STEMM Institute Press
Science, Technology, Engineering, Management and Medicine
Application of Image Processing Techniques in Agricultural Remote Sensing UAVs
DOI: https://doi.org/10.62517/jike.202404202
Author(s)
Hui Liu, Wuping Liu, Yi Cao
Affiliation(s)
Foshan Polytechnic, Foshan, Guangdong, China
Abstract
This study aims to explore the application of image processing techniques in agricultural remote sensing UAVs to improve the accuracy and usability of agricultural remote sensing data. Through literature review and empirical research, the current application status, advantages, and challenges of image processing techniques in agricultural remote sensing UAVs were systematically studied. The study first analyzed and summarized the principles and characteristics of image processing techniques, and then conducted case studies and field investigations on their specific applications in image preprocessing, feature extraction, and image classification. The research results show that image processing techniques have high accuracy and usability in agricultural remote sensing UAVs, enabling the extraction of agricultural features and identification of crop diseases. However, challenges such as complex data processing, diverse method selection, and algorithm optimization still exist in the application of image processing techniques in agricultural remote sensing UAVs. The findings of this study have important implications for guiding the application and promotion of image processing techniques in agricultural remote sensing UAVs.
Keywords
Image Processing Techniques; Agricultural Remote Sensing UAVS; Image Preprocessing; Feature Extraction; Image Classification.
References
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