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首页> 外文期刊>Geoderma: An International Journal of Soil Science >Predicting soil texture from smartphone-captured digital images and an application
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Predicting soil texture from smartphone-captured digital images and an application

机译:从智能手机捕获的数字图像和应用程序预测土壤纹理

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The rapid and non-invasive prediction of soil sand, silt, and clay is becoming increasingly attractive given the laborious nature of traditional soil textural analysis. This study proposed a novel and cheap setup comprising a smartphone, a custom-made dark chamber, and a smartphone application for predicting soil texture of the dried, ground, and sieved samples. The image acquisition system was used to capture triplicate images from 90 mineral soil samples, representing a wide textural variability from sand to clay. Local features, color features, and texture features were extracted from the cropped images and subsequently used in different combinations to predict laboratory-measured clay, silt, and sand via random forest (RF) and convolutional neural network (CNN) algorithms. Results indicated high prediction accuracy for clay (R-2 = 0.97-0.98) and sand (R-2 = 0.96-0.98) and moderate prediction accuracy for silt (R-2 = 0.62-0.75) using both algorithms. Color features outperformed all other image-extracted features and showed the maximum influence on RF model performance. The better performance of the color features can be attributed to the color features of mineral matter and soil organic matter (SOM). An Android-based smartphone application based on the calibrated CNN model was able to predict and return soil textural values. These results exhibited the potential of the proposed system as a proximal sensor for rapid, cost-effective, and eco-friendly soil textural analysis using computer-vision and deep learning. More research is warranted to augment the setup design, develop a standalone mobile application, and measure the impacts of soil moisture and high SOM on the model prediction performance to extend the approach for on-site prediction of soil texture.
机译:鉴于传统土壤纹理分析的艰苦本质,土壤砂,淤泥和粘土的快速和非侵入性预测变得越来越吸引人。本研究提出了一种包括智能手机,定制的暗室和智能手机应用的小说和廉价的设置,用于预测干燥的,地面和筛分的样品的土壤质地。图像采集系统用于捕获来自90个矿物土壤样品的三份图像,代表从沙子到粘土的广泛纹理变异性。从裁剪图像中提取局部特征,颜色特征和纹理特征,随后用于通过随机森林(RF)和卷积神经网络(CNN)算法预测实验室测量的粘土,淤泥和砂。结果表明粘土的高预测精度(R-2 = 0.97-0.98)和砂(R-2 = 0.96-0.98)和使用这两种算法的淤泥(R-2 = 0.62-0.75)中等预测精度。彩色功能表现优于所有其他图像提取的功能,并显示了对RF模型性能的最大影响。较好的颜色特征性能归因于矿物质和土壤有机物(SOM)的颜色特征。基于校准的CNN模型的基于Android的智能手机应用程序能够预测和返回土壤纹理值。这些结果表现出所提出的系统作为近端传感器,用于使用计算机视觉和深度学习的快速,成本效益和生态友好的土壤纹理分析。有必要进行更多的研究来增强设置设计,开发独立的移动应用,并测量土壤水分和高SOM对模型预测性能的影响,以扩展土壤质地的现场预测方法。

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