"用于植物叶片病害分类和损害检测的语义分割:一种深度学习方法"

IF 6.3 Q1 AGRICULTURAL ENGINEERING Smart agricultural technology Pub Date : 2024-08-10 DOI:10.1016/j.atech.2024.100526
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引用次数: 0

摘要

农业维持着印度大部分农村人口的生计,但手工操作和病害管理仍面临挑战。为了解决这些问题,本文利用先进的深度学习技术提出了一种自动植物叶片损伤检测和病害识别系统。所提出的方法包括六个阶段:第一,利用 YOLOv8 从无人机图像中识别感兴趣区域;第二,利用 DeepLabV3+ 去除背景并促进病害分类;第三,采用 CNN 模型进行准确的病害分类,实现较高的训练和验证准确率(分别为 96.97 % 和 92.89 %);第四,利用 UNet 语义分割在像素级进行精确的病害检测,评估准确率为 99 %;第五,评估病害严重程度;第六,根据病害类型和损害状态提出有针对性的补救措施。使用植物村数据集进行的实验分析表明,所提出的方法在检测苹果、番茄和玉米等植物的各种缺陷方面非常有效。这种自动化方法有望提高印度及其他地区的农业生产率和病害管理水平。
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"Semantic segmentation for plant leaf disease classification and damage detection: A deep learning approach"

Agriculture sustains the livelihoods of a significant portion of India's rural population, yet challenges persist in manual practices and disease management. To address these issues, this paper presents an automated plant leaf damage detection and disease identification system leveraging advanced deep learning techniques. The proposed method consists of six stages: first, utilizing YOLOv8 for region of interest identification from drone images; second, employing DeepLabV3+ for background removal and facilitating disease classification; third, implementing a CNN model for accurate disease classification achieving high training and validation accuracies (96.97 % and 92.89 %, respectively); fourth, utilizing UNet semantic segmentation for precise damage detection at a pixel level with an evaluation accuracy of 99 %; fifth, evaluating disease severity; and sixth, suggesting tailored remedies based on disease type and damage state. Experimental analysis using the Plant Village dataset demonstrates the effectiveness of the proposed method in detecting various defects in plants such as apple, tomato, and corn. This automated approach holds promise for enhancing agricultural productivity and disease management in India and beyond.

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