农业工程学报
農業工程學報
농업공정학보
2014年
6期
272-278
,共7页
章海亮%朱逢乐%刘雪梅%何勇
章海亮%硃逢樂%劉雪梅%何勇
장해량%주봉악%류설매%하용
光谱分析%图像处理%储藏时间%竞争性自适应重加权算法%偏小最二乘支持向量机
光譜分析%圖像處理%儲藏時間%競爭性自適應重加權算法%偏小最二乘支持嚮量機
광보분석%도상처리%저장시간%경쟁성자괄응중가권산법%편소최이승지지향량궤
spectrum analysis%image processing%storage%competitive adaptive reweighted sampling%least squares support vector machines
应用高光谱成像技术(380~1023 nm),基于信息融合实现鱼不同冻藏时间后冻融次数鉴别。首先,提取鱼样品感兴趣区域(region of interest,ROI)光谱并结合竞争性自适应重加权算法(competitive adaptive reweighted sampling,CARS)得到57个变量作为光谱信息,同时对鱼样品做主成分分析(principal component analysis,PCA),提取第一主成分图像信息如中值、协方差、同质性、能量、对比度、相关、熵、逆差距、反差、差异性、二阶距和自相关12个灰度共生矩阵(gray level co-occurrence matrix,GLCM)纹理特征参量,结合灰度共生矩阵纹理特征与光谱特征,作为模型偏小最二乘支持向量机(least squares support vector machines,LS-SVM)的输入建立区分模型,预测集识别率达到98%。结果表明,高光谱成像技术可以用于鱼不同冷冻时间以及冻融次数的鉴别。
應用高光譜成像技術(380~1023 nm),基于信息融閤實現魚不同凍藏時間後凍融次數鑒彆。首先,提取魚樣品感興趣區域(region of interest,ROI)光譜併結閤競爭性自適應重加權算法(competitive adaptive reweighted sampling,CARS)得到57箇變量作為光譜信息,同時對魚樣品做主成分分析(principal component analysis,PCA),提取第一主成分圖像信息如中值、協方差、同質性、能量、對比度、相關、熵、逆差距、反差、差異性、二階距和自相關12箇灰度共生矩陣(gray level co-occurrence matrix,GLCM)紋理特徵參量,結閤灰度共生矩陣紋理特徵與光譜特徵,作為模型偏小最二乘支持嚮量機(least squares support vector machines,LS-SVM)的輸入建立區分模型,預測集識彆率達到98%。結果錶明,高光譜成像技術可以用于魚不同冷凍時間以及凍融次數的鑒彆。
응용고광보성상기술(380~1023 nm),기우신식융합실현어불동동장시간후동융차수감별。수선,제취어양품감흥취구역(region of interest,ROI)광보병결합경쟁성자괄응중가권산법(competitive adaptive reweighted sampling,CARS)득도57개변량작위광보신식,동시대어양품주주성분분석(principal component analysis,PCA),제취제일주성분도상신식여중치、협방차、동질성、능량、대비도、상관、적、역차거、반차、차이성、이계거화자상관12개회도공생구진(gray level co-occurrence matrix,GLCM)문리특정삼량,결합회도공생구진문리특정여광보특정,작위모형편소최이승지지향량궤(least squares support vector machines,LS-SVM)적수입건립구분모형,예측집식별솔체도98%。결과표명,고광보성상기술가이용우어불동냉동시간이급동융차수적감별。
Salmon has always been regarded as a popular gourmet fish that is consumed in large quantities due to its high nutritional value. This study proposes a new rapid and non-destructive method using visible and near infrared (Vis/NIR) hyperspectral imaging for the detection of freshness, storage time, and frozen-thawed times of fillets for turbot flesh. Hyperspectral imaging technology is a rapid, non-destructive, and non-contact technique that integrates spectroscopy and digital imaging to simultaneously obtain spectral and spatial information. Hyperspectral images are made up of hundreds of contiguous wavebands for each spatial position of a sample studied, and each pixel in an image contains the spectrum for that specific position. With hyperspectral imaging, a spectrum for each pixel can be obtained and a gray scale image for each narrow band can be acquired, thereby enabling this system to reflect componential and constructional characteristics, as well as the spatial distributions, of an object. In this study, a hyperspectral imaging system (380-1 023 nm) was developed to perform classification of freshness, storage time, and frozen-thawed times of fish fillets based on a gray level co-occurrence matrix (GLCM) and least squares support vector machines (LS-SVM). Altogether, 160 fish samples from two different storage days and two different frozen-thawed times were collected for hyperspectral image scanning, and mean spectra were extracted from the region of interest (ROI) inside each image. LS-SVM was applied as a calibration method to correlate the spectral and GLCM data for 110 samples in the calibration set. The LS-SVM model was then used to predict the freshness, storage time, and frozen-thawed times for the 50 prediction samples. Spectra of fish samples were extracted from the region of interest (ROI) and a competitive adaptive reweighted sampling (CARS) algorithm was used to select the key variables. Hyperspectral imaging data and principal component analysis (PCA) were performed with the goal of selecting the first principal component (PC) image that could potentially be used for the classification system. Then, 12 texture features (i.e., mean, standard deviation, smoothness, third moment, uniformity, and entropy) based on the statistical moment were extracted from the PC1 image. Finally, 12 gray level co-occurrence matrix (GLCM) variables, combined with 57 characteristic wavelengths for each fish sample, were extracted as the LS-SVM input. Experimental results show that the discriminating rate is 98% in the prediction set. The results indicate that hyperspectral imaging technology combined with chemometrics and image processing allows the classification of freshness, storage time and frozen-thawed times for fish fillets, which builds a foundation for the automatic processing of aquatic products. The fish industry can benefit from adopting hyperspectral imaging technology.