Thai University RankingsRESEARCH RADAR
← Back to research database
งานใหม่ที่น่าจับตา

Deep and machine learning in plant variety classification: A systematic global review of image processing approaches

IMPACT SIGNAL76/100
01

Information from the abstract

The application of image processing techniques for plant variety identification has grown substantially over the past two decades, driven by the increasing availability of digital plant imagery and global focus on biodiversity conservation. The present work aims to review recent studies and research in agriculture that utilize various machine/deep learning algorithms, image acquisition techniques, image databases, and accuracy assessment methods for plant variety classification. The PRISMA process was followed to systematically review 83 highly-relevant studies on image processing techniques for plant variety identification, published in the last decade (2015–2025). Deep learning algorithms, especially convolutional neural network variants, are predominantly employed and have demonstrated superior accuracy in plant variety identification. Integrating traditional machine learning techniques with optimization algorithms and handcrafted features further enhances model robustness, paving the way for scalable, real-world agricultural applications. Image data acquisition in most studies was conducted either through publicly available image databases or via smartphone-based imaging. Over the past decade, cereal crop varieties have been the most frequently studied in classification research. Overall, this global review offers valuable insights for researchers, practitioners, and policymakers to enhance the efficiency and accuracy of data-driven plant variety classification.

02

Why this record is monitored

This record has an Impact Signal of 76/100 based on recency, source, collaboration, and bibliographic signals. It prioritizes monitoring and is not a judgment of research quality.

Related topics: Smart Agriculture and AI · Spectroscopy and Chemometric Analyses · Innovations in Aquaponics and Hydroponics Systems

03

Thai researcher and institutional participation

Pavit Tangwongkit · Subhankar Debnath · Avishek Datta · Sushil Kumar Himanshu · Asian Institute of Technology

04

Data limitations

This page is a bibliographic record based on abstract-level information, not a full analysis or quality assessment. Verify the DOI and original article before citation.