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Glpn Nyu

Developed by vinvino02
The GLPN model is trained on the NYUv2 dataset for monocular depth estimation, combining global and local path networks to achieve high-precision depth prediction.
Downloads 7,699
Release Time : 3/2/2022

Model Overview

The Global-Local Path Network (GLPN) model is used for monocular depth estimation tasks, employing SegFormer as the backbone network with an added lightweight head, fine-tuned on the NYUv2 dataset.

Model Features

Global-Local Path Network
Combines global context and local detail information to improve depth estimation accuracy
Lightweight design
Adds a lightweight head to the SegFormer backbone network, maintaining efficient inference speed
Vertical CutDepth technique
Utilizes the proposed Vertical CutDepth technique to optimize depth prediction

Model Capabilities

Monocular image depth estimation
3D scene structure understanding
Indoor environment depth prediction

Use Cases

Computer vision
Indoor scene 3D reconstruction
Predict depth information from a single indoor photo
Can generate accurate depth maps for 3D reconstruction
Augmented reality applications
Provide scene depth information for AR applications
Supports accurate virtual object placement and occlusion handling
Robotic navigation
Environmental perception
Help robots understand the 3D structure of their surroundings
Can be used for obstacle avoidance and path planning
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