多光谱成像检测香蕉人工催熟的综合实证研究

N. Vetrekar, Raghavendra Ramachandra, K. Raja, R. Gad
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引用次数: 8

摘要

自然,成熟的水果含有必需的营养成分,但随着需求的增加和消费者的利益,人工成熟的水果在最近的市场链中被实践。与自然成熟相比,人工成熟在显著降低水果品质的同时,增加了与健康相关的风险。特别是具有致癌性的电石(CaC2)一直被用作催熟剂。考虑到这一问题的重要性,本文提出了一种多光谱成像方法,在可见光和近红外波长范围内获取空间和光谱8个窄波段来检测人工成熟香蕉。为了介绍本研究,我们引入了新构建的自然成熟和人工成熟香蕉样品的多光谱图像数据集。此外,在5760个香蕉样本的大型数据库上计算了大量的实验结果,平均分类准确率为94.66%,说明了使用多光谱成像检测人工成熟水果的意义。
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Multi-spectral Imaging To Detect Artificial Ripening Of Banana: A Comprehensive Empirical Study
Naturally, ripened fruits contain essential nutrients, but with the increasing demand and consumer benefits, the artificial ripening of fruits is practiced in recent times in the market chain. Compared to natural ripening, artificial ripening significantly reduces the quality of fruits at the same time, increases the health-related risks. Especially, Calcium Carbide (CaC2), which has the carcinogenic properties are consistently being used as a ripening agent. Considering the significance of this problem, in this paper, we present the multi-spectral imaging approach to acquire the spatial and spectral eight narrow spectrum bands across VIS and NIR wavelength range to detect the artificial ripened banana. To present this study, we introduced our newly constructed multi-spectral images dataset for naturally and artificially ripened banana samples. Further, the extensive set of experimental results computed on our large scale database of 5760 banana samples observes the 94.66% average classification accuracy presenting the significance of using multi-spectral imaging to detect artificially ripened fruits.
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