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Depth Anything V2 Metric Outdoor Large Hf

Developed by depth-anything
A fine-tuned version of Depth Anything V2 for outdoor metric depth estimation tasks, trained on the synthetic dataset Virtual KITTI
Downloads 3,662
Release Time : 7/26/2024

Model Overview

This model is a fine-tuned version of Depth Anything V2, specifically designed for outdoor metric depth estimation tasks. It employs the DPT architecture with a DINOv2 backbone, trained on both synthetic and real data to provide accurate depth prediction capabilities.

Model Features

Optimized for Outdoor Scenes
Fine-tuned specifically for outdoor scenes, trained on the Virtual KITTI dataset to optimize depth estimation performance in outdoor environments.
Large-scale Training Data
Trained on approximately 600,000 synthetic annotated images and 62 million real unlabeled images.
Transformers Compatibility
The model checkpoint is fully compatible with the transformers library, facilitating easy integration and usage.
Multiple Size Options
Offers three model size options: Small (24.8M), Base (97.5M), and Large (335.3M).

Model Capabilities

Outdoor scene depth estimation
Zero-shot depth prediction
Metric depth estimation

Use Cases

Autonomous Driving
Road Scene Depth Perception
Used for depth perception of road environments in autonomous driving systems.
Provides accurate outdoor scene depth information.
Robotic Navigation
Outdoor Environment Mapping
Assists robots in constructing 3D maps of outdoor environments.
Enables accurate obstacle distance estimation.
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