一种评估肉类品质的多光谱成像系统

W. G. C. Bandara, G. Prabhath, D. M. K. V. B. Dissanayake, H. Herath, G. Godaliyadda, M. Ekanayake, S. S. P. Vithana, S. Demini, T. Madhujith
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引用次数: 8

摘要

多光谱成像利用多个离散光谱带的反射率信息,根据使用标准参数定义的质量对样品进行分类。与普通RGB图像相比,多光谱图像具有丰富的信息。因此,多光谱图像可以比RGB图像更准确地对样本进行分类。本文讨论了一种可用于肉类品质评估的多光谱成像系统的设计。该系统由6个标称波长在405 nm到740 nm之间的led组成。led发出的光通过一个积分半球到达放置在黑暗房间里的肉样品。每次点亮一个led,每个闪光灯分别用智能手机相机捕捉肉类样本的图像。最终,将肉类样品在特定时刻拍摄的所有图像进行整合,形成多光谱图像。储存在$4 \circ \ mathm {c}$的肉类样品在预定的时间间隔内使用设计的系统进行为期四天的成像。一旦数据采集完成,多光谱图像的所有像素被表示为高维空间中的点,然后使用主成分分析(PCA)将其降低到较低维空间。结果表明,在不同时间点获得的肉类样本图像在低维空间中聚类到不同的区域。实验采用鸡肉样品进行。这证明了利用多光谱成像作为一种非侵入性和非破坏性的方法,根据一定的质量参数来评估肉类品质的可行性。该系统使用了现成的电子元件和普通智能手机,从而使该系统具有成本效益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Multispectral Imaging System to Assess Meat Quality
Multispectral imaging uses reflectance information of a number of discrete spectral bands to classify samples according to their quality defined using standard parameters. A multispectral image is rich in information compared to a normal RGB image. Therefore, a multispectral image can be used to classify samples more accurately than an RGB image. This paper discusses a design of a multispectral imaging system that can be used to assess the quality of meat. The system is comprised of six LEDs with nominal wavelengths between 405 nm and 740 nm. The light emitted from LEDs reach the meat sample placed inside a dark chamber through an integrating hemisphere. LEDs are lighted one at a time and images of the meat sample are captured for each flash separately using a smartphone camera. Eventually, all the images of the meat sample, taken at a specific time instance were integrated to form the multispectral image. The meat samples stored at $4 \circ \mathrm {c}$ were imaged up to four days at predetermined time intervals using the designed system. Once the data acquisition was completed, all the pixels of the multispectral image were represented as points in high dimensional space, which was then reduced to a lower dimensional space using Principal Component Analysis (PCA). It was observed that images of meat sample obtained at different time instances clustered into different regions in the lower dimensional space. The experiment was performed with chicken meat samples. This proves the viability of using multispectral imaging as a non-invasive and non-destructive method of assessing meat quality according to certain quality parameters. Off-the-shelf electronic components and a regular smartphone were used to build the system, thus making the system cost-effective.
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