Abstract

Timely and accurate crop growth monitoring and yield estimation are important for field management. The traditional sampling method used for estimation of ramie yield is destructive. Thus, this study proposed a new method for estimating ramie yield based on field phenotypic data obtained from unmanned aerial vehicle (UAV) images. A UAV platform carrying RGB cameras was employed to collect ramie canopy images during the whole growth period. The vegetation indices (VIs), plant number, and plant height were extracted from UAV-based images, and then, these data were incorporated to establish yield estimation model. Among all of the UAV-based image data, we found that the structure features (plant number and plant height) could better reflect the ramie yield than the spectral features, and in structure features, the plant number was found to be the most useful index to monitor the yield, with a correlation coefficient of 0.6. By fusing multiple characteristic parameters, the yield estimation model based on the multiple linear regression was obviously more accurate than the stepwise linear regression model, with a determination coefficient of 0.66 and a relative root mean square error of 1.592 kg. Our study reveals that it is feasible to monitor crop growth based on UAV images and that the fusion of phenotypic data can improve the accuracy of yield estimations.

Highlights

  • Crop yield estimation is an important research content of precision agriculture, and it plays a crucial role in making decisions for agricultural production input and realizing accurate agricultural operation and management [1,2,3]

  • Our results indicated that the correlation relationship between the ramie yield and all of the visible spectrum indices calculated based on the unmanned aerial vehicles (UAV) images was weak, of which water index (WI), excess red index (ExR), and VARI were positively correlated with the ramie yield, while

  • (plant number and plant height) information were extracted from UAV-based RGB images

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Summary

Introduction

Crop yield estimation is an important research content of precision agriculture, and it plays a crucial role in making decisions for agricultural production input and realizing accurate agricultural operation and management [1,2,3]. The conventional sampling method for crop yield estimation is destructive and labor-consuming, with low accuracy; it cannot meet the demands of modern agriculture. Remote sensing is regarded as the best technology for monitoring and estimating phenotypic characteristics over large areas [7,8]. Low-altitude remote sensing using UAVs with multiple advantages, such as flexibility, nondestructive monitoring, low costs, and high throughput, has been increasingly used in the field of precision agriculture in recent years [9,10]. The high price of these sensors prevents remote-sensing technology from being widely applied to agriculture

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