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Smart Morphological Change Sensing System using an Automatic Non-destructive Method for Soybean Flower Bud Differentiation

机译:用自动非破坏性方法对大豆花芽分化的自动非破坏性方法进行智能形态变化传感系统

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Most of the research on the flower bud differentiation is based on manual measurement. In this paper, a smart morphological change monitoring system using an automatic non-destructive method for soybean flower bud differentiation is presented. A non-destructive measurement system using multiple cameras to measure the morphological characteristics of soybean flower buds was developed and constructed. An automatic threshold segmentation algorithm (OTSU) was used to segment a flower bud image to obtain a binary image, and the morphological parameters of the flower bud characteristics were obtained. The results demonstrated that the optimal reference plate size in the algorithm was 220×230 pixels, and which can adapt to 60h time matching and the NCC was higher. Compared with the manually measured results, the coefficients of the flower bud area and perimeter obtained by our proposed monitoring system were 0.9611 and 0.8983, respectively. In addition, the relative errors of these values were less than 5.7% and 4.4%, respectively, while the relative accuracy of the measurement system could reach 0.01 mm. It was proved that the real-time monitoring method for flower bud differentiation greatly eases the measuring workload and overcomes the limitations of manual measurements.
机译:大多数关于花芽分化的研究基于手动测量。本文介绍了一种智能形态变化监测系统,使用自动非破坏性方法进行大豆花芽分化。开发并构建了使用多个摄像机来测量大豆花芽形态特征的非破坏性测量系统。使用自动阈值分割算法(OTSU)将花芽图像分段以获得二进制图像,并获得了花芽特性的形态参数。结果表明,算法中最佳参考板尺寸为220×230像素,可以适应60h时间匹配,NCC更高。与手动测量结果相比,我们所提出的监测系统获得的花蕾面积和周长的系数分别为0.9611和0.8983。此外,这些值的相对误差分别小于5.7%和4.4%,而测量系统的相对精度可以达到0.01mm。事实证明,花芽分化的实时监测方法极大地缓解了测量工作量并克服了手动测量的局限性。

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