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A multispectral camera system for automated minirhizotron image analysis

机译:自动化MiniRhizotron图像分析的多光谱相机系统

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Aims Roots are vital organs for plants, but the assessment of root traits is difficult, particularly in deep soil layers under natural field conditions. A popular technique to investigate root growth under field or semi-field conditions is the use of minirhizotrons. However, the subsequent manual quantification process is time-consuming and prone to error. Methods We developed a multispectral minirhizotron imaging system and a subsequent image analysis strategy for automated root detection. Five wavelengths in the visible (VIS) and near-infrared (NIR) spectrum are used to enhance living roots by a multivariate grouping of pixels based on differences in reflectance; background noise is suppressed by a vesselness enhancement filter. The system was tested against manual analysis of grid intersections for both spring barley (Hordeum vulgare L.) and perennial ryegrass (Lolium perenne L.) cultivars at two time-points. The images of living roots were captured in wet subsoil conditions with dead roots present from a previous crop. Results Under the soil conditions used in the study, NIR reflectance (940 nm), provided limited ability to separate between rhizosphere components, compared to reflectance in the violet and blue light spectrum (405 nm and 450 nm). Multivariate image analysis of the spectral data, combined with vesselness enhancement and thresholding allowed for automated detection of living roots. Automated image analysis largely replicated the root intensity found during manual grid intersect analysis of the same images. Although some misclassification occurred, caused by elongated structures of dew and chalkstone with similar reflectance pattern as living root, the system provided similar or in some cases improved detection of genotypic differences in the total root length within each tube. Conclusion The multispectral imaging system allows for automated detection of living roots in minirhizotron studies. The system requires considerably less time than traditional manual recording using grid intersections. The flexible training strategy used for root segmentation offers hope for the transfer to other rhizosphere components and other soil types of interest.
机译:目标根部是植物的重要器官,但根部特征的评估难,特别是在自然场条件下的深层土壤中。一种调查领域或半场条件下的根生长的流行技术是Minirhizotrons的使用。但是,随后的手动量化过程是耗时和易于错误。方法我们开发了一种多光谱MiniRhizotron成像系统和随后的自动根检测图像分析策略。可见(VI)和近红外(NIR)光谱中的五个波长用于通过基于反射率的差异来增强生物根部的像素;背景噪声被血管增强滤波器抑制。该系统是针对两个时间点进行春季大麦(Hordeum Vulgare L.)和多年生黑麦草(Lolium Perenne L.)品种的网格交叉口的手动分析。生活根部的图像在潮湿的底土条件下捕获,其中患有先前的作物存在。结果在研究中使用的土壤条件下,NIR反射率(940nm),与紫色和蓝光谱的反射率(405nm和450nm)相比,提供了有限的根际成分。多变量的光谱数据图像分析,与血管增强和阈值相结合,允许自动检测活根的自动检测。自动图像分析大大复制了手动网格与相同图像的手动网格中发现的根强度。虽然发生了一些错误分类,但由露珠和粉碎的细长结构引起,露珠和粉碎型具有与活性根的反射图案相似,系统提供了类似或在某些情况下提供了各种管内总根长度的基因型差异的检测。结论多光谱成像系统允许在Minirhizotron研究中自动检测生活根部。系统需要比使用网格交叉口的传统手动录制更少的时间。用于根分割的灵活培训策略为转移到其他根际部件和其他土壤类型的兴趣期提供了希望。

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