基于SIFT特征提取的多光谱三维模型

Q4 Social Sciences International Journal of Geoinformatics Pub Date : 2023-06-10 DOI:10.52939/ijg.v19i5.2649
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引用次数: 0

摘要

近年来,多光谱图像不仅可以通过卫星传感器捕获,而且可以通过相机捕获。因此,使用摄影测量方法,可以操纵多光谱图像来生成三维模型。多光谱图像的主要问题是图像特征的低可见性。此外,多光谱图像的结合点提取仍存在疑问。因此,本文研究了SIFT算法从多光谱图像中提取特征点并从提取的特征点生成点云的能力。本研究选择了一个坑洞作为研究对象。利用Parrot Sequoia相机的红色、红边、绿色和近红外波段生成凹坑模型。所有捕获的图像采用多视点立体(MVS)技术的运动结构(SfM)处理。本文记录了坑穴模型的特征点提取结果和分析,并对其进行了讨论。
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Multispectral’s Three-Dimensional Model Based on SIFT Feature Extraction
Recently, multispectral images can be captured not only from satellite sensors but also from cameras. Hence, using the photogrammetric approach, multispectral images can be manipulated to generate a three-dimensional model. The main issues regarding multispectral images were the low visibilities of the image features. Moreover, the tie point extractions on multispectral images were still in doubt. Hence, this paper examines the capabilities of the SIFT algorithm to extract feature points from multispectral images and generate the point cloud from the extracted feature points. This study chose a pothole as the subject of this research. The red, red edge, green, and near-infrared bands from the Parrot Sequoia camera were used to generate the pothole model. All captured images were processed using structure-from-motion (SfM) with Multi-View Stereo (MVS) technique. This study records the feature points extraction result and analysis of the pothole model and discuss it in this paper.
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来源期刊
International Journal of Geoinformatics
International Journal of Geoinformatics Social Sciences-Geography, Planning and Development
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