Training Course on AI for Feature Extraction from Geospatial Data
Training Course on AI for Feature Extraction from Geospatial Data delves into the transformative power of Artificial Intelligence (AI) and Machine Learning (ML) for geospatial data analysis and feature extraction
Course Overview
Training Course on AI for Feature Extraction from Geospatial Data
Introduction
Training Course on AI for Feature Extraction from Geospatial Data delves into the transformative power of Artificial Intelligence (AI) and Machine Learning (ML) for geospatial data analysis and feature extraction. As the volume and complexity of satellite imagery, drone data, and other remote sensing datasets explode, traditional manual methods for extracting meaningful information are becoming obsolete. This program provides participants with cutting-edge knowledge and practical skills to leverage deep learning architectures, computer vision techniques, and geospatial AI algorithms to automate the identification, classification, and quantification of features such as land cover, urban infrastructure, environmental changes, and more. You'll gain hands-on experience with industry-standard geospatial platforms and AI frameworks, empowering you to unlock unprecedented insights and drive data-driven decision-making across diverse sectors including environmental monitoring, urban planning, disaster management, and precision agriculture.
The curriculum focuses on developing a strong foundation in GeoAI principles, covering essential topics from data preprocessing and feature engineering to model training, validation, and deployment. Through practical exercises, real-world case studies, and project-based learning, you'll master techniques for object detection, image segmentation, change detection, and predictive analytics using spatial data. This course is designed to equip professionals with the advanced competencies needed to navigate the rapidly evolving landscape of geospatial intelligence, enabling them to solve complex problems, optimize resource allocation, and foster innovation in their respective fields. Prepare to transform raw geospatial data into actionable intelligence with the power of AI.
Course Duration
10 days
Course Objectives
- Comprehend the core concepts of Geospatial Artificial Intelligence (GeoAI) and its intersection with GIS, Remote Sensing, and Big Data Analytics.
- Acquire proficiency in preprocessing and preparing diverse geospatial datasets (satellite, aerial, LiDAR, drone imagery) for AI model consumption.
- Learn advanced feature engineering techniques specifically tailored for extracting robust features from complex spatial data.
- Implement Convolutional Neural Networks (CNNs) and other deep learning architectures for image classification, object detection, and semantic segmentation in geospatial contexts.
- Apply Recurrent Neural Networks (RNNs) and transformer models for time-series analysis and change detection in sequential geospatial data.
- Explore unsupervised learning methods for feature extraction and pattern recognition in unlabeled geospatial datasets.
- Gain hands-on experience with cloud-based geospatial AI platforms like Google Earth Engine and Microsoft Planetary Computer for scalable analysis.
- Develop robust workflows for training, validating, and evaluating AI models for geospatial feature extraction, ensuring model robustness and accuracy.
- Understand methodologies for enabling real-time feature extraction and predictive analytics from streaming geospatial data.
- Address ethical considerations and bias mitigation in the development and deployment of AI-powered geospatial solutions.
- Design and implement scalable geospatial AI workflows for processing large-volume, high-resolution imagery efficiently.
- Apply AI techniques for environmental monitoring, climate change assessment, deforestation detection, and natural resource management.
- Utilize AI for urban growth analysis, infrastructure mapping, and supporting smart city initiatives through geospatial feature extraction.
Organizational Benefits
- Automate tedious and time-consuming manual feature extraction processes, leading to significant time and cost savings and increased operational efficiency.
- Achieve higher accuracy in feature identification and classification, enabling more precise data-driven decisions and uncovering hidden patterns in vast datasets.
- Equip teams with the skills to process and analyze massive volumes of geospatial data efficiently using scalable AI techniques and cloud platforms.
- Develop predictive models for forecasting trends, identifying risks, and optimizing resource allocation across various domains, from disaster preparedness to urban development.
- Foster an environment of innovation by adopting cutting-edge GeoAI technologies, leading to the development of new products, services, and solutions.
