Kyratzis Angelos C, Skarlatos Dimitrios P, Menexes George C, Vamvakousis Vasileios F, Katsiotis Andreas
Department of Vegetable Crops, Agricultural Research InstituteNicosia, Cyprus.
Department of Agricultural Sciences, Biotechnology and Food Science, Cyprus University of TechnologyLimassol, Cyprus.
Front Plant Sci. 2017 Jun 26;8:1114. doi: 10.3389/fpls.2017.01114. eCollection 2017.
There is growing interest for using Spectral Vegetation Indices (SVI) derived by Unmanned Aerial Vehicle (UAV) imagery as a fast and cost-efficient tool for plant phenotyping. The development of such tools is of paramount importance to continue progress through plant breeding, especially in the Mediterranean basin, where climate change is expected to further increase yield uncertainty. In the present study, Normalized Difference Vegetation Index (NDVI), Simple Ratio (SR) and Green Normalized Difference Vegetation Index (GNDVI) derived from UAV imagery were calculated for two consecutive years in a set of twenty durum wheat varieties grown under a water limited and heat stressed environment. Statistically significant differences between genotypes were observed for SVIs. GNDVI explained more variability than NDVI and SR, when recorded at booting. GNDVI was significantly correlated with grain yield when recorded at booting and anthesis during the 1st and 2nd year, respectively, while NDVI was correlated to grain yield when recorded at booting, but only for the 1st year. These results suggest that GNDVI has a better discriminating efficiency and can be a better predictor of yield when recorded at early reproductive stages. The predictive ability of SVIs was affected by plant phenology. Correlations of grain yield with SVIs were stronger as the correlations of SVIs with heading were weaker or not significant. NDVIs recorded at the experimental site were significantly correlated with grain yield of the same set of genotypes grown in other environments. Both positive and negative correlations were observed indicating that the environmental conditions during grain filling can affect the sign of the correlations. These findings highlight the potential use of SVIs derived by UAV imagery for durum wheat phenotyping under low yielding Mediterranean conditions.
利用无人机(UAV)图像得出的光谱植被指数(SVI)作为一种快速且经济高效的植物表型分析工具,正受到越来越多的关注。开发此类工具对于通过植物育种持续取得进展至关重要,尤其是在地中海盆地,预计气候变化将进一步增加产量的不确定性。在本研究中,针对在水分受限和热胁迫环境下种植的一组20个硬粒小麦品种,连续两年计算了源自无人机图像的归一化差异植被指数(NDVI)、简单比值(SR)和绿色归一化差异植被指数(GNDVI)。观察到不同基因型之间的SVI存在统计学上的显著差异。在孕穗期记录时,GNDVI比NDVI和SR解释了更多的变异性。在第一年和第二年,分别在孕穗期和开花期记录时,GNDVI与籽粒产量显著相关,而NDVI仅在第一年孕穗期记录时与籽粒产量相关。这些结果表明,GNDVI具有更好的鉴别效率,并且在生殖早期记录时可以更好地预测产量。SVI的预测能力受植物物候的影响。籽粒产量与SVI的相关性越强,SVI与抽穗的相关性就越弱或不显著。在实验地点记录的NDVI与在其他环境中种植的同一组基因型的籽粒产量显著相关。观察到了正相关和负相关,这表明灌浆期的环境条件会影响相关性的正负。这些发现突出了无人机图像得出的SVI在低产地中海条件下对硬粒小麦进行表型分析的潜在用途。