LBM Depth
Image depth estimation model based on Latent Bridging Matching (LBM) technology, achieving rapid image transformation through latent space bridging
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Release Time : 4/2/2025
Model Overview
This model employs Latent Bridging Matching technology, specifically designed to generate depth maps from input images. Based on the method proposed in the paper 'LBM: Fast Image Transformation via Latent Bridging Matching', it features high efficiency and scalability.
Model Features
Efficient Latent Space Transformation
Achieves rapid image transformation through Latent Bridging Matching technology, reducing computational overhead
Multi-dataset Adaptation
Performs well on multiple standard datasets including NYUv2 and Kitti
Lightweight Inference
Supports single-step sampling (num_sampling_steps=1) for fast inference
Model Capabilities
Image depth estimation
Image-to-image transformation
Use Cases
Computer Vision
3D Scene Reconstruction
Generates depth maps from single images for 3D scene reconstruction
Achieves 5.6 AbsRel metric on NYUv2 dataset
Autonomous Driving Perception
Provides environmental depth information for autonomous driving systems
Achieves 9.4 AbsRel metric on Kitti dataset
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