单色叶适应网络(MLAN):一种利用单色成像进行菠菜叶病检测的自适应方法。

IF 4 3区 生物学 Q2 BIOTECHNOLOGY & APPLIED MICROBIOLOGY
Meganathan Elumalai, Terrance Frederick Fernandez, R Kaviarasan, S Kannadhasan
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引用次数: 0

摘要

一个国家的经济增长在很大程度上依赖于农业生产力,特别是来自蔬菜和绿叶蔬菜的营养。菠菜富含铁、维生素和其他必需营养素,对维持人体组织、软骨和头发的健康起着至关重要的作用。然而,极端的夏季高温和植物病害会大大减少菠菜的产量,使其营养不足,更难获得。对影响菠菜叶片的细菌和真菌疾病实施改进的检测和分类,对于减少农药使用和提高农业产量至关重要。介绍了一种通过深度学习对象检测来识别菠菜叶片疾病的前沿方法。为了解决这些问题,DenseNet-121-DO模型作为开发自定义单色叶适应网(MLAN)的基础。在谷歌实验室的帮助下,菠菜叶被分类为半菠菜、咖喱叶、鸡腿叶和生菜。该模型显示了令人印象深刻的结果,达到了99.10%的准确率和98.16%的平均精度(mAP)。通过展示该系统在准确识别和分类菠菜叶病方面的有效性,这些结果提高了农业生产力,降低了农药成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Monochromatic LeafAdaptNet (MLAN): an adaptive approach to spinach leaf disease detection using monochromatic imaging.

A country's economic growth heavily relies on agricultural productivity, specifically nutrition derived from vegetables and leafy greens. Spinach, abundant in iron, vitamins, and other essential nutrients, plays a vital role in maintaining the health of human tissues, cartilage, and hair. However, extreme summer heat and plant diseases can significantly reduce spinach yields, making it less nutritious and harder to obtain. Implementing improved detection and classification of bacterial and fungal diseases affecting spinach leaves is crucial for minimizing pesticide use and enhancing agricultural output. A cutting-edge approach was introduced for identifying diseases in spinach leaves through deep learning object detection. To tackle these issues, the DenseNet-121-DO model served as the basis for developing the Custom Monochromatic LeafAdaptNet (MLAN). Spinach leaves were classified as Half-Spinach, Curry Leaves, Drumstick Leaves, and Lettuce, with the aid of Google-Colaboratory. This model displayed impressive results, achieving an accuracy of 99.10% and a mean Average Precision (mAP) of 98.16%. Such outcomes promote higher agricultural productivity and reduced pesticide costs by showcasing the system's effectiveness in accurately identifying and classifying spinach leaf diseases.

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来源期刊
World journal of microbiology & biotechnology
World journal of microbiology & biotechnology 工程技术-生物工程与应用微生物
CiteScore
6.30
自引率
2.40%
发文量
257
审稿时长
2.5 months
期刊介绍: World Journal of Microbiology and Biotechnology publishes research papers and review articles on all aspects of Microbiology and Microbial Biotechnology. Since its foundation, the Journal has provided a forum for research work directed toward finding microbiological and biotechnological solutions to global problems. As many of these problems, including crop productivity, public health and waste management, have major impacts in the developing world, the Journal especially reports on advances for and from developing regions. Some topics are not within the scope of the Journal. Please do not submit your manuscript if it falls into one of the following categories: · Virology · Simple isolation of microbes from local sources · Simple descriptions of an environment or reports on a procedure · Veterinary, agricultural and clinical topics in which the main focus is not on a microorganism · Data reporting on host response to microbes · Optimization of a procedure · Description of the biological effects of not fully identified compounds or undefined extracts of natural origin · Data on not fully purified enzymes or procedures in which they are applied All articles published in the Journal are independently refereed.
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