光谱成像技术在葡萄检测上的应用
Application of Spectral Imaging Technology in Grape Detection
DOI: 10.12677/IaE.2022.103020, PDF,   
作者: 傅雪平, 杨小峰, 孙一叶*:温州大学,浙江 温州;董如愿:温州市学生实践学校,浙江 温州
关键词: 光谱成像技术葡萄无损检测Spectral Imaging Techniques Grape Non-Destructive Testing
摘要: 随着现代光电传感技术的快速发展,特别是多/高光谱成像技术,已广泛在农业领域展开研究。由于光谱成像技术同时具有获取对象的光谱信息与图像信息,能同时以光谱反映物质内部品质和图像反映物质外部品质,以及具有无污染、快速、简便等特点,是一项非常可靠的农产品无损检测技术。本文以多/高光谱成像技术在葡萄检测上的应用进行概述及对未来的展望。
Abstract: With the rapid development of modern photo-electric sensing technology, especially the mul-ti/hyper-spectral imaging technology, it has been widely studied in the agricultural field. Because spectral imaging technology can simultaneously obtain the spectral and image information of object, it can reflect the internal and external quality of object by spectroscopic and image components at the same time. This technology characterized with none pollution, quick and simple is regarded as a reliable nondestructive determination technology for the development of modern agricultural products. In this paper, the application of multi/hyper-spectral imaging technology in grape detection is summarized and the prospect for the future is presented.
文章引用:傅雪平, 董如愿, 杨小峰, 孙一叶. 光谱成像技术在葡萄检测上的应用[J]. 仪器与设备, 2022, 10(3): 155-160. https://doi.org/10.12677/IaE.2022.103020

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