基于神经网络的土壤检测与分类

A. Sowjanya, K. Swaroop, Sandeep Kumar, Arpit Jain
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引用次数: 1

摘要

土壤分类是将土壤集分解为具有相似属性和相似行为的特定集合。实际上,许多国家都进行产品贸易,其中那些出口高质量园艺产品的国家尤其依赖土壤质量。这样,对土壤质量的识别和分类就有了很大的意义。对土壤种类的认识有助于避免园艺产品数量的不幸。介绍了一种基于全连接网络(FCN)、深度学习模型的土壤种类识别方法。土壤分类包括图像采集、特征提取和分类等步骤。该方法的平均准确率为97.2%,平均平均值为65.27,平均能量为0.0298。该模型对泥炭土、砂质粘土、粉质砂和人类粘土类型进行了有效的分类。关键词:分类;全连接网络;深度学习,土壤检测,土壤分类。
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Neural Network-based Soil Detection and Classification
Soil classification is the disintegration of soil sets to specific gatherings having like attributes and comparable behaviors. Practically many nations do product trading, in which those nations sending out higher horticulture products are especially rely upon the soil qualities. In this manner, soil quality recognition and classification are a lot of significant. Recognition of the soil kind assists with keeping away from horticultural product amount misfortune. This paper introduces a fully connected network (FCN), deep learning model-based recognition of the soil kinds. Soil classification incorporates steps like image acquisition, feature extraction, and classification. The proposed method produces an average accuracy of 97.2% with an average mean of 65.27 and average energy of 0.0298. The proposed model classifies peat, sandy Clay, Silty Sand, and Human clay soil types effectively. Keywords: Classification; Fully Connected Network; Deep Learning, Soil Detection, Soil Classification.
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