Classification of Nutritional Deficiencies in Cabbage Leave Using Random Forest

Nuparam Chauhan, R. Shukla, A. Sengar, Anurag Gupta
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Abstract

Now a day agriculture is very important in India since it is a growing nation. But generally the crop production attained by farmers would be much below the optimal production. It is very important to correctly detecting and identifying the crop diseases to enhance the profit of the formers and the stakeholder. The main reason for the crop production gap is due to the lack of essential soil nutrients and irrigation in the agricultural farms. To escalate the crop production, it is essential to balance the chemical elements or nutrients present in the soil with varying parameters of soil like the pH and soil moisture. Crop productivity can be increased to optimum level by efficient soil nutrient management. In case of Nutrient deficiencies, visual symptoms will appear on the leaf. This paper put forwards a method to identify the nutrient deficiencies of plants by making use of visual symptoms appearing on the leaves by Classification. Eight types of deficiencies i.e. N, P, K, Ca, B, Zn and Mg will be studied. The proposed study consists of creation and pre¬processing of a set of images consisting of nutrient deficient and healthy leaves, feature extraction and by using Random Forest performing multi class classification of nutrient deficient leaves. Evaluation of tomato leaf from the dataset focuses on recognizing the visual detection and indications of nutritional deficiencies. The proposed architecture achieves the 98.30% accuracy with the model size of 9.20 MB.
利用随机森林技术对白菜叶片营养缺乏症进行分类
现在农业对印度来说非常重要,因为它是一个发展中的国家。但一般来说,农民获得的作物产量将远远低于最优产量。正确检测和识别作物病害对提高作物种植户和利益相关者的利益具有重要意义。造成作物生产缺口的主要原因是农业农场缺乏必需的土壤养分和灌溉。为了提高作物产量,必须平衡土壤中存在的化学元素或营养物质与不同的土壤参数,如pH值和土壤水分。通过有效的土壤养分管理,可以将作物生产力提高到最佳水平。在营养缺乏的情况下,叶子会出现视觉症状。本文提出了一种利用叶片视觉症状分类识别植物营养缺乏症的方法。将研究8种类型的缺陷,即N, P, K, Ca, B, Zn和Mg。本研究主要包括对营养不足和健康叶片图像进行生成和预处理、特征提取以及利用随机森林对营养不足叶片进行多类分类。从数据集对番茄叶片的评估侧重于识别视觉检测和营养缺乏的迹象。模型大小为9.20 MB,准确率为98.30%。
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