空间分辨率的像素级建筑物变化检测和相应的DSM共享相同分辨率,这是来自东京整个区域的数据集。

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