- Gain deeper insights into resource distribution and utilization, enabling more effective planning and management in sectors like agriculture, forestry, and infrastructure.
- Enable rapid analysis of real-time geospatial data for critical applications such as disaster response, emergency management, and situational awareness.
- Minimize human subjectivity and error in data interpretation and feature extraction, leading to more consistent and reliable results.
Target Audience
- GIS Professionals & Analysts.
- Remote Sensing Specialists.
- Data Scientists & Machine Learning Engineers.
- Environmental Scientists & Researchers.
- Urban Planners & Civil Engineers.
- Agricultural Scientists & Agronomists.
- Disaster Management & Humanitarian Aid Professionals.
- Graduate Students & Academics
Course Outline
Module 1: Introduction to Geospatial AI (GeoAI)
- Defining GeoAI.
- The Geospatial Data Landscape.
- Challenges and Opportunities in Geospatial AI.
- Key AI Paradigms for.
- Ethical Considerations in GeoAI.
- Case Study: Analyzing the ethical implications of using facial recognition on public street-level imagery for urban planning.
Module 2: Geospatial Data Acquisition & Preprocessing
- Data Formats & Structures
- Data Collection & Sources.
- Image Rectification & Georeferencing.
- Radiometric & Atmospheric Correction.
- Data Resampling & Reprojection.
- Case Study: Preprocessing a time-series of Sentinel-2 images to monitor deforestation, including cloud masking and atmospheric correction.
Module 3: Fundamentals of Machine Learning for Geospatial Data
- Supervised Learning for Geospatial Classification.
- Unsupervised Learning for Spatial Clustering.
- Regression Models for Spatial Prediction
- Feature Engineering for ML
- Model Evaluation Metrics.
- Case Study: Using Random Forest to classify land cover types (forest, water, urban) from multispectral satellite imagery in a specific region.
Module 4: Introduction to Deep Learning for Imagery
- Neural Network Basics.
- Convolutional Neural Networks (CNNs).
- Transfer Learning & Pre-trained Models.
- Image Augmentation Techniques.
- Setting up Deep Learning Environments.
- Case Study: Applying a pre-trained ResNet model with fine-tuning to classify different crop types from high-resolution drone imagery.
Module 5: Object Detection in Geospatial Imagery
- Object Detection Architectures
- Bounding Box Regression & Non-Maximum Suppression.
- Training Custom Object Detectors.
- Evaluation Metrics for Object Detection.
- Applications of Object Detection in Geospatial.
- Case Study: Developing a custom YOLO model to detect and count specific types of vehicles (cars, trucks) in high-resolution aerial imagery for traffic analysis.
Module 6: Semantic Segmentation for Land Cover Mapping
- Semantic Segmentation Concepts
- Encoder-Decoder Architectures
- Preparing Pixel-Level Labels.
- Loss Functions for Segmentation.
- Post-processing Segmentation Outputs.
- Case Study: Using a U-Net model to create a detailed land cover map from multispectral satellite imagery, distinguishing between different vegetation types and impervious surfaces.
Module 7: Change Detection with AI
- Traditional Change Detection Methods.
- AI-Driven Change Detection.
- Unsupervised Change Detection.
- Supervised Change Detection.
- Time-Series Analysis for Change Monitoring.
- Case Study: Implementing a siamese neural network to detect urban growth and deforestation from multi-temporal satellite images of a rapidly developing area.
Module 8: Geospatial Feature Extraction with LiDAR Data
- Introduction to LiDAR Data.
- Point Cloud Preprocessing data.
- Deep Learning for Point Clouds.
- Feature Extraction from LiDAR.
- Integrating LiDAR with Imagery.
- Case Study: Using a deep learning model to automatically extract building footprints and tree canopy height from raw LiDAR point cloud data in an urban environment.
Module 9: Geospatial AI on Cloud Platforms
- Introduction to Cloud Geospatial Platforms.
