REMOTE SENSING AND GEOSPATIAL ANALYSIS WITH R: PROCESSING SATELLITE DATA, TIME SERIES MODELING, AND SCALABLE EARTH OBSERVATION WORKFLOWS (THE APPLIED DATA SCIENCE WITH R SERIES)

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Management number 233556860 Release Date 2026/06/27 List Price US$6.98 Model Number 233556860
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REMOTE SENSING WITH R 2026Satellite Imagery Processing, Geospatial Analysis, and Machine Learning with terra, raster, and sfRemote sensing isn’t the problem. Turning satellite data into decisions is.Every day, massive volumes of satellite imagery are generated from platforms like Landsat and Sentinel but most analysts never move beyond basic visualization or fragmented workflows. They download data, compute a few indices, and stop there. No scalability. No automation. No real-world impact.This book is built to fix that.REMOTE SENSING WITH R 2026 is a practical, systems-focused guide designed for analysts, data scientists, GIS professionals, and researchers who want to go beyond theory and build production-ready geospatial workflows using R.Instead of isolated techniques, this book walks through a complete pipeline from raw satellite data to actionable insight using modern tools like terra, sf, stars, and machine learning frameworks in R.You won’t just learn what remote sensing is you’ll learn how to make it work at scale.Inside This Book, You’ll Learn How To:Acquire and preprocess satellite imagery efficiently using APIs and automated pipelinesBuild clean, analysis-ready raster datasets for real-world applicationsPerform spectral analysis using NDVI, NDWI, and advanced indicesDetect land use changes and environmental trends using time-series dataApply machine learning models for land cover classification and predictionUse deep learning techniques for advanced image analysisDesign scalable geospatial models for environmental and urban systemsAutomate end-to-end remote sensing workflows in RVisualize and communicate spatial insights with clarity and impactDeploy production-ready pipelines for continuous monitoring and decision-makingWhat Makes This Book DifferentFocuses on real-world workflows, not isolated theoryBuilt around scalable systems and automation, not one-off analysisUses modern R geospatial tools aligned with current industry practiceEmphasizes decision-making and practical application over academic abstractionWho This Book Is ForData analysts and scientists working with geospatial dataGIS professionals transitioning into R-based workflowsResearchers and students seeking practical remote sensing skillsProfessionals in environmental monitoring, agriculture, and urban planningIf you’re tired of fragmented tutorials and want a structured, end-to-end system for remote sensing in R, this book delivers exactly that.No fluff. No theory overload. Just a clear path from satellite data to real-world results. Read more

ASIN B0GTW3V4P3
ISBN13 979-8253559291
Language English
Publisher Independently published
Dimensions 6 x 0.28 x 9 inches
Item Weight 8.5 ounces
Book 5 of 30 THE APPLIED DATA SCIENCE WITH R SERIES
Print length 122 pages
Publication date March 24, 2026

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