利用高斯混杂模型进行半监督分割检测航空图像中的牵牛花

Sruthi Keerthi Valicharla, Jinge Wang, Xin Li, Srikanth Gururajan, Roghaiyeh Karimzadeh, Yong-Lak Park
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引用次数: 0

摘要

外来入侵的牵牛花--紫花苕(旋花科)--对葡萄园构成了越来越大的挑战,它不仅阻碍葡萄的收获,还是病害病原体的第二宿主,因此需要先进的检测和控制策略。本研究利用小型固定翼无人机系统(UAS)和 RGB 摄像机获取的航空图像,引入了一种新型自动图像分析框架,用于大规模检测紫花地丁。这项研究旨在评估航空检测与地面验证调查所测得的实际侵扰情况之间的取样保真度。无人机系统在有紫花楹侵扰的 16 块葡萄园地块和没有紫花楹侵扰的另外 16 块地块上进行了系统操作。我们使用了一种半监督分割模型,该模型结合了高斯混杂模型(GMM)和期望最大化算法,用于检测和计数紫花蓟马的花朵。我们将 GMM 的花朵检测能力与传统的 K-means 方法进行了比较。研究结果表明,GMM 在所有 16 块受侵染的地块中都检测到了紫花楹花的存在,I 类和 II 类错误率均为 0%,而 K-means 方法的 I 类和 II 类错误率分别为 0% 和 6.3%。GMM 和 K-means 方法分别检测到 76% 和 65% 的花。与传统方法相比,这些结果凸显了基于 GMM 的分割模型在准确检测和量化 I. purpurea 花朵方面的有效性。这项研究证明了固定翼无人机系统与自动图像分析相结合用于葡萄园紫花鸢尾花检测的效率,无需依赖数据驱动的深度学习模型即可取得成功。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Morning Glory Flower Detection in Aerial Images Using Semi-Supervised Segmentation with Gaussian Mixture Models
The invasive morning glory, Ipomoea purpurea (Convolvulaceae), poses a mounting challenge in vineyards by hindering grape harvest and as a secondary host of disease pathogens, necessitating advanced detection and control strategies. This study introduces a novel automated image analysis framework using aerial images obtained from a small fixed-wing unmanned aircraft system (UAS) and an RGB camera for the large-scale detection of I. purpurea flowers. This study aimed to assess the sampling fidelity of aerial detection in comparison with the actual infestation measured by ground validation surveys. The UAS was systematically operated over 16 vineyard plots infested with I. purpurea and another 16 plots without I. purpurea infestation. We used a semi-supervised segmentation model incorporating a Gaussian Mixture Model (GMM) with the Expectation-Maximization algorithm to detect and count I. purpurea flowers. The flower detectability of the GMM was compared with that of conventional K-means methods. The results of this study showed that the GMM detected the presence of I. purpurea flowers in all 16 infested plots with 0% for both type I and type II errors, while the K-means method had 0% and 6.3% for type I and type II errors, respectively. The GMM and K-means methods detected 76% and 65% of the flowers, respectively. These results underscore the effectiveness of the GMM-based segmentation model in accurately detecting and quantifying I. purpurea flowers compared with a conventional approach. This study demonstrated the efficiency of a fixed-wing UAS coupled with automated image analysis for I. purpurea flower detection in vineyards, achieving success without relying on data-driven deep-learning models.
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