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A 3D white referencing method for soybean leaves based on fusion of hyperspectral images and 3D point clouds

机译:基于高光谱图像和3D点云融合的大豆叶的3D白色参考方法

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摘要

In recent years, plant phenotyping technologies have been widely applied to evaluate complex plant traits such as morphology, physiology, ecology, biochemistry, tolerance, growth and yield. Hyperspectral/multispectral cameras, artificial lighting sources, mechanisms and computers together capture images of different species of plants. Due to the non-uniform intensity of lighting sources in different wavelengths, raw images need to be calibrated using white references. Flat white panels are typically scanned as a white reference. However, geometrical factors such as leaf tilt angles cannot be calibrated by flat white references. In this publication, the effectiveness of using angled white reference to calibrate corresponding raw images was first demonstrated. Furthermore, a 3D white referencing library integrating different angles and spatial positions in the system of a hyperspectral camera and a Kinect V2 depth sensor was created. Thus, a pixel on the leaf surface can be calibrated by a point with the nearest tilt angle and spatial position in the 3D referencing library. The validating samples for this referencing library were soybean leaves grown in a greenhouse. The results showed that the reflectance spectra after 3D calibration were closer to the standard calibration (flat leaf calibrated by flat white reference) than the conventional flat white referencing calibration. Furthermore, the pixel-level normalized difference vegetation index (NDVI) distribution over the soybean leaf surface after 3D calibration was also closer to the standard calibration. This proposed 3D white referencing method had the potential to improve calibration quality of plant images. Integrating with LiDAR sensors, this new approach has an opportunity to be applied in field environments.
机译:近年来,植物表型技术已被广泛应用于评估复杂的植物特征,如形态,生理学,生态学,生物化学,耐受性,生长和产量。高光谱/多光谱相机,人工照明源,机制和计算机一起捕获不同种类的植物的图像。由于不同波长的照明源的不均匀强度,需要使用白色参考来校准原始图像。平坦的白色面板通常被扫描为白色参考。然而,诸如叶子倾斜角度的几何因素不能通过平坦的白色参考校准。在本出版物中,首先说明了使用成角度的白色参考来校准相应的原始图像的有效性。此外,在高光谱相机和Kinect V2深度传感器的系统中集成了不同角度和空间位置的3D白色参考文库。因此,可以通过具有最接近的倾斜角度和3D参考文库中的空间位置的点校准叶面上的像素。该参考文库的验证样品是温室生长的大豆叶。结果表明,3D校准后的反射光谱比传统的扁平白色参考校准更接近标准校准(扁平叶片校准)。此外,3D校准后大豆叶面上的像素级归一化差异植被指数(NDVI)分布也更接近标准校准。这一提出的3D白色参考方法具有提高植物图像的校准质量。与LIDAR传感器集成,这种新方法有机会应用于现场环境。

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