Zhang Jun, Wang Xinxin, Liu Jingyan, Zhang Dongfang, Lu Yin, Zhou Yuhong, Sun Lei, Hou Shenglin, Fan Xiaofei, Shen Shuxing, Zhao Jianjun
State Key Laboratory of North China Crop Improvement and Regulation, Hebei Agricultural University, 071000 Baoding, China.
College of Mechanical and Electrical Engineering, Hebei Agricultural University, 071000 Baoding, China.
Plant Phenomics. 2022 Dec 19;2022:0007. doi: 10.34133/plantphenomics.0007. eCollection 2022.
The phenotypic parameters of crop plants can be evaluated accurately and quickly using an unmanned aerial vehicle (UAV) equipped with imaging equipment. In this study, hundreds of images of Chinese cabbage ( L. ssp. ) germplasm resources were collected with a low-cost UAV system and used to estimate cabbage width, length, and relative chlorophyll content (soil plant analysis development [SPAD] value). The super-resolution generative adversarial network (SRGAN) was used to improve the resolution of the original image, and the semantic segmentation network Unity Networking (UNet) was used to process images for the segmentation of each individual Chinese cabbage. Finally, the actual length and width were calculated on the basis of the pixel value of the individual cabbage and the ground sampling distance. The SPAD value of Chinese cabbage was also analyzed on the basis of an RGB image of a single cabbage after background removal. After comparison of various models, the model in which visible images were enhanced with SRGAN showed the best performance. With the validation set and the UNet model, the segmentation accuracy was 94.43%. For Chinese cabbage dimensions, the model was better at estimating length than width. The of the visible-band model with images enhanced using SRGAN was greater than 0.84. For SPAD prediction, the of the model with images enhanced with SRGAN was greater than 0.78. The root mean square errors of the 3 semantic segmentation network models were all less than 2.18. The results showed that the width, length, and SPAD value of Chinese cabbage predicted using UAV imaging were comparable to those obtained from manual measurements in the field. Overall, this research demonstrates not only that UAVs are useful for acquiring quantitative phenotypic data on Chinese cabbage but also that a regression model can provide reliable SPAD predictions. This approach offers a reliable and convenient phenotyping tool for the investigation of Chinese cabbage breeding traits.
使用配备成像设备的无人机(UAV)可以准确、快速地评估作物的表型参数。在本研究中,利用低成本无人机系统采集了数百张白菜(L. ssp.)种质资源图像,并用于估算白菜的宽度、长度和相对叶绿素含量(土壤植物分析发展[SPAD]值)。使用超分辨率生成对抗网络(SRGAN)提高原始图像的分辨率,并使用语义分割网络统一网络(UNet)处理图像以分割每棵单独的白菜。最后,根据单棵白菜的像素值和地面采样距离计算实际长度和宽度。在去除背景后的单棵白菜RGB图像基础上,还分析了白菜的SPAD值。在比较各种模型后,用SRGAN增强可见图像的模型表现最佳。对于验证集和UNet模型,分割准确率为94.43%。对于白菜尺寸,该模型在估算长度方面比宽度表现更好。使用SRGAN增强图像的可见波段模型的相关系数大于0.84。对于SPAD预测,使用SRGAN增强图像的模型的相关系数大于0.78。3种语义分割网络模型的均方根误差均小于2.18。结果表明,利用无人机成像预测的白菜宽度、长度和SPAD值与田间人工测量结果相当。总体而言,本研究不仅证明了无人机可用于获取白菜的定量表型数据,还表明回归模型可以提供可靠的SPAD预测。这种方法为白菜育种性状研究提供了一种可靠且便捷的表型分析工具。