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Investigations of optical geometry and sample positioning in NIBS transmittance for detecting vascular browning in apples

机译:用于检测苹果中血管褐变的尖端透射率中的光学几何形状和样品定位的研究

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Two optical geometries and five sample orientations were investigated in an effort to improve the detection of vascular browning (VAB) in 'Braebunf apples, using near-infrared spectroscopy (NIRS). Classification models were developed by applying partial least squares discriminant analysis on measurements under different conditions. Receiver operating characteristic (ROC) curves were used to measure the discrimination of each case. Monte Carlo (MC) simulations showed the optical geometry was crucial for increasing the light path lengths; longer light path lengths were required to improve the detection of small and spatially distributed defects, such as VAB using a NIRS transmittance system. The five sample orientations studied showed very similar detection rates, although significantly affecting the amount of transmitted light. Overall, it was difficult for NIRS to detect VAB. At the optimal geometry and orientation, 21% of healthy apples were misclassified when the detection threshold was set to detect 80% of defective apples. The simulations indicated that NIRS systems only examined a very limited volume of the sample. New systems, scanning the entire internal volume by spatially examining small discrete volumes, will be required to improve detection efficiencies.
机译:研究了两个光学几何和五个样品取向,以便在使用近红外光谱(NIRS)中改善'Braebuf苹果的血管褐变(VAB)的检测。通过在不同条件下的测量中应用部分最小二乘判别分析来开发分类模型。接收器操作特征(ROC)曲线用于测量每种情况的辨别。 Monte Carlo(MC)模拟显示光学几何形状对于增加光路长度至关重要;需要更长的光路长度来改善使用NIRS透射率系统的诸如VAB的小型和空间分布缺陷的检测。研究的五个样品取向显示出非常相似的检测速率,尽管显着影响透射光的量。总的来说,NIR难以检测VAB。在最佳几何形状和方向上,当检测阈值设置为检测80%的缺陷苹果时,21%的健康苹果被错误分类。模拟表明,NIRS系统仅检查了样品的非常有限。新系统,通过空间检查小离散量扫描整个内部体积,将需要提高检测效率。

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