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可视化植物响应:温室中经济实惠的成像技术带来新的见解。

Visualizing Plant Responses: Novel Insights Possible Through Affordable Imaging Techniques in the Greenhouse.

机构信息

U.S. Arid-Land Agricultural Research Center, U.S. Department of Agriculture, Agricultural Research Service, Maricopa, AZ 85138, USA.

出版信息

Sensors (Basel). 2024 Oct 17;24(20):6676. doi: 10.3390/s24206676.

Abstract

Efficient and affordable plant phenotyping methods are an essential response to global climatic pressures. This study demonstrates the continued potential of consumer-grade photography to capture plant phenotypic traits in turfgrass and derive new calculations. Yet the effects of image corrections on individual calculations are often unreported. Turfgrass lysimeters were photographed over 8 weeks using a custom lightbox and consumer-grade camera. Subsequent imagery was analyzed for area of cover, color metrics, and sensitivity to image corrections. Findings were compared to active spectral reflectance data and previously reported measurements of visual quality, productivity, and water use. Results confirm that Red-Green-Blue imagery effectively measures plant treatment effects. Notable correlations were observed for corrected imagery, including between yellow fractional area with human visual quality ratings (r = -0.89), dark green color index with clipping productivity (r = 0.61), and an index combination term with water use (r = -0.60). The calculation of green fractional area correlated with Normalized Difference Vegetation Index (r = 0.91), and its RED reflectance spectra (r = -0.87). A new chromatic ratio correlated with Normalized Difference Red-Edge index (r = 0.90) and its Red-Edge reflectance spectra (r = -0.74), while a new calculation correlated strongest to Near-Infrared (r = 0.90). Additionally, the combined index term significantly differentiated between the treatment effects of date, mowing height, deficit irrigation, and their interactions ( < 0.001). Sensitivity and statistical analyses of typical image file formats and corrections that included JPEG, TIFF, geometric lens distortion correction, and color correction were conducted. Findings highlight the need for more standardization in image corrections and to determine the biological relevance of the new image data calculations.

摘要

高效且经济实惠的植物表型分析方法是应对全球气候压力的重要手段。本研究展示了消费级摄影在捕捉草坪草植物表型特征方面的持续潜力,并得出了新的计算方法。然而,图像校正对个别计算的影响往往没有得到报道。使用定制的灯箱和消费级相机对草坪草蒸渗仪进行了 8 周的拍摄。随后对图像进行了覆盖面积、颜色指标和对图像校正的敏感性分析。研究结果与主动光谱反射率数据以及之前报道的视觉质量、生产力和用水测量值进行了比较。结果证实,红-绿-蓝图像有效地测量了植物处理效果。在校正后的图像中观察到了显著的相关性,包括黄色部分面积与人类视觉质量评分(r = -0.89)、深绿色颜色指数与剪草生产力(r = 0.61)以及与用水相关的指数组合项(r = -0.60)。绿色部分面积的计算与归一化植被指数(r = 0.91)及其红色反射率光谱(r = -0.87)相关。新的色度比与归一化差红边指数(r = 0.90)及其红边反射率光谱(r = -0.74)相关,而一个新的计算与近红外(r = 0.90)相关性最强。此外,组合指数项能显著区分日期、剪草高度、亏缺灌溉以及它们相互作用的处理效果(<0.001)。对包括 JPEG、TIFF、几何镜头失真校正和颜色校正在内的典型图像文件格式和校正进行了敏感性和统计分析。研究结果强调了图像校正标准化的必要性,并需要确定新图像数据计算的生物学相关性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ef57/11511021/b99d963f266b/sensors-24-06676-g001.jpg

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