English

Domain-Transferred Synthetic Data Generation for Improving Monocular Depth Estimation

Computer Vision and Pattern Recognition 2024-05-03 v1 Artificial Intelligence