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首页> 外文期刊>Acta Horticulturae >Postharvest assessment of undesirable fibrous tissue (choking hazard) in fresh processing carrots using Vis/NIR hyperspectral images
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Postharvest assessment of undesirable fibrous tissue (choking hazard) in fresh processing carrots using Vis/NIR hyperspectral images

机译:使用Vis / NIR高光谱图像对新鲜加工的胡萝卜中有害的纤维组织(窒息危险)进行收获后评估

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This research was designed to develop and test an automatic image analysis algorithm to detect the presence (pre-dicing) of undesirable fibrous carrot (Daucus carota L.) tissue. Fibrous carrot dices are difficult to detect, and are highly problematic when found in ready-to-eat infant food, where they might represent a choking hazard (safety concern). A Visible/Near-InfraRed (Vis/NIR) hyperspectral imaging (321-1088 nra) system was used to obtain a set of 520-images per sample, from 1233 sections (samples). Carrots were collected during the 2013 and 2014 harvesting seasons. Classification accuracy per sample was evaluated by comparing the classes obtained using Vis/NIR hyperspectral images against their undesirable fibrous tissue class, based on the industry-simulated invasive quality assessment (% of fiber). Class-0 represents fibrous-free samples, and class-1 denotes samples containing fibrous tissue. After Vis/NIR image preprocessing, cropping, selection, and segmentation, 3135 grayscale intensity and textural features were extracted per sample from 15 selected Vis/NIR images. A 4-fold cross-validation Neural-Network-Classifier with a performance accuracy of 86.4±2.1% was developed using 140 relevant features, which were selected using a sequential forward selection algorithm with the Fisher discriminant objective function. Findings showed that this methodology is an objective, accurate, and reliable tool to determine the presence of undesirable fibrous tissue in processing carrots, and would beapplicable to an automated noninvasive inline sorting system.
机译:这项研究旨在开发和测试一种自动图像分析算法,以检测不良纤维胡萝卜(Daucus carota L.)组织的存在(预先切块)。纤维胡萝卜丁很难检测,当在即食婴儿食品中发现时可能存在窒息危险(安全问题),因此存在很大问题。使用可见/近红外(Vis / NIR)高光谱成像(321-1088 nra)系统从1233个切片(样品)中每个样品获取520张图像。在2013年和2014年的收获季节收集了胡萝卜。基于行业模拟的侵入质量评估(纤维百分比),通过将使用Vis / NIR高光谱图像获得的类别与其不良的纤维组织类别进行比较,评估每个样品的分类准确性。 0级代表无纤维样品,而1级代表含有纤维组织的样品。在对Vis / NIR图像进行预处理,裁剪,选择和分割后,从15个选定的Vis / NIR图像中每个样本提取了3135灰度强度和纹理特征。使用140个相关特征开发了性能精度为86.4±2.1%的4倍交叉验证神经网络分类器,这些特征是使用具有Fisher判别目标函数的顺序正向选择算法进行选择的。研究结果表明,该方法是一种客观,准确和可靠的工具,可以确定加工胡萝卜中不希望有的纤维组织的存在,并且可应用于自动化的非侵入式在线分拣系统。

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