农业工程学报
農業工程學報
농업공정학보
2015年
11期
300-307
,共8页
图像处理%模型%无损检测%沙金杏%成熟度%高光谱成像技术%极限学习机
圖像處理%模型%無損檢測%沙金杏%成熟度%高光譜成像技術%極限學習機
도상처리%모형%무손검측%사금행%성숙도%고광보성상기술%겁한학습궤
imaging processing%models%nondestructive examination%Shajin apricot%ripeness%hyperspectral imaging%extreme learning machine
为了实现对不同成熟度沙金杏进行快速、准确识别的目的,该研究利用高光谱成像技术(400~1000 nm)对沙金杏的成熟度进行了判别研究,利用高光谱成像系统分别采集了处于4种不同成熟阶段(七成熟、八成熟、九成熟和十成熟)的沙金杏共480个样本的高光谱数据。首先,对不同成熟阶段所有样本的可溶性固形物含量值进行测定和单因素方差分析,结果表明,可溶性固形物与成熟度之间存在相关性,其相关系数为0.9386,可用该指标对沙金杏的成熟度进行划分。然后,对光谱数据利用偏最小二乘回归(partial least squares regression,PLSR)模型提取得到9个特征波长(434、528、559、595、652、678、692、728、954 nm),对图像数据利用灰度共生矩阵(gray level co-occurrence matrix,GLCM)提取到6项图像纹理指标(均值、对比度、相关性、能量、同质性和熵),并对图像数据采用RGB模型提取到6项图像颜色指标(R、G、B 分量图像的平均值和标准差)。将这三类指标进行最优组合并分别建立关于沙金杏成熟度判别的极限学习机(extreme learning machine,ELM)模型。结果表明:使用特征波长与颜色特征融合值建立的ELM模型的判别正确率最高,达到93.33%。该研究为沙金杏的成熟度在线无损检测提供了理论参考。
為瞭實現對不同成熟度沙金杏進行快速、準確識彆的目的,該研究利用高光譜成像技術(400~1000 nm)對沙金杏的成熟度進行瞭判彆研究,利用高光譜成像繫統分彆採集瞭處于4種不同成熟階段(七成熟、八成熟、九成熟和十成熟)的沙金杏共480箇樣本的高光譜數據。首先,對不同成熟階段所有樣本的可溶性固形物含量值進行測定和單因素方差分析,結果錶明,可溶性固形物與成熟度之間存在相關性,其相關繫數為0.9386,可用該指標對沙金杏的成熟度進行劃分。然後,對光譜數據利用偏最小二乘迴歸(partial least squares regression,PLSR)模型提取得到9箇特徵波長(434、528、559、595、652、678、692、728、954 nm),對圖像數據利用灰度共生矩陣(gray level co-occurrence matrix,GLCM)提取到6項圖像紋理指標(均值、對比度、相關性、能量、同質性和熵),併對圖像數據採用RGB模型提取到6項圖像顏色指標(R、G、B 分量圖像的平均值和標準差)。將這三類指標進行最優組閤併分彆建立關于沙金杏成熟度判彆的極限學習機(extreme learning machine,ELM)模型。結果錶明:使用特徵波長與顏色特徵融閤值建立的ELM模型的判彆正確率最高,達到93.33%。該研究為沙金杏的成熟度在線無損檢測提供瞭理論參攷。
위료실현대불동성숙도사금행진행쾌속、준학식별적목적,해연구이용고광보성상기술(400~1000 nm)대사금행적성숙도진행료판별연구,이용고광보성상계통분별채집료처우4충불동성숙계단(칠성숙、팔성숙、구성숙화십성숙)적사금행공480개양본적고광보수거。수선,대불동성숙계단소유양본적가용성고형물함량치진행측정화단인소방차분석,결과표명,가용성고형물여성숙도지간존재상관성,기상관계수위0.9386,가용해지표대사금행적성숙도진행화분。연후,대광보수거이용편최소이승회귀(partial least squares regression,PLSR)모형제취득도9개특정파장(434、528、559、595、652、678、692、728、954 nm),대도상수거이용회도공생구진(gray level co-occurrence matrix,GLCM)제취도6항도상문리지표(균치、대비도、상관성、능량、동질성화적),병대도상수거채용RGB모형제취도6항도상안색지표(R、G、B 분량도상적평균치화표준차)。장저삼류지표진행최우조합병분별건립관우사금행성숙도판별적겁한학습궤(extreme learning machine,ELM)모형。결과표명:사용특정파장여안색특정융합치건립적ELM모형적판별정학솔최고,체도93.33%。해연구위사금행적성숙도재선무손검측제공료이론삼고。
Nondestructive detection of fruit ripeness is crucial for improving fruit’s shelf life and industry production. Hyperspectral imaging is an emerging technique that integrates conventional imaging and spectroscopy to acquire both spatial and spectral information from a sample. It takes the advantages of the conventional RGB, near-infrared spectroscopy and multi-spectral imaging. In this work, hyperspectral imaging technology intended to determine a classifier that could be used for nondestructive classification for the ripeness of Shajin apricot. There were 480 Shajin apricot samples to be investigated, which were from an apricot planting garden in Xiaobai Village, Taigu County, and the samples were classified into 4 classes: unripe, mid-ripe, ripe and over-ripe according to the days after harvesting. Hyperspectral imaging technology with the band range of 400-1000 nm was used to evaluate nondestructively the ripeness of the Shajin apricot. The 480 RGB images were acquired for the apricot samples with 4 different ripeness classes (120 for each class). After acquiring hyperspectral images of Shajin apricot, the spectral data were extracted from the region of interests (ROIs). Using Kennard-Stone algorithm, all kinds of samples were randomly divided into training set (360) and test set (120) according to the proportion of 3:1. In this work, the soluble solid content (SSC) was chosen as an evaluation index of maturity for Shajin apricot. First of all, one-way analysis of variance (ANOVA) was used to evaluate the SSC of 480 samples of intact Shajin apricots at different ripeness stages. The results indicated that SSC presented significant differences among the different ripeness classes and had a increasing tendency along with the development of ripeness, which demonstrated that there was a high correlation between maturity and SSC with the correlation coefficient of 0.9386. Subsequently, based on the calculation of partial least squares regression (PLSR), 9 wavelengths at 434, 528, 559, 595, 652, 678, 692, 728 and 954 nm were selected as the optimal sensitive wavelengths (SWs), 6 statistical textural parametersof hyperspectral images including mean, contrast, correlation, energy, homogeneity and entropy were extracted by gray level co-occurrence matrix (GLCM) as the textural feature variables, and 6 statistical color indicators of hyperspectral images including mean values and standard deviations of R, G and B component image were extracted by RGB model as the color feature variables for the purposes of ripeness classification. Moreover, the ability of hyperspectral imaging technique to classify Shajin apricot based on ripeness stage was tested using the extreme learning machine (ELM) models. The ELM ripeness classification models were built based on the extracted SWs, texture, color, combination of SWs and texture, combination of SWs and color, combination of texture and color, combination of SWs, texture and color features, respectively. The results showed the correct discrimination rate was the highest for the prediction samples based on SWs and color features, and it reached 93.33%. The research reveals that the hyperspectral imaging technique together with suitable analysis model is a promising tool for rapid estimation of quality attribute and ripeness classification for Shajin apricot, which can provide a theoretical reference and basis for designing classification system of fruits in further work.