杨文攀, 李长春, 杨浩, 杨贵军, 冯海宽, 韩亮, 牛庆林, 韩东. 基于无人机热红外与数码影像的玉米冠层温度监测[J]. 农业工程学报, 2018, 34(17): 68-75. DOI: 10.11975/j.issn.1002-6819.2018.17.010
    引用本文: 杨文攀, 李长春, 杨浩, 杨贵军, 冯海宽, 韩亮, 牛庆林, 韩东. 基于无人机热红外与数码影像的玉米冠层温度监测[J]. 农业工程学报, 2018, 34(17): 68-75. DOI: 10.11975/j.issn.1002-6819.2018.17.010
    Yang Wenpan, Li Changchun, Yang Hao, Yang Guijun, Feng Haikuan, Han Liang, Niu Qinglin, Han Dong. Monitoring of canopy temperature of maize based on UAV thermal infrared imagery and digital imagery[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2018, 34(17): 68-75. DOI: 10.11975/j.issn.1002-6819.2018.17.010
    Citation: Yang Wenpan, Li Changchun, Yang Hao, Yang Guijun, Feng Haikuan, Han Liang, Niu Qinglin, Han Dong. Monitoring of canopy temperature of maize based on UAV thermal infrared imagery and digital imagery[J]. Transactions of the Chinese Society of Agricultural Engineering (Transactions of the CSAE), 2018, 34(17): 68-75. DOI: 10.11975/j.issn.1002-6819.2018.17.010

    基于无人机热红外与数码影像的玉米冠层温度监测

    Monitoring of canopy temperature of maize based on UAV thermal infrared imagery and digital imagery

    • 摘要: 快速、准确、无损地获取田间玉米冠层温度,对实现无人机辅助玉米抗旱性状的监测具有重要的意义。该文以无人机搭载热红外成像仪和RGB高清数码相机构成低空遥感数据获取系统,以不同性状的拔节期玉米为研究对象,采集试验区的无人机影像。利用含有已知三维坐标的几何控制板,进行数码影像几何校正,并利用校正后的数码影像对热红外影像进行几何配准。利用便携式手持测温仪测量辐射定标板黑白面的温度,对热红外影像进行辐射定标。利用高空间分辨率的数码影像对玉米进行分类并二值化处理,基于二值化结果提取热红外影像的玉米冠层像元,并提取试验区不同性状玉米的冠层温度。同时,利用便携式手持测温仪在地面同步测量玉米冠层温度,并与提取的冠层温度经行一致性分析,以验证评估基于热红外影像提取玉米冠层温度的效果。结果表明:提取的冠层温度值与地面实测值具有高度一致性(R2=0.723 6,RMSE=0.60 ℃),提取精度较高,表明基于无人机热红外影像获取玉米冠层温度的方法具有高通量的优势且精度较高。最后将试验区的植被覆盖度与提取的冠层温度进行对比分析,结果表明:玉米冠层温度与其覆盖度有显著的相关性(R2=0.534 5,P<0.000 1),覆盖度越高冠层温度越低,反之则越高,说明玉米冠层覆盖度的大小影响玉米冠层温度的高低。该研究可为玉米育种材料的田间冠层温度监测提供参考。。

       

      Abstract: Crop canopy temperature is one of the most important indexes for evaluating crop physiological conditions for it is closely related leaf stomatal conductance, water use, transpiration of crops. Therefore, crop canopy temperatures can be used in monitoring drought resistance traits of crop. Traditional crop canopy temperature estimates are based on artificial field measurement, which are not only time and labor consuming, but more importantly, are difficult to apply over large areas. In recent years, with the rapid development of unmanned aerial vehicle (UAV) technology, UAVs have been widely used in agricultural phenotypic data acquisition. However, when using thermal infrared image data to extract crop canopy temperatures, UAV is equipped with a miniaturized thermal infrared instrument with low spatial resolution due to the limited load capacity of the UAV. Thermal infrared images often cannot effectively separate soil and crops individually, thus reducing the accuracy of extracting crop canopy temperatures. In this paper, a low-altitude UAV remote sensing system equipped with a thermal infrared imager and a RGB high-definition digital camera was adopted for remote sensing data collection. Experiments were conducted at the Xiao Tangshan National Precision Agriculture Research Center of China, which is located in Changping District of Beijing, PR China. A total of 800 maize materials with different varieties in the jointing period were collected. While UAV acquiring images, a total of 72 ground samples were measured using a hand-held thermometer portable, which was used to verify the maize canopy temperature results from thermal infrared images. The RGB high-definition digital orthophoto map (DOM) was generated and geometry was corrected using ground control points (GCPs) and digital camera images in Agisoft's PhotoScan. A RGB high-definition DOM was used as base an image for the thermal infrared images geometrical calibration to solve the problem of coordinate mismatch between thermal infrared images and digital images, facilitating the removal of the soil background in the next step. The temperature of the black and white surface of the radiant correction plate was measured by a hand-held thermometer portable before and after the flight, which was used for the radiation calibration of the thermal infrared image. A high-resolution digital image was used to calculate the red-green ratio index (RGRI), and the image was binarized after classification of maize and soil. Then the binarization result was used to generate a maize mask file for the experimental area, which was used to extract the pixels of the maize vegetation on the thermal infrared image. By doing so, the low spatial resolution thermal infrared image pixels were separate into soils and crops parts, and crop canopy temperature was extracted from the crops. Finally, the canopy temperature of maize with different characters in the experimental area was statistically analyzed. And the consistency with observations on the ground was analyzed to verify and evaluate the effect of the maize canopy temperature extraction based on thermal infrared images. Our results indicated that canopy temperature based on thermal infrared images was highly relevant with ground observations with R2=0.723 6, RMSE=0.60 ℃. Our results demonstrated that it was accurate and feasible to use the high spatial resolution digital images to remove the soil background pixels on low spatial resolution thermal infrared images. In addition, the new method of obtaining maize canopy temperature based on UAV thermal infrared imagery was feasible and effective. Our results also demonstrated that the canopy temperature of materials was significantly correlated with the canopy coverage with R2=0.534 5 (P< 0.000 1). Canopy temperature decreased with increasing of canopy coverage.

       

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