摘要
高光谱成像(Hyperspectral Image,HSI)技术通过将成像和光谱这两种经典光学传感技术集成到一个系统中,可以同时提供空间和光谱信息。因此,高光谱成像具有快速和无损检测水果的物理形态特征以及内在化学和分子信息的能力,以便进行质量安全分析和检测。总结了近10年来高光谱成像技术在水果质量检测方面的研究进展与应用。描述了高光谱成像系统的基本原理和系统组件,总结了高光谱数据采集、预处理、建模的常用方法,并对用于检测水果外观特征和内在特性例如硬度、可滴定酸度(titratable acidity,TA)、可溶性固形物含量(soluble solids content,SSC)、水分含量(moisture content,MC)的方法进行了综述。同时指出了应用于水果质量检测的高光谱成像技术今后的发展趋势和研究方向,以期为水果产业智能化提供参考.
Fruit has rich nutritional value,which occupies a large proportion in human production and life.It can not only help fruit growers to gain economic value,but also provide all kinds of nutrients needed by people of all ages.According to the World Food and Agriculture Organization(WFAO),the global annual fruit production is about 800 million tons,and fruit consumption is also increasing year by year.With increasing the economic value of the industry,fruit sales also consider how to meet customers’demand for fruit quality.The fruit quality has become the common concern from fruit suppliers and consumers.At present,fruit quality inspection by artificial vision is still widely used,but it is a subjective,time-consuming,laborious,cumbersome and inaccurate method.The commonly used instrument detection means are mainly analytical and chemical methods,like mass spectrometry and high performance liquid chromatography.However,they also have many limitations,for instance,being destructive,time-consuming and unable to process large numbers of samples,and require large amounts of time to prepare samples.Therefore,it is vital and necessary to apply accurate,reliable,efficient and nondestructive alternative methods to evaluate fruit quality and other quality-related attributes.Hyperspectral image(HSI)can provide spatial and spectral information,in the continuous range of wavelengths to produce a series of high resolution image information,and the data with one dimension spectral information and two dimensions spatial information,can constitute the three-dimension hyperspectral cube,and therefore,each pixel of hyperspectral image can save the corresponding position of the spectral information.The obtained spectrum has the function of reflecting the information about this particular pixel.Hyperspectral image can quickly and nondestructively detect the physical and morphological characteristics of fruits as well as the inherent chemical and molecular information,and is becoming a powerful analytical tool for fruit quality detection.This paper reviews the progress and application in hyperspectral imaging for fruit quality evaluation in the last ten years,and the latest progress and application in hyperspectral imaging system for the detection,classification and visualization of fruit quality and safety attributes are introduced.The basic principle and main instrument composition of hyperspectral imaging system are introduced.The methods of hyperspectral data acquisition,preprocessing and modeling are summarized.In addition,the methods for measuring the external and internal characteristics of fruit,such as firmness,titratable acidity(TA),soluble solids content(SSC)and moisture content(MC)in the last ten years are also discussed and tabulated.The fruit real-time monitoring system based on hyperspectral imaging technology is expected to meet the requirements of modern industrial control and sorting system in the near future and provide reference for the intellectualization of fruit industry.The research progress in hyperspectral imaging technology for fruit quality detection is as follows:(1)Fruit scratch detection based on hyperspectral imaging technology mainly focuses on apple,kiwifruit,strawberry,jujube and other fruits,among which apple scratch detection is the most popular.The introduction of hyperspectral imaging technology improves the prediction efficiency of fruit bruising to distinguish bruising from normal fruits and bruising with different depth.However,image processing techniques should be used with caution when using hyperspectral techniques to detect minor abrasions.In addition,the above research is limited to a few varieties of a certain type of fruit,so it is necessary to further study more fruit materials of different varieties.(2)The hyperspectral imaging system has been successfully applied to the chilling injury identification of apples,peaches and jujubes,but there are few literatures on the chilling injury identification of tropical and subtropical fruits that are more susceptible to chilling injury.(3)The spatial resolution technique of hyperspectral imaging has a very wide range of evaluation on fruit hardness,which has been used to measure the hardness of most fruits,such as apples,peaches,bananas,pears,cherries,persimmons,plums,mangoes,blueberries,etc.In addition,the classification of fruit maturity based on hardness also shows great potential,but it needs to be further improved by increasing population size,secondary sampling method and improving measurement conditions.(4)Hyperspectral absorption imaging technology can be used to evaluate the content of soluble solids in apples.However,the current research is limited to the equatorial position of the apple.In order to obtain more reliable and comprehensive prediction results,different algorithms need to be used to deal with more different positions of the apple.Future research will focus on the surface distribution of solid materials based on hyperspectral reflection imaging systems.In addition,in order to improve the calculation speed and modeling accuracy,it is necessary to reduce the high dimension of hyperspectral data.Future research should explore further data mining to reduce redundant hyperspectral data without losing valuable information,extend the feasibility of new algorithms to develop stable predictive models,and improve the accuracy of the models.(5)The hyperspectral imaging technology to predict fruit TA content is rarely used,mainly including oranges and mangoes,and TA is more used to predict fruit ripening time.(6)The accurate prediction of fruit moisture content by hyperspectral imaging technology has not been satisfactory,and it still needs to be further explored.
作者
何馥娴
蒙庆华
唐柳
黄新
卢旭恒
王瑞扬
张克智
李钰
HE Fuxian;MENG Qinghua;TANG Liu;HUANG Xin;LU Xuheng;WANG Ruiyang;ZHANG Ke-zhi;LI Yu(School of Physics and Electronics,Nanning Normal University,Nanning 530029,Guangxi,China;Guangxi Fruit Technical Guidance Station,Nanning 530012,Guangxi,China)
出处
《果树学报》
CAS
CSCD
北大核心
2021年第9期1590-1599,共10页
Journal of Fruit Science
基金
广西科技计划重点研发计划(桂科AB17292082)
广西科技计划项目(桂科AD20238059)
广西百色高新区引导项目(K-YS-ST-2018-01)。
关键词
水果品质
高光谱成像
化学计量学
可溶性固形物含量
光谱定性分析
光谱定量分析
Fruit quality
Hyperspectral imaging
Chemometric
Soluble solids content
Qualitative spectrometric analysis
Quantitative spectrometric analysis