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用于分析和鉴别土壤样本的机器学习与计算机视觉技术。

Machine learning and computer vision technology to analyze and discriminate soil samples.

作者信息

Kaplan Sema, Ropelewska Ewa, Günaydın Seda, Sabancı Kadir, Çetin Necati

机构信息

Department of Soil Science and Plant Nutrition, Faculty of Agriculture, Erciyes University, Kayseri, Turkey.

, Skierniewice, Poland.

出版信息

Sci Rep. 2024 Aug 27;14(1):19945. doi: 10.1038/s41598-024-69464-7.

Abstract

Soil texture is one of the most important elements to consider before planting and tillage. These features affect the product selection and regulate its water permeability. Discrimination of soils by determining soil texture features requires an intense workload and is time-consuming. Therefore, having a powerful tool and knowledge for texture-based soil discrimination could enable rapid and accurate discrimination of soils. This study focuses on presenting new models for 6 different soil sample groups (Soil_1 to Soil_6) based on 12 different machine learning algorithms that can be utilized for various problems. As a result, overall accuracy values were determined as greater than 99.2% (Trilayered Neural Network). The greatest accuracy value was found in Bayes Net (99.83%) and followed by Subspace Discriminant (99.80%). In the Bayes Net algorithm, MCC (Matthews Correlation Coefficient) and F-measure values were obtained as 0.994 and 0.995 for Soil_4 and Soil_6 sample groups while these values were 1.000 for other soil groups. Soil types can visually vary based on their texture, mineral composition, and moisture levels. The variability of this can be influenced by fertilization, precipitation levels, and soil cultivation. It is important to capture the images in soil conditions that are more stable. In conclusion, the present study has proven the feasibility of rapid, non-destructive, and accurate discrimination of soils by image processing-based machine learning.

摘要

土壤质地是种植和耕作前需要考虑的最重要因素之一。这些特性会影响产品选择并调节其透水性。通过确定土壤质地特征来区分土壤需要大量工作量且耗时。因此,拥有一个强大的基于质地的土壤区分工具和知识能够实现对土壤的快速准确区分。本研究重点在于基于12种不同的机器学习算法为6个不同的土壤样本组(土壤_1至土壤_6)提出新模型,这些算法可用于各种问题。结果,总体准确率值确定大于99.2%(三层神经网络)。在贝叶斯网络中准确率值最高(99.83%),其次是子空间判别法(99.80%)。在贝叶斯网络算法中,土壤_4和土壤_6样本组的马修斯相关系数(MCC)和F值分别为0.994和0.995,而其他土壤组的这些值为1.000。土壤类型在视觉上会因其质地、矿物成分和湿度水平而有所不同。这种变异性会受到施肥、降水量和土壤耕作的影响。在更稳定的土壤条件下采集图像很重要。总之,本研究证明了通过基于图像处理机器学习对土壤进行快速、无损和准确区分的可行性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/35ad/11358420/f096e0f2d2ae/41598_2024_69464_Fig1_HTML.jpg

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