Weinstock B André, Janni James, Hagen Lisa, Wright Steven
Pioneer Hi-Bred International Inc., A DuPont Company, Crop Genetics Research and Development, Johnston, Iowa 50131-0552, USA.
Appl Spectrosc. 2006 Jan;60(1):9-16. doi: 10.1366/000370206775382631.
Due to their heterogeneous structure and variability in form, individual corn (Zea mays L.) kernels present an optical challenge for nondestructive spectroscopic determination of their chemical composition. Increasing demand in agricultural science for knowledge of specific traits in kernels is driving the need to find high-throughput methods of examination. In this study macroscopic near-infrared (NIR) reflectance hyperspectral imaging was used to measure small sets of kernels in the spectroscopic range of 950 nm to 1700 nm. Image analysis and principal component analysis (PCA) were used to determine kernel germ from endosperm regions as well as to define individual kernels as objects out of sets of kernels. Partial least squares (PLS) analysis was used to predict oil or oleic acid concentrations derived from germ or full kernel spectra. The relative precision of the minimum cross-validated root mean square error (RMSECV) and root mean square error of prediction (RMSEP) for oil and oleic acid concentration were compared for two sets of two hundred kernels. An optimal statistical prediction method was determined using a limited set of wavelengths selected by a genetic algorithm. Given these parameters, oil content was predicted with an RMSEP of 0.7% and oleic acid content with an RMSEP of 14% for a given corn kernel.
由于其结构的异质性和形态的变异性,单个玉米(Zea mays L.)籽粒在对其化学成分进行无损光谱测定时面临光学挑战。农业科学对籽粒特定性状知识的需求不断增加,促使人们需要找到高通量的检测方法。在本研究中,宏观近红外(NIR)反射高光谱成像被用于测量950纳米至1700纳米光谱范围内的少量籽粒。图像分析和主成分分析(PCA)被用于从胚乳区域确定籽粒胚芽,并将单个籽粒定义为籽粒集合中的对象。偏最小二乘法(PLS)分析被用于预测从胚芽或完整籽粒光谱得出的油或油酸浓度。比较了两组各200粒籽粒的油和油酸浓度的最小交叉验证均方根误差(RMSECV)和预测均方根误差(RMSEP)的相对精度。使用遗传算法选择的有限波长集确定了一种最优统计预测方法。在这些参数下,对于给定的玉米粒,预测油含量的RMSEP为0.7%,油酸含量的RMSEP为14%。