Morning Glory Flower Detection in Aerial Images Using Semi-Supervised Segmentation with Gaussian Mixture Models

Author:

Valicharla Sruthi Keerthi1,Wang Jinge1,Li Xin12,Gururajan Srikanth3,Karimzadeh Roghaiyeh45,Park Yong-Lak5

Affiliation:

1. Lane Department of Computer Science and Electrical Engineering, West Virginia University, Morgantown, WV 26506, USA

2. Department of Computer Science, University at Albany, Albany, NY 12222, USA

3. Department of Aerospace and Mechanical Engineering, Saint Louis University, St. Louis, MO 63103, USA

4. Department of Plant Protection, Faculty of Agriculture, University of Tabriz, Tabriz 5166616471, Iran

5. Division of Plant and Soil Sciences, West Virginia University, Morgantown, WV 26506, USA

Abstract

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.

Funder

USDA NIFA AFRI Foundational and Applied Sciences Grant Program

West Virginia University

Publisher

MDPI AG

Reference52 articles.

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3. Bryson, C.T., and DeFelice, M.S. (2010). Weeds of the Midwestern United States and Central Canada, University of Georgia Press.

4. Jones, E.A., Contreras, D.J., and Everman, W.J. (2021). Biology and Management of Problematic Crop Weed Species, Elsevier.

5. Effects of integrated polyethylene and cover crop mulch, conservation tillage, and herbicide application on weed control, yield, and economic returns in watermelon;Price;Weed Technol.,2018

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