Li Fei, Bai Jingya, Zhang Mengyun, Zhang Ruoyu
College of Mechanical and Electrical Engineering, Shihezi University, Shihezi, 832000, Xinjiang, People's Republic of China.
Key Laboratory of Northwest Agricultural Equipment, Ministry of Agriculture, Shihezi, 832000, Xinjiang, People's Republic of China.
Plant Methods. 2022 Apr 27;18(1):55. doi: 10.1186/s13007-022-00881-3.
China has a unique cotton planting pattern. Cotton is densely planted in alternating wide and narrow rows to increase yield in Xinjiang, China, causing the difficulty in the accurate estimation of cotton yield using remote sensing in such field with branches occluded and overlapped.
In this study, unmanned aerial vehicle (UAV) imaging and deep convolutional neural networks (DCNN) were used to estimate densely planted cotton yield. Images of cotton fields were acquired by the UAV at an altitude of 5 m. Cotton bolls were manually harvested and weighed afterwards. Then, a modified DCNN model (CD-SegNet) was constructed for pixel-level segmentation of cotton boll images by reorganizing the encoder-decoder and adding dilated convolutions. Besides, linear regression analysis was employed to build up the relationship between cotton boll pixels ratio and cotton yield. Finally, the estimated yield for four cotton fields were verified by weighing harvested cotton. The results showed that CD-SegNet outperformed the other tested models, including SegNet, support vector machine (SVM), and random forest (RF). The average error in yield estimates of the cotton fields was as low as 6.2%.
Overall, the estimation of densely planted cotton yields based on low-altitude UAV imaging is feasible. This study provides a methodological reference for cotton yield estimation in China.
中国拥有独特的棉花种植模式。在中国新疆,棉花采用宽窄行交替密植以提高产量,这使得在树枝遮挡和重叠的此类田间利用遥感准确估算棉花产量变得困难。
在本研究中,使用无人机(UAV)成像和深度卷积神经网络(DCNN)来估算密植棉花产量。无人机在5米高度获取棉田图像。随后人工采摘棉铃并称重。然后,通过重组编码器-解码器并添加扩张卷积,构建了一种改进的DCNN模型(CD-SegNet)用于棉铃图像的像素级分割。此外,采用线性回归分析建立棉铃像素比例与棉花产量之间的关系。最后,通过对收获的棉花称重来验证四个棉田的估计产量。结果表明,CD-SegNet优于其他测试模型,包括SegNet、支持向量机(SVM)和随机森林(RF)。棉田产量估计的平均误差低至6.2%。
总体而言,基于低空无人机成像估算密植棉花产量是可行的。本研究为中国棉花产量估算提供了方法学参考。