An Image Processing Techniques Used for Soil Moisture Inspection and Classification

M. As, Herkules Abdullah, H. Syahputra, B. Benaissa, F. Harahap
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引用次数: 2

Abstract

. A soil inspection provides information on the soil's fertility, an important starting point for determining soil fertility. Therefore, soil quality determination is essential in agricultural systems before planting. Image processing techniques associated with the computer vision model are widely used today, having applications in many branches of agriculture, closely related to technologies used in precision farming. This research aims to created an accurate model in image processing approaches for checking and categorizing soil quality based on external data detection. The visible and invisible strategies gathered using spectral technology were used to identify the exterior texture (computer vision). The Grey Level Co-occurrence Matrix (GLCM) approach was used to analyze picture texture, and then the Support Vector Machines (SVMs) method was used for classification. This study demonstrated that the model is an effective technique for evaluating soil moisture. Since the concealed texture features are not visible to the human eye, the experiment also shows that the invisible channels have promise in the classification model.
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一种用于土壤水分检测与分类的图像处理技术
. 土壤检查提供了土壤肥力的信息,这是确定土壤肥力的重要起点。因此,在农业系统种植前,土壤质量测定是必不可少的。与计算机视觉模型相关的图像处理技术在今天被广泛使用,在农业的许多分支中都有应用,与精准农业中使用的技术密切相关。本研究旨在建立基于外部数据检测的土壤质量检测与分类图像处理方法中的精确模型。利用光谱技术收集的可见和不可见策略来识别外部纹理(计算机视觉)。采用灰度共生矩阵(GLCM)方法对图像纹理进行分析,然后采用支持向量机(svm)方法对图像进行分类。研究结果表明,该模型是一种有效的土壤水分评价方法。由于隐藏的纹理特征是人眼不可见的,实验也表明,不可见通道在分类模型中有很好的应用前景。
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