Recognizing Potassium Deficiency Symptoms in Soybean with ANN on FPGA

IF 0.9 4区 农林科学 Q4 AGRICULTURAL ENGINEERING Applied Engineering in Agriculture Pub Date : 2022-01-01 DOI:10.13031/aea.14302
M. Sartin, Alexandre Cesar Rodrigues da Silva, C. Kappes
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Abstract

HighlightsIdentifying the deficiency of potassium macronutrients in the soybean crop using artificial neural network (ANN).Image processing based on ANN using a reconfigurable device.Processing and representation of data in neurons are in floating point.Abstract. Precision agriculture aims to improve the production of field crops using different techniques to manage the planting stages, such as the monitoring of field crops by images, fertilization control, nutrient analysis of the soil, and pest and weed control. By investigating field images, a plant leaf can be used to identify the lack of nutrients or the presence of diseases. This study developed a system that identifies the macronutrient deficiency of potassium in soybean crops by analyzing leaves. The methodology of this study was developed using different abstractions (Matlab and FPGA) to obtain consolidated results and facilitate low-level abstraction. The main contribution of this study is developing a multilayer artificial neural network system for a reconfigurable device. The developed system was applied in the image segmentation to determine potassium deficiency using soybean leaves and compared with a high-level abstraction system. The results of the reconfigurable device show that the mean hit percentages are 92%, 96%, and 95% in the leaf, trefoil, and field, respectively. The mean square error values were in the range of 10-2 and the quality factor was between 8.5 and 9.0. Keywords: Artificial Neural Networks, Digital image processing, Potassium deficiency, Reconfigurable device, Soybean.
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基于FPGA的人工神经网络识别大豆缺钾症状
利用人工神经网络(ANN)识别大豆作物钾元素的缺乏。基于可重构装置的神经网络图像处理。神经元中数据的处理和表示采用浮点数。精准农业旨在利用不同的技术来管理种植阶段,例如通过图像监测大田作物、施肥控制、土壤养分分析以及害虫和杂草控制,来提高大田作物的产量。通过调查实地图像,植物叶片可以用来识别营养缺乏或疾病的存在。本研究通过对大豆叶片的分析,建立了大豆缺钾系统。本研究的方法是使用不同的抽象(Matlab和FPGA)来获得统一的结果并促进低级抽象。本研究的主要贡献是为可重构器件开发了多层人工神经网络系统。将该系统应用于大豆叶片缺钾图像分割,并与高级抽象系统进行了比较。结果表明,该装置在叶片、三叶草和田间的平均命中率分别为92%、96%和95%。均方误差在10 ~ 2之间,质量因子在8.5 ~ 9.0之间。关键词:人工神经网络,数字图像处理,缺钾,可重构装置,大豆
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来源期刊
Applied Engineering in Agriculture
Applied Engineering in Agriculture 农林科学-农业工程
CiteScore
1.80
自引率
11.10%
发文量
69
审稿时长
6 months
期刊介绍: This peer-reviewed journal publishes applications of engineering and technology research that address agricultural, food, and biological systems problems. Submissions must include results of practical experiences, tests, or trials presented in a manner and style that will allow easy adaptation by others; results of reviews or studies of installations or applications with substantially new or significant information not readily available in other refereed publications; or a description of successful methods of techniques of education, outreach, or technology transfer.
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