Methods for Determining Nitrogen, Phosphorus, and Potassium (NPK) Nutrient Content Using Features from Accelerated Segment Test (FAST)

R. Sumiharto, Ristya Ginanjar Putra, Samuel Demetouw
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Abstract

Nutrient Content NPK is macro nutrient content that important for the growth of a plant. The measurement of NPK conducted periodically, but the measurement using laboratories test need relatively long time. This Research is conducted to determine the nutrient content of the soil, consisted of nitrogen, phosphor, and calcium (NPK) using digital image processing based on Features from Accelerated Segment Test (FAST) and backpropagation artificial neural network. The data sample in this research taken from the rice field soil in Daerah Istimewa Yogyakarta province where the soil taken at the length of 30 cm to 110 cm with l20 cm interval, and -30° to 30° degree with interval 10°. The model from this measurement system based on texture’s characteristic that extracted using Scale Invariant Feature Transform from soil’s image that already passed pre-processing process. The characteristic result will be the input from the artificial neural network with a variation on parameter’s model. The model tested for the purpose of knowing the influence the distance and degree where the image taken and the influence of parameter’s artificial neural network. The result from the research, is a accurate value of the measurement for each nutrient in the soil, nitrogen (94.86%), phosphor (58.93%) and calcium (63.57%), with the mean 72,46%. The corresponding result obtained from image taken with optimal height of 70 cm and degree 0o
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利用加速段试验(FAST)特性测定氮、磷、钾(NPK)养分含量的方法
氮磷钾是对植物生长至关重要的宏观营养成分。氮磷钾的测量是周期性的,但采用实验室测试的测量时间较长。本研究采用基于FAST特征和反向传播人工神经网络的数字图像处理技术,确定了土壤中氮、磷、钙(NPK)的养分含量。本研究的数据样本取自日惹省Daerah Istimewa的稻田土壤,土壤长度为30 cm至110 cm,间隔为120 cm, -30°至30°,间隔为10°。该测量系统的模型是利用尺度不变特征变换从经过预处理的土壤图像中提取纹理特征。特征结果将是人工神经网络输入的参数模型的变化。对模型进行了测试,以了解图像拍摄距离和程度的影响以及人工神经网络参数的影响。研究结果为土壤中氮(94.86%)、磷(58.93%)、钙(63.57%)各养分的准确测量值,平均值为72.46%。在最佳高度为70 cm、度为0的情况下拍摄的图像得到了相应的结果
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Methods for Determining Nitrogen, Phosphorus, and Potassium (NPK) Nutrient Content Using Features from Accelerated Segment Test (FAST)
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