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分析与评价搭载于无人机的六波段多光谱相机的冬小麦监测用图像预处理过程。

Analysis and Evaluation of the Image Preprocessing Process of a Six-Band Multispectral Camera Mounted on an Unmanned Aerial Vehicle for Winter Wheat Monitoring.

机构信息

National Engineering and Technology Center for Information Agriculture, Nanjing Agricultural University, Nanjing 210095, China.

Key Laboratory for Crop System Analysis and Decision Making, Ministry of Agriculture, Nanjing Agricultural University, Nanjing 210095, China.

出版信息

Sensors (Basel). 2019 Feb 12;19(3):747. doi: 10.3390/s19030747.

Abstract

Unmanned aerial vehicle (UAV)-based multispectral sensors have great potential in crop monitoring due to their high flexibility, high spatial resolution, and ease of operation. Image preprocessing, however, is a prerequisite to make full use of the acquired high-quality data in practical applications. Most crop monitoring studies have focused on specific procedures or applications, and there has been little attempt to examine the accuracy of the data preprocessing steps. This study focuses on the preprocessing process of a six-band multispectral camera (Mini-MCA6) mounted on UAVs. First, we have quantified and analyzed the components of sensor error, including noise, vignetting, and lens distortion. Next, different methods of spectral band registration and radiometric correction were evaluated. Then, an appropriate image preprocessing process was proposed. Finally, the applicability and potential for crop monitoring were assessed in terms of accuracy by measurement of the leaf area index (LAI) and the leaf biomass inversion under variable growth conditions during five critical growth stages of winter wheat. The results show that noise and vignetting could be effectively removed via use of correction coefficients in image processing. The widely used Brown model was suitable for lens distortion correction of a Mini-MCA6. Band registration based on ground control points (GCPs) (Root-Mean-Square Error, RMSE = 1.02 pixels) was superior to that using PixelWrench2 (PW2) software (RMSE = 1.82 pixels). For radiometric correction, the accuracy of the empirical linear correction (ELC) method was significantly higher than that of light intensity sensor correction (ILSC) method. The multispectral images that were processed using optimal correction methods were demonstrated to be reliable for estimating LAI and leaf biomass. This study provides a feasible and semi-automatic image preprocessing process for a UAV-based Mini-MCA6, which also serves as a reference for other array-type multispectral sensors. Moreover, the high-quality data generated in this study may stimulate increased interest in remote high-efficiency monitoring of crop growth status.

摘要

基于无人机的多光谱传感器由于其灵活性高、空间分辨率高和易于操作,在作物监测中具有很大的潜力。然而,图像预处理是充分利用实际应用中获取的高质量数据的前提。大多数作物监测研究都集中在特定的程序或应用上,很少尝试检查数据预处理步骤的准确性。本研究重点介绍了安装在无人机上的六波段多光谱相机(Mini-MCA6)的预处理过程。首先,我们量化和分析了传感器误差的组成部分,包括噪声、渐晕和镜头失真。接下来,评估了不同的光谱波段配准和辐射校正方法。然后,提出了一种合适的图像预处理流程。最后,在冬季小麦五个关键生长阶段的不同生长条件下,通过测量叶面积指数(LAI)和叶片生物量反演,评估了该方法在作物监测中的适用性和潜力。结果表明,通过在图像处理中使用校正系数,可以有效地去除噪声和渐晕。广泛使用的 Brown 模型适用于 Mini-MCA6 的镜头失真校正。基于地面控制点(GCP)的波段配准(均方根误差,RMSE = 1.02 像素)优于使用 PixelWrench2(PW2)软件的波段配准(RMSE = 1.82 像素)。对于辐射校正,经验线性校正(ELC)方法的准确性明显高于光强传感器校正(ILSC)方法。使用最佳校正方法处理的多光谱图像可用于可靠地估计 LAI 和叶片生物量。本研究为基于无人机的 Mini-MCA6 提供了一种可行的半自动图像预处理流程,也为其他阵列式多光谱传感器提供了参考。此外,本研究生成的高质量数据可能会激发人们对作物生长状态的远程高效监测的兴趣。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/e853/6387132/7a31d35be0f9/sensors-19-00747-g001.jpg

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