基于图像处理的农业部门绩效提升

Ali Hassan, Faisal Rehman, M. Ashraf, A. Ashfaq, Hana Sharif, Rana Zeeshan, Salman Akram, Hira Akram
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引用次数: 0

摘要

在农业和园艺领域,机器视觉和软计算方法在克服利用各种植物成分识别植物疾病的传统方法的局限性方面显示出了希望。在果实分级、叶片损伤区域识别等相关研究中,图像分割是第一步,也是最重要的一步。为了更有效地诊断该疾病,本研究提出了一种采用不同植物成分(如水果、花和叶)的多种作物的稳健方法。在分割前,对获取的实时图像进行光照归一化和色彩空间转换预处理。为了提高分割效果,对传统的机器学习、图像处理和深度学习方法方案进行了适应性调整,并实现了边缘检测变换。为了将患病区域从照片中分离出来,调整了机器学习方法的目标函数,并升级了聚类中心。通过拍摄各种类型的植物疾病图像,包括许多常见的植物,如葡萄、苹果和番茄,可以注意到许多种类的植物疾病。在广泛的人类观察和计算时间方面,所取得的结果都是优越的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Enhancement in Agriculture Sector Based on Image Processing
In the realm of agriculture and horticulture, machine vision and soft computing approaches have shown promise in overcoming the limitations of traditional methods for identifying plant illnesses utilizing various plant components. In all relevant studies such as fruit grading, leaf lesion area identification, and so on, image segmentation is the first and most important step. In order to diagnose the illness more effectively, a robust approach for numerous crops employing diverse plant components such as Fruit, Flower, and Leaf has been suggested in this study. Before segmentation, the acquired real-time pictures are pre-processed for illumination normalization and color space conversion. To enhance the segmentation outcomes, the conventional ML, image processing and deep learning approaches scheme has been made adaptable, and edge detection transformations have been implemented. To separate the sick regions from photos, the aim function of the Machine Learning approach has been adjusted, and cluster centers have also been upgraded. The many classes of plant illnesses noticed by shooting various types of images of diseases in plants, including many popular plants such as grapes, apple, and tomato. In terms of both broad human observation and computing time, the results achieved are superior.
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