Foundational 3D Principles
Understand algorithms and structures behind 3D data manipulation and real-world geometry.
Camera Parameters Mastery
Learn camera models, distortion handling, and how they influence 3D reconstruction.
Point Cloud Neighborhood Operations
Perform KD-tree search, merging, stitching, and ground detection using Open3D.
Feature Extraction & Descriptors
Estimate keypoints, normals, SHOT/FPFH descriptors to represent 3D features.
Robust Feature Matching
Match features across datasets for alignment, recognition, and reconstruction tasks.
Advanced Registration Techniques
Use ICP, RANSAC, FGR, and hybrid methods for aligning multi-source 3D data.
Segmentation, Clustering & Compression
Apply DBSCAN, KMeans, and compression via quantization/downsampling.
Tool Proficiency
Gain expertise in Python, NumPy, Open3D, MeshIO, PyntCloud, and visualization libraries.
Hands-On Implementation
Practice with real datasets and build pipelines for robotics, AR/VR, and perception.
Assessment-Driven Mastery
Reinforce learning with structured quizzes, assignments, and project-based validation.