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Hyperspectral/Multispectral Reflectance Imaging Combining with Watershed Segmentation Algorithm for Detection of Early Bruises on Apples with Different Peel Colors

机译:与流域分割算法相结合的高光谱/多光谱反射率成像,以便在不同剥离颜色苹果早期瘀伤检测

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Bruise damage on apples is one of the most key internal quality factors, which needs to be detected in postharvest quality sorting processes. However, detection of bruises is always a challenging issue. This study proposes a useful strategy for detection of early bruises on apples with different peel colors based on Vis-NIR hyperspectral/multispectral reflectance imaging combining with watershed segmentation algorithm, which has never been tried in the past. Three spectral regions, namely visible and near-infrared (Vis-NIR) (450-685nm and 750-1000nm), visible (Vis) (450-685nm), and near-infrared (NIR) (750-1000nm), were selected for principal component analysis (PCA) to identify the optimal region and principal component (PC) score image, respectively. The third PC score image (PC3) obtained by using PCA of the NIR spectra was found to be the most useful for detection of bruise damage on apples. Three important wavelength images at 786, 915, and 995nm were further identified from data dimension reduction by weighting coefficient analysis of all sub-images of PC3 score images. Finally, bruise detection based on both the second PC score image obtained from multispectral PCA and the proposed improved watershed segmentation algorithm was performed to classify all 210 samples with three kinds of peel color including green peel, middle-color peel (green-red), and red peel (dark red); a 99.5% overall detection accuracy (99.2% for 120 bruised samples and 100% for 90 sound samples) was obtained, indicating feasibility of this study. The finding is significant because the study of apples with different surface colors was closer to the actual production of fruit sorting.
机译:苹果的瘀伤是最关键的内部质量因子之一,需要在采后质量分拣过程中检测。然而,瘀伤的检测始终是一个具有挑战性的问题。本研究提出了一种基于与流域分割算法的VIS-NIR高光谱/多光谱反射成像的不同剥离的苹果对苹果的早期瘀衡的有用策略,从未尝试过过去。选择三个光谱区,即可见和近红外(Vis-Nir)(450-685nm和750-1000nm),可见(Vis)(450-685nm)和近红外(nir)(nir)(750-1000nm)对于主成分分析(PCA),分别识别最佳区域和主成分(PC)得分图像。发现通过使用NIR光谱的PCA获得的第三个PC分数图像(PC3)是对苹果对瘀伤损坏的最有用的。通过PC3得分图像的所有子图像的加权系数分析,进一步识别出786,915和995nm处的三个重要波长图像。最后,基于从多光谱PCA获得的第二PC分数图像和所提出的改进的流域分割算法进行瘀伤检测,以将所有210个样本分类为三种剥离,包括绿皮,中色剥离(绿色红色),和红皮(深红色);获得了99.5%的总检测精度(90.2%对于120个瘀伤样品和90个声音样品的100%),表明该研究的可行性。该发现是显着的,因为苹果具有不同表面色的研究更接近水果分类的实际生产。

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