Monocular Depth Estimation: From Neural Networks to Depth Anything V2
Neural Breakdown with AVB via YouTube
Overview
Learn about the evolution and technical aspects of Monocular Depth Estimation in this 13-minute video exploring key research papers including MiDAS, Depth Anything V1, and Depth Anything V2. Discover fundamental concepts like disparity space, scale and shift invariant loss, gradient matching loss, and cut mix augmentation techniques used in neural networks for estimating depth from 2D images. Explore how synthetic datasets and semantic assisted perception enhance depth estimation capabilities, with detailed explanations supported by animations and visual aids. Gain insights into the architectural improvements and methodological advances that have shaped modern depth estimation models, with comprehensive coverage from basic principles to cutting-edge implementations.
Syllabus
- Intro
- MiDAS
- Depth Anything V1
- Disparity Space
- Scale and Shift Invariant Loss
- Gradient Matching Loss
- Cut Mix Augmentation
- Semantic Assisted Perception
- Synthetic Datasets
- Depth Anything V2
Taught by
Neural Breakdown with AVB