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CCD-Based Skinning Injury Recognition on Potato Tubers ( Solanum tuberosum L.): A Comparison between Visible and Biospeckle Imaging

机译:基于CCD的马铃薯块茎(Solanum tuberosum L.)的皮肤损伤识别:可见与生物斑点成像的比较

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Skinning injury on potato tubers is a kind of superficial wound that is generally inflicted by mechanical forces during harvest and postharvest handling operations. Though skinning injury is pervasive and obstructive, its detection is very limited. This study attempted to identify injured skin using two CCD (Charge Coupled Device) sensor-based machine vision technologies, i.e., visible imaging and biospeckle imaging. The identification of skinning injury was realized via exploiting features extracted from varied ROIs (Region of Interests). The features extracted from visible images were pixel-wise color and texture features, while region-wise BA (Biospeckle Activity) was calculated from biospeckle imaging. In addition, the calculation of BA using varied numbers of speckle patterns were compared. Finally, extracted features were implemented into classifiers of LS-SVM (Least Square Support Vector Machine) and BLR (Binary Logistic Regression), respectively. Results showed that color features performed better than texture features in classifying sound skin and injured skin, especially for injured skin stored no less than 1 day, with the average classification accuracy of 90%. Image capturing and processing efficiency can be speeded up in biospeckle imaging, with captured 512 frames reduced to 125 frames. Classification results obtained based on the feature of BA were acceptable for early skinning injury stored within 1 day, with the accuracy of 88.10%. It is concluded that skinning injury can be recognized by visible and biospeckle imaging during different stages. Visible imaging has the aptitude in recognizing stale skinning injury, while fresh injury can be discriminated by biospeckle imaging.
机译:马铃薯块茎的剥皮损伤是一种表层伤口,通常在收获和收获后处理操作期间由机械力造成。尽管皮肤损伤无处不在且阻塞,但其检测非常有限。这项研究尝试使用两种基于CCD(电荷耦合器件)传感器的机器视觉技术来识别受伤的皮肤,即可见光成像和生物斑点成像。皮肤伤害的识别是通过利用从各种ROI(感兴趣区域)提取的特征来实现的。从可见图像中提取的特征是逐像素的颜色和纹理特征,而区域散列的BA(生物散斑活性)是根据生物散斑成像计算得出的。此外,比较了使用不同数量斑点图样计算的BA。最后,将提取的特征分别实现到LS-SVM(最小二乘支持向量机)和BLR(二进制Logistic回归)的分类器中。结果表明,在对声音皮肤和受伤的皮肤进行分类时,颜色特征的表现优于纹理特征,特别是对于不少于1天存储的受伤皮肤,平均分类精度为90%。在生物斑点成像中,可以将图像捕获和处理效率提高,将捕获的512帧减少到125帧。根据BA的特征获得的分类结果对于1天之内存储的早期皮肤损伤是可以接受的,准确性为88.10%。结论是,在不同阶段,可见光和生物斑点成像可以识别出皮肤损伤。可见成像具有识别陈旧性皮肤损伤的能力,而新鲜损伤可以通过生物斑点成像来区分。

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