用于根毛增强和改进根部特征测量的无监督图像超级分辨率

Divya Mishra;Sharon Chemweno;Ofer Hadar;Ofer Ben-Tovim;Naftali Lazarovitch;Jhonathan E. Ephrath
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摘要

根毛对养分吸收和植物与微生物的相互作用至关重要,在植物健康和农业生产中发挥着重要作用。根毛从根细胞表面延伸出来,大大增加了根的表面积,约占根总面积的 70%。鉴于这些优势,在低分辨率场景中检测根毛具有挑战性。因此,我们提出了一项研究,利用无监督图像超分辨率方法,使用我们的新型扫描相机 RootCam 采集的数据集重建根毛的更精细细节。RootCam 是一种全自动工具,设计用于监控和捕捉植物根部图像,以完成不同的视觉任务,从而更准确地呈现根部形态和测量根部性状。事实证明,根毛超分辨率是根生物学及其在精准农业中应用的有力工具。据作者所知,这项研究是第一项主要关注根毛及其性状测量改进的超分辨率研究。通过对根瘤的高分辨率细节进行可视化,与双三次方和对比学习半监督遥感图像超级(CLSR)的超分辨率相比,我们发现钟椒植物的根毛数量从 7 根增加到 12 根,根系总长度从 0.32 毫米增加到 1 毫米,根毛密度(根毛数量/毫米)从 2.7 根增加到 4.63 根。研究人员和农民可以在养分分配、灌溉管理和作物选择方面做出明智的决策,优化资源利用效率和作物产量。
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Unsupervised Image Super-Resolution for Root Hair Enhancement and Improved Root Traits Measurements
Root hairs are essential for nutrient uptake and plant-microbe interactions, playing a vital role in plant health and agricultural productivity. They extend from the surface of root cells, significantly increasing the root surface area, and constitute roughly 70% of the total root area. Given these advantages, detecting root hairs in scenes with low resolution is challenging. Therefore, we have proposed a study that utilizes unsupervised image super-resolution methods to reconstruct finer details for root hairs using the dataset captured from our novel scanning camera known as RootCam. RootCam is a fully automated tool designed for monitoring and capturing plant root images for different vision tasks for a more accurate representation of their morphology and root trait measurements. Root hair super-resolution proves to be a powerful tool for root biology and its applications in precision agriculture. To the best of the authors' knowledge, this research study is the first that mainly focuses on root hairs and their trait measurement improvement using super-resolution. By visualizing the rhizosphere in high-resolution detail, we are able to notice a significant improvement in bell-pepper plant root hair count from 7 to 12, total root length from 0.32 to 1 mm, and root hair density (number of root hairs/mm) from 2.7 to 4.63, as upscaling factors rise from 2 to 8, respectively, when compared with bicubic and contrastive learning semi-supervised remote sensing image super (CLSR) for super-resolution. Researchers and farmers can make informed decisions about nutrient placement, irrigation management, and crop selection, optimizing resource use efficiency and crop yields.
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2024 Index IEEE Transactions on AgriFood Electronics Vol. 2 Table of Contents Front Cover IEEE Circuits and Systems Society Information IEEE Circuits and Systems Society Information
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