Portable in vivo measurement of apple sugar content based on mobile phone

Fanli Lin, Yishu Li
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Abstract

With the development of science and technology, people's living standards continue to improve. Sugar content has been widely studied as an important index to measure fruit quality, but at present, most sugar content detection needs expensive equipment or accessories, which is difficult to enter daily life. In this paper, we propose a convenient scheme for detecting apple sugar degree based on multispectral and machine learning. With the mobile phone screen as the main light source, the front camera captures Apple pictures, and changes the color of the mobile phone screen to change the wavelength of the light source. By photographing different surfaces of apples under different wavelengths of visible light, obtain pictures of the same apple with different spectra, sort out the data, make the data set and train the machine learning network model, deploy the trained network into the app, and then predict the sugar value of apples, so as to achieve the purpose of rapid and nondestructive detection of apple sugar.
基于手机的苹果含糖量的便携式体内测量
随着科学技术的发展,人们的生活水平不断提高。糖含量作为衡量水果品质的重要指标被广泛研究,但目前大多数糖含量检测需要昂贵的设备或配件,难以进入日常生活。本文提出了一种基于多光谱和机器学习的苹果糖度检测方法。以手机屏幕为主要光源,前置摄像头捕捉苹果图片,通过改变手机屏幕颜色来改变光源的波长。通过在不同波长的可见光下拍摄苹果的不同表面,获得同一苹果不同光谱的图片,对数据进行整理,制作数据集并训练机器学习网络模型,将训练好的网络部署到app中,进而预测苹果的含糖量,从而达到快速无损检测苹果含糖量的目的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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