利用机器学习检测水稻叶片病害

Priyanka Kulkarni, Dr. Swaroopa Shastri
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引用次数: 0

摘要

水稻是印度种植面积最大的农作物之一,在生长过程中容易感染多种疾病。由于缺乏培训和经验,农民在人工识别这些病害时很难做出可靠的诊断。及时发现病害并对患病植株进行必要的治疗,对于确保水稻植株的健康和正常生长至关重要。在当今的农业领域,叶片病害的检测至关重要。因此,我们可以利用机器学习,通过图像处理来识别水稻叶片上的病害。农业领域急需一种能自动识别水稻植株问题的系统。我们提出了一种新型卷积神经网络(CNN)模型,用于对流行的水稻叶片病害进行分类。我们的算法可以从各种图片背景和拍摄情况中识别水稻叶片病害。我们的目标是对背景复杂、光照条件各异的水稻叶片病害图片进行分类。基于 CNNs 的模型准确率达到 95%。水稻病害识别的结果证明了建议方法的有效性。索引词条:病害检测、CNN 算法、水稻叶片、机器学习。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Rice Leaf Diseases Detection Using Machine Learning
One of India's most widely grown crops, rice is susceptible to a wide range of illnesses during the growing process. Due to a lack of training and experience, farmers have a hard time making reliable diagnoses when identifying these illnesses manually. Timely detection of diseases and the application of necessary treatments to afflicted plants are crucial for ensuring healthy and normal development of rice plants. In today's agricultural fields, the detection of leaf diseases is of the utmost importance. Consequently, we may use machine learning to identify diseases in rice leaves by image processing. The agriculture sector is in dire need of a system that can identify rice plant problems automatically. We present a novel convolutional neural network (CNN) model for the classification of prevalent rice leaf diseases. From a variety of picture backdrops and capture situations, our algorithm can identify rice leaf illnesses. Classifying disease pictures in rice leaves with complicated backgrounds and varying lighting conditions is our goal. We reach 95% accuracy with the CNNs based model. The outcomes for disease identification in rice demonstrate the effectiveness of suggested approach. Disease detection, CNN algorithm, rice leaf, and machine learning are index terms.
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