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首页> 外文期刊>Computers and Electronics in Agriculture >SeeFruits: Design and evaluation of a cloud-based ultra-portable NIRS system for sweet cherry quality detection
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SeeFruits: Design and evaluation of a cloud-based ultra-portable NIRS system for sweet cherry quality detection

机译:SeeFruits:用于甜樱桃质量检测的基于云的超便携式NIRS系统的设计和评估

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Recent researches have shown that spectroscopy is a valid non-destructive technique for fruit quality detection. Yet the high cost, large volume, and complicated operation of the traditional spectral system makes it hard to be adapted to real field applications. In this paper, a low-cost, cloud-based portable Near Infrared (NIR) system called ‘SeeFruits’ was designed for fruit quality detection. The system was developed based on two integrated modules, DLP? NIRscan Nano EVM and ESP12-F. Main structures of hardware and software as well as the operation and workflow of the system were described in detail. A total of 240 sweet cherries were chosen as our fruit samples in order to evaluate the performance of ‘SeeFruits’. By targeting maturity level as a qualitative index and total soluble solids content as a quantitative index, we compared the results between ‘SeeFruits’ and a benchtop NIR-hyperspectral imaging system. The ‘SeeFruits’ system achieved F1-score of 0.89 on qualitative task and R2of 0.83 on quantitative task. Overall, with the features of ultra-portability, cloud computing and Internet of things feasibility, ‘SeeFruits’ can provide a fast, flexible and friendly application for sweet cherry quality detection to nonprofessionals with satisfactory accuracy.
机译:最近的研究表明,光谱学是一种用于果实质量检测的有效的非破坏性技术。然而,传统光谱系统的高成本,大容量和复杂操作使其难以适应真实的现场应用。在本文中,设计了一种低成本,基于云的便携式近红外线(NIR)系统,称为“Seefruit”用于果实质量检测。该系统是基于两个集成模块开发的DLP? NIRSCAN NANO EVM和ESP12-F。详细描述了硬件和软件的主要结构以及系统的操作和工作流程。选择了240个甜樱桃作为我们的水果样品,以评估'Seefruit'的性能。通过将成熟度水平靶向作为定性指数和总可溶性固体含量作为定量指标,我们将结果与“塞特林”和基台NIR-Hyperspectral成像系统之间的结果进行了比较。在定量任务上,“Seefruits”系统实现了0.89的F1分数0.89。总体而言,随着超便携性,云计算和可行性互联网的特点,'Seefring'可以为甜美的樱桃品质检测提供快速,灵活,友好的应用,以满足令人满意的精度。

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