- Accessing & Managing Big Geospatial Data.
- Scaling AI Workflows.
- GEE API & Python Integration
- Containerization (Docker) for GeoAI.
- Case Study: Performing a regional-scale land cover classification using a custom deep learning model trained and executed on Google Earth Engine.
Module 10: Advanced Feature Engineering & Representation Learning
- Beyond Pixel Values.
- Spatial Graph Neural Networks (GNNs).
- Self-Supervised Learning for Geospatial Data.
- Generative Adversarial Networks (GANs) for Geospatial.
- Interpretable AI in Geospatial.
- Case Study: Utilizing self-supervised learning techniques to extract robust features from unlabeled drone imagery for anomaly detection in agricultural fields.
Module 11: AI for Environmental Monitoring & Conservation
- Deforestation & Forest Cover Change Detection.
- Water Quality & Hydrological Monitoring.
- Biodiversity & Wildlife Tracking modeling.
- Pollution Mapping & Air Quality Monitoring.
- Climate Change Impact Assessment.
- Case Study: Monitoring the health and extent of coral reefs using AI-driven image segmentation on underwater drone imagery.
Module 12: AI in Urban Planning & Smart Cities
- Urban Growth & Sprawl Analysis.
- Infrastructure Mapping & Asset Management.
- Traffic Flow & Congestion Prediction.
- Land Use Optimization.
- Disaster Resilience & Risk Assessment.
- Case Study: Employing object detection and segmentation to create a comprehensive inventory of public infrastructure (e.g., streetlights, bus stops) from street-level imagery for smart city management.
Module 13: AI in Precision Agriculture & Food Security
- Crop Health Monitoring.
- Yield Prediction & Estimation.
- Automated Irrigation & Fertilization.
- Pest & Disease Detection.
- Land Suitability Analysis.
- Case Study: Developing an AI model to detect early signs of crop disease in large agricultural fields from drone-acquired hyperspectral imagery.
Module 14: AI for Disaster Management & Humanitarian Aid
- Rapid Damage Assessment.
- Flood Mapping & Prediction
- Wildfire Monitoring & Risk Assessment spread.
- Displacement Tracking & Camp Analysis.
- Resource Allocation & Logistics Optimization.
- Case Study: Implementing a deep learning model for rapid building damage assessment after an earthquake using pre- and post-event satellite imagery.
Module 15: Deploying & Integrating Geospatial AI Solutions
- Model Deployment Strategies.
- API Development for GeoAI Services.
- Web GIS Integration.
- Cloud Deployment
- Monitoring & Maintaining AI Models
- Case Study: Deploying a trained object detection model as a web service to automatically identify informal settlements from new satellite imagery uploads for continuous monitoring by an NGO.
Training Methodology
- Lectures & Discussions
- Live Coding & Demonstrations.
- Hands-on Labs & Exercises
- Case Study Analysis.
- Project-Based Learning
- Expert-Led Instruction
- Collaborative Learning.
- Access to Resources
- Q&A and Troubleshooting Sessions.
- Cloud Platform Integration.
Register as a group from 3 participants for a Discount
Send us an email: info@datastatresearch.org or call +254724527104
Certification
Upon successful completion of this training, participants will be issued with a globally- recognized certificate.
Tailor-Made Course
We also offer tailor-made courses based on your needs.
Key Notes
a. The participant must be conversant with English.
b. Upon completion of training the participant will be issued with an Authorized Training Certificate
c. Course duration is flexible and the contents can be modified to fit any number of days.
d. The course fee includes facilitation training materials, 2 coffee breaks, buffet lunch and A Certificate upon successful completion of Training.
e. One-year post-training support Consultation and Coaching provided after the course.
f. Payment should be done at least a week before commence of the training, to DATASTAT CONSULTANCY LTD account, as indicated in the invoice so as to enable us prepare better for you.