基于光谱特征和语义计算的无人机多光谱航拍图像检索

Jinmika Wijitdechakul, S. Sasaki, Y. Kiyoki, C. Koopipat
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引用次数: 1

摘要

本研究提出了基于光谱特征和语义计算的多光谱图像检索方法,这是目前研究较少关注的问题。主要贡献在于提高全球环境分析系统的有效性和优势,实现语义关联搜索和分析。在这项工作中,我们研究了在多光谱语义图像空间中计算光谱特征的多光谱图像检索。多光谱语义图像空间设想实现对地球表面物质(材料)的判读,并提供与人类判读水平相当的分析结果。我们的基本方法是利用语义计算来衡量多光谱图像与用户上下文的有意义关键词之间的相似度。研究结果表明,该方法可以从多光谱图像中提取光谱特征,可用于多光谱图像检索。在本研究中,根据用户的查询上下文,使用多光谱图像作为图像查询。此外,根据以往农业监测系统和语义解释模型的研究成果,基于多光谱图像的三种上下文查询,对基于无人机的多光谱航空图像检索方法的性能进行了光谱特征和语义计算的度量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
UAV-based multispectral aerial image retrieval using spectral feature and semantic computing
This research proposes the multispectral image retrieval method by using spectral feature and semantic computing which is not many studies have focused. The main contributions are to enhance the effectiveness and advantageous of global environmental analysis system and realize semantic associative search and analysis. In this work, we study multispectral image retrieval using spectral feature computed in multispectral semantic-image space. The multispectral semantic-image space is supposing to realize the interpretation of substance (materials) on earth surface which can be provided the analyzed results as human-level interpretation. Our essential approach is utilizing the semantic computing to measure the similarity between multispectral image and the meaningful keywords which according to the user's contexts. Our research results found that this method possible to acquire the spectral feature from the multispectral image and could be used in multispectral image retrieval. In this study, a multispectral image is used as the image query according to user's query contexts. Moreover, the method performance of UAV-based multispectral aerial image retrieval using spectral feature and semantic computing is measured based on the queries with three contexts of multispectral image which is indicated by previous study on agricultural monitoring system and semantic interpretation model.
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