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利用基于无人机平台的多光谱成像技术估算养殖红藻紫菜的生物量

Biomass estimation of cultivated red algae Pyropia using unmanned aerial platform based multispectral imaging.

作者信息

Che Shuai, Du Guoying, Wang Ning, He Kun, Mo Zhaolan, Sun Bin, Chen Yu, Cao Yifei, Wang Junhao, Mao Yunxiang

机构信息

Key Laboratory of Marine Genetics and Breeding (Ministry of Education), College of Marine Life Sciences, Ocean University of China, Qingdao, 266003, People's Republic of China.

Xi' an Ecotech Spectral Imaging and Eco-drone Remote Sensing Research Center Co., Ltd., Xi' an, 710000, People's Republic of China.

出版信息

Plant Methods. 2021 Feb 4;17(1):12. doi: 10.1186/s13007-021-00711-y.

Abstract

BACKGROUND

Pyropia is an economically advantageous genus of red macroalgae, which has been cultivated in the coastal areas of East Asia for over 300 years. Realizing estimation of macroalgae biomass in a high-throughput way would great benefit their cultivation management and research on breeding and phenomics. However, the conventional method is labour-intensive, time-consuming, manually destructive, and prone to human error. Nowadays, high-throughput phenotyping using unmanned aerial vehicle (UAV)-based spectral imaging is widely used for terrestrial crops, grassland, and forest, but no such application in marine aquaculture has been reported.

RESULTS

In this study, multispectral images of cultivated Pyropia yezoensis were taken using a UAV system in the north of Haizhou Bay in the midwestern coast of Yellow Sea. The exposure period of P. yezoensis was utilized to prevent the significant shielding effect of seawater on the reflectance spectrum. The vegetation indices of normalized difference vegetation index (NDVI), ratio vegetation index (RVI), difference vegetation index (DVI) and normalized difference of red edge (NDRE) were derived and indicated no significant difference between the time that P. yezoensis was completely exposed to the air and 1 h later. The regression models of the vegetation indices and P. yezoensis biomass per unit area were established and validated. The quadratic model of DVI (Biomass = - 5.550DVI + 105.410DVI + 7.530) showed more accuracy than the other index or indices combination, with the highest coefficient of determination (R), root mean square error (RMSE), and relative estimated accuracy (Ac) values of 0.925, 8.06, and 74.93%, respectively. The regression model was further validated by consistently predicting the biomass with a high R value of 0.918, RMSE of 8.80, and Ac of 82.25%.

CONCLUSIONS

This study suggests that the biomass of Pyropia can be effectively estimated using UAV-based spectral imaging with high accuracy and consistency. It also implied that multispectral aerial imaging is potential to assist digital management and phenomics research on cultivated macroalgae in a high-throughput way.

摘要

背景

紫菜是一种具有经济优势的红藻属,在东亚沿海地区已养殖了300多年。实现以高通量方式估算大型海藻生物量将极大地有利于其养殖管理以及育种和表型组学研究。然而,传统方法劳动强度大、耗时、具有人工破坏性且容易出现人为误差。如今,基于无人机(UAV)的光谱成像的高通量表型分析广泛应用于陆地作物、草地和森林,但尚未见在海水养殖中的此类应用报道。

结果

在本研究中,利用无人机系统在黄海中西部海州湾北部获取了养殖条斑紫菜的多光谱图像。利用条斑紫菜的露空期来防止海水对反射光谱的显著屏蔽效应。推导了归一化差异植被指数(NDVI)、比值植被指数(RVI)、差值植被指数(DVI)和红边归一化差异(NDRE)等植被指数,结果表明条斑紫菜完全暴露于空气中时与1小时后这些指数无显著差异。建立并验证了植被指数与条斑紫菜单位面积生物量的回归模型。DVI的二次模型(生物量 = -5.550DVI² + 105.410DVI + 7.530)比其他指数或指数组合显示出更高的准确性,其决定系数(R)、均方根误差(RMSE)和相对估计精度(Ac)的最高值分别为0.925、8.06和74.93%。通过以0.918的高R值、8.80的RMSE和82.25%的Ac持续预测生物量,进一步验证了该回归模型。

结论

本研究表明,利用基于无人机的光谱成像能够以高精度和一致性有效地估算紫菜生物量。这也意味着多光谱航空成像有潜力以高通量方式辅助养殖大型海藻的数字管理和表型组学研究。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/2d93/7863433/fd4829f6d977/13007_2021_711_Fig2_HTML.jpg

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