Dpt Dinov2 Giant Nyu
DPT model using DINOv2 as the backbone network for monocular depth estimation tasks
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Release Time : 11/1/2023
Model Overview
This model combines DINOv2's visual feature extraction capability with DPT's dense prediction architecture to predict depth information from a single image
Model Features
DINOv2 Backbone Network
Uses unsupervised pre-trained DINOv2 as the feature extractor, providing powerful visual representation capabilities
Dense Prediction Architecture
Based on the DPT architecture, capable of generating high-resolution dense depth prediction maps
High-Precision Depth Estimation
Can predict scene depth information from a single RGB image without stereo vision input
Model Capabilities
Monocular Depth Estimation
Image Depth Map Generation
Scene Understanding
Use Cases
Computer Vision
3D Scene Reconstruction
Estimates scene depth from a single image to assist in 3D scene reconstruction
Augmented Reality
Provides scene depth information for AR applications, enabling more realistic virtual object placement
Robotic Vision
Autonomous Navigation
Provides environmental depth information for robots to assist in path planning and obstacle avoidance
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