Métodos para Análise de Dano Foliar e Reconhecimento de Pragas na Agricultura Usando Técnicas Computacionais
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Universidade Federal de Goiás
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The application of computer techniques in agriculture has significantly improved rural activities, particularly crop monitoring, plant protection, and overall yield. This thesis emphasizes leaf analysis as a valuable tool for inspecting and continually improving plantations, as well as supporting decision-making and agricultural management interventions.
Changes in leaves can lead to irreparable losses in productivity, the delivery of low-quality
products, and significant economic impacts. To prevent production failures, it is crucial
to efficiently monitor and identify whether pests are affecting productivity or remaining
within acceptable levels. However, damage to the leaf silhouette can limit automated analysis, and the diversity in leaf shape and damage levels makes it challenging to delineate
the compromised edge regions. This study introduces original computer-based methods
for defoliation estimate, damage detection, leaf surface reconstruction, and pest classification that are prepared to address damage to the leaf boundaries. Notable aspects of this
study include template matching for pattern recognition and pest classification using only
traces of leaf damage. The methodological design of the study consists of a literature review, investigation of digital image processing techniques, computer vision and machine
learning, software development, and formulation of experimental tests. The results indicate high accuracy in estimating leaf area loss with a linear correlation of 0.98, damage
detection and pest classification with assertiveness above 90%, and visual restoration of
regions affected by herbivory with SSIM scores between 0.68 and 0.94.
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VIEIRA, GABRIEL DA SILVA. Methods for Analyzing Leaf Damage and Recognizing Agricultural Pests Using Computer Techniques. Goiânia, 2024. Tese (Doutorado em Ciência da Computação) - Instituto de Informática, Universidade
Federal de Goiás, Goiânia, 2024.