Segmentation of plant residues on soil X-ray CT images using neural network

IF 2 3区 农林科学 Q2 AGRONOMY
Ilya Valdes-Korovkin, Dmitry Fomin, Anna Yudina
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Abstract

In soil, plant residues have low contrast making them difficult to detect using X-ray computed tomography. In this work, we tested a convolutional neural network (U-Net) for its ability to improve the identification of crop residues in soil samples assembled from aggregates of different size fractions (small, large, water-stable aggregates, and average aggregate composition). Soil CT images were obtained using a 244 μm resolution. About 2500 soil images were annotated to train the neural network, of which only 631 images were selected for the training data set. Intersection over Union (IOU) was used as a measure of success of segmentation by neural network, which takes values from 0 to 1. In the validation data set, IOU of background was 0.93, IOU of solid phase was 0.95, IOU of pore space was 0.77, and IOU of plant residues was 0.40. However, IOU of plant residues in the total data set increased to 0.7. Soil structure influences the quality of multiphase segmentation of soil CT images. The poorest segmentation of plant residues was in the soil samples composed of average aggregate size composition. The quality of pore space segmentation increased with increasing porosity of the soil sample. The model tends to generalize the large areas occupied by plant residues and overlooks the smaller ones. The low values of the IOU metric for plant residues in the training data set can also be related to insufficient quality of annotation of the original images.

基于神经网络的土壤植物残体x射线ct图像分割
在土壤中,植物残留物的对比度较低,很难用X射线计算机断层扫描(CT)检测到它们。在这项工作中,我们测试了卷积神经网络(U - Net)提高土壤样品中作物残留物识别的能力,这些土壤样品由不同大小的团聚体组成(小团聚体、大团聚体、水稳定团聚体和平均团聚体组成)。土壤CT图像分辨率为244 μm。大约2500幅土壤图像被标注用于训练神经网络,其中只有631幅图像被选中作为训练数据集。用IoU (Intersection over Union)作为神经网络分割成功的度量,其取值范围为0 ~ 1。在验证数据集中,背景IoU为0.93,固相IoU为0.95,孔隙空间IoU为0.77,植物残留物IoU为0.40。然而,植物残留物在总数据集中的IoU增加到0.7。土壤结构影响土壤CT图像多相分割的质量。在平均粒径组成的土壤样品中,植物残茬分割效果最差。孔隙空间分割质量随土样孔隙度的增大而增大。该模型倾向于推广大面积的植物残茬,而忽略了较小的残茬。训练数据集中植物残茬IoU度量值较低也可能与原始图像标注质量不足有关。这篇文章受版权保护。版权所有
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来源期刊
Agronomy Journal
Agronomy Journal 农林科学-农艺学
CiteScore
4.70
自引率
9.50%
发文量
265
审稿时长
4.8 months
期刊介绍: After critical review and approval by the editorial board, AJ publishes articles reporting research findings in soil–plant relationships; crop science; soil science; biometry; crop, soil, pasture, and range management; crop, forage, and pasture production and utilization; turfgrass; agroclimatology; agronomic models; integrated pest management; integrated agricultural systems; and various aspects of entomology, weed science, animal science, plant pathology, and agricultural economics as applied to production agriculture. Notes are published about apparatus, observations, and experimental techniques. Observations usually are limited to studies and reports of unrepeatable phenomena or other unique circumstances. Review and interpretation papers are also published, subject to standard review. Contributions to the Forum section deal with current agronomic issues and questions in brief, thought-provoking form. Such papers are reviewed by the editor in consultation with the editorial board.
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