π Foundations of 3D Data Representation: Understand point clouds, voxels, meshes, and volumes in 3D Computer Vision.
π€ Deep Learning Architectures: Master 3D CNNs, PointNet, PointNet++, 3D U-Net, and Frustum-PointNet.
π§ͺ 3D Data Processing: Learn techniques in preprocessing, noise cleaning, data augmentation, and registration.
ποΈ 3D Datasets & Evaluation: Hands-on with ShapeNet, ModelNet, KITTI, ScanNet and benchmark evaluation.
π§ Transfer Learning & Fine-Tuning: Utilize pretrained 3D models for accelerated development and research.
π§© 3D Applications: Explore object classification, detection, semantic/instance segmentation, and more.
π Generative 3D Models: Learn how GANs and VAEs are applied to generate realistic 3D data.
π₯ Industry Use-Cases: Dive into applications in healthcare, robotics, autonomous driving, and entertainment.
π Modules: 15 well-structured, progressive learning modules.
π Topics Covered: 150+ practical topics across CV & AI.
π οΈ Mini Applications: 15 real-world mini projects included.
π₯ Video Lectures: 45+ hours of high-quality recorded content.
π§ͺ Interactive Quizzes: Test understanding after every module.
π Assignments: Hands-on coding and theory exercises per module.
π Capstone Project: Build an end-to-end AI project based on real-world problem statements.
ποΈ Curated Datasets: Industry-grade data for hands-on practice.
π§βπ» Structured Jupyter Notebooks: Every topic comes with downloadable notebooks.
π― Tools Covered: Python, OpenCV, PyTorch3D, MeshIO, Albumentations, and more.
π» Source Code: Access to all mini and capstone project source files.
π Certificate of Completion: Verified certificate with project evaluation included.
π Doubt Support: Via email/forum or live sessions (if opted).
π 1:1 Mentorship: Optional booking-based expert mentoring.
π§ Interview Prep: Bonus guidance with curated interview questions.
π Docs & PPTs: Downloadable reference materials and explainable visuals.