A comprehensive machine learning and deep learning frameworks for tree species identification from remote sensing images
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Abstract
Agriculture monitoring is crucial for ensuring food security and
newlinesustainability in the face of a growing global population. Monitoring such aspects
newline-as soil moisture, nutrients, weather conditions, pests, and diseases helps optimize
newlineresource allocation and minimize environmental impact. By utilizing advanced
newlinetechnologies and data-driven approaches, it enables farmers to efficiently manage
newlinevarious aspects of agricultural systems and empowers farmers to take timely
newlineactions to enhance crop productivity, irrigation, fertilization, and pest control
newlinestrategies. Agriculture monitoring contributes to resilient and efficient agricultural
newlinesystems by providing valuable insights and enabling the adoption of sustainable
newlinepractices. This thesis focuses on the impact of agriculture monitoring, particularly
newlinein the context of tree species identification. Tree species identification is crucial for biodiversity conservation, forestry, urban planning, and ecological research. Accurate identification of trees enhances our understanding of tree ecology, distribution patterns, and potential uses. It aids in assessing species abundance, diversity, and distribution, facilitating effective conservation strategies, and protecting endangered species.
newlineAdditionally, it helps evaluate the contributions of different species to ecosystem
newlineservices like carbon sequestration and soil conservation, supporting informed land
newlinemanagement decisions. However, conventional methods for identifying tree
newlinespecies are time-consuming and require expertise, posing challenges for
newlinenon-specialists. Seasonal variations, specific characteristics, incomplete datasets,
newlineand cryptic species further complicate the identification process.-
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