使用 mobilentv2 和 xception 对过滤和增强图像进行植物病害检测

Volkan Yamacli, Muhammet Kürşat Yildirim
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引用次数: 0

摘要

植物叶片图像的收集、分类和处理是本研究的基础。这些都是植物健康监测过程中至关重要的第一步,可确保得出可靠的结论。这项工作使用 Xception 和 MobileNetV2 等最先进的深度学习模型对植物叶片照片进行分类和检测,提取植物健康数据。为了评估系统的有效性,还对植物叶片照片应用了额外的滤镜,以调整亮度、对比度、清晰度和模糊度等特征。研究结果表明,所采用的深度学习模型可以准确判断植物叶片的健康状况,为今后的相关研究提供了重要的新信息。
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PLANT DISEASE DETECTION BY USING MOBILENTV2 AND XCEPTION ON FILTERED AND ENHANCED IMAGES
The gathering, sorting, and processing of plant leaf images serves as the foundation for this study. These are crucial first steps in the plant health monitoring process that guarantee reliable findings. The work classifies and detects plant leaf photos, extracting data on plant health using state-of-the-art deep learning models like Xception and MobileNetV2. In order to assess the effectiveness of the system, additional filters are applied to the photos of plant leaves in order to adjust characteristics like brightness, contrast, sharpness, and blur. The study's results show that the deep learning models employed could accurately determine the health of plant leaves, offering important new information for related future research.
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