Redirigiendo al acceso original de articulo en 17 segundos...
Inicio  /  Drones  /  Vol: 6 Par: 9 (2022)  /  Artículo
ARTÍCULO
TITULO

Cotton Yield Estimation Using the Remotely Sensed Cotton Boll Index from UAV Images

Guanwei Shi    
Xin Du    
Mingwei Du    
Qiangzi Li    
Xiaoli Tian    
Yiting Ren    
Yuan Zhang and Hongyan Wang    

Resumen

Cotton constitutes 81% of the world?s natural fibers. Accurate and rapid cotton yield estimation is important for cotton trade and agricultural policy development. Therefore, we developed a remote sensing index that can intuitively represent cotton boll characteristics and support cotton yield estimation by extracting cotton boll pixels. In our study, the Density of open Cotton boll Pixels (DCPs) was extracted by designing different cotton boll indices combined with the threshold segmentation method. The relationship between DCP and field survey datasets, the Density of Total Cotton bolls (DTC), and yield were compared and analyzed. Five common yield estimation models, Linear Regression (LR), Support Vector Regression (SVR), Classification and Regression Trees (CART), Random Forest (RF), and K-Nearest Neighbors (KNN), were implemented and evaluated. The results showed that DCP had a strong correlation with yield, with a Pearson correlation coefficient of 0.84. The RF method exhibited the best yield estimation performance, with average R2 and rRMSE values of 0.77 and 7.5%, respectively (five-fold cross-validation). This study showed that RedGreenBlue (RGB) and Near Infrared Red (NIR) normalized, a normalized form index consisting of the RGB and NIR bands, performed best.

 Artículos similares

       
 
Xiaoning Zhao, Hussein Othmanli, Theresa Schiller, Chengyi Zhao, Yu Sheng, Shamaila Zia, Joachim Müller and Karl Stahr    
The Tarim River Basin, the largest area of Chinese cotton production, is receiving increased attention because of serious environmental problems. At two experimental stations (Korla and Aksu), we studied the influence of salinity on cotton yield. Soil ch... ver más
Revista: Water

 
Shamaila Zia-Khan, Wolfram Spreer, Yang Pengnian, Xiaoning Zhao, Hussein Othmanli, Xiongkui He and Joachim Müller    
The Xinjiang Region in Northwest China is known as the ?dust center? of the Eurasian mainland. Dust on the leaf surface affects overall plant development. While emphasis was on studying the impacts of industrial dust particles on crop development, the ef... ver más
Revista: Water

 
Solmaz Aslanzadeh, Karthik Rajendran, Azam Jeihanipour and Mohammad J. Taherzadeh    
The effect of recirculation in increasing organic loading rate (OLR) and decreasing hydraulic retention time (HRT) in a semi-continuous two-stage anaerobic digestion system using stirred tank reactor (CSTR) and an upflow anaerobic sludge bed (UASB) was e... ver más
Revista: Energies

 
Robert Finger, Nadja El Benni, Timo Kaphengst, Clive Evans, Sophie Herbert, Bernard Lehmann, Stephen Morse and Nataliya Stupak    
This paper reviews the evidence on the socio-economic impacts of GM crops and analyzes whether there are patterns across space and time. To this end, we investigate the effect of GM crops on farm-level costs and benefits using global data from more than ... ver más
Revista: Sustainability