论文标题

使用基于图像处理的技术和机器学习算法自动萝卜枯萎检测

Automatic Radish Wilt Detection Using Image Processing Based Techniques and Machine Learning Algorithm

论文作者

Patankar, Asif Ashraf, Moon, Hyeonjoon

论文摘要

图像处理,计算机视觉和模式识别一直在各种农业应用中起着至关重要的作用,例如物种检测,识别,分类,鉴定,植物生长阶段,植物疾病检测等等。另一方面,越来越需要使用无人驾驶汽车(UAV)捕获高分辨率图像,并开发出更好的算法,以便找到高度准确的结果并取得了结果。在本文中,我们提出了一种基于分割和提取技术,以检测萝卜作物中的镰刀菌。最近的WILT检测算法是基于图像处理技术或常规的机器学习算法。但是,我们的方法基于混合算法,该算法结合了图像处理和机器学习。首先,将作物图像分为三个部分,其中包括健康的植被,地面和包装材料。基于HSV决策树算法,所有三个段都与图像隔离。其次,将提取的片段一起求和到与图像相同分辨率的空画布中,并产生一个新图像。第三,将此新图像与原始图像进行了比较,最终的嘈杂图像被提取了枯萎的痕迹。最后,应用K均值算法来消除噪声并从中提取准确的枯萎。此外,使用轮廓方法将提取的枯萎病映射在原始图像上。提议的算法组合适当地检测到了枯萎病,这超过了使用图像处理技术或机器学习的传统实践。

Image processing, computer vision, and pattern recognition have been playing a vital role in diverse agricultural applications, such as species detection, recognition, classification, identification, plant growth stages, plant disease detection, and many more. On the other hand, there is a growing need to capture high resolution images using unmanned aerial vehicles (UAV) and to develop better algorithms in order to find highly accurate and to the point results. In this paper, we propose a segmentation and extraction-based technique to detect fusarium wilt in radish crops. Recent wilt detection algorithms are either based on image processing techniques or conventional machine learning algorithms. However, our methodology is based on a hybrid algorithm, which combines image processing and machine learning. First, the crop image is divided into three segments, which include viz., healthy vegetation, ground and packing material. Based on the HSV decision tree algorithm, all the three segments are segregated from the image. Second, the extracted segments are summed together into an empty canvas of the same resolution as the image and one new image is produced. Third, this new image is compared with the original image, and a final noisy image, which contains traces of wilt is extracted. Finally, a k-means algorithm is applied to eliminate the noise and to extract the accurate wilt from it. Moreover, the extracted wilt is mapped on the original image using the contouring method. The proposed combination of algorithms detects the wilt appropriately, which surpasses the traditional practice of separately using the image processing techniques or machine learning.

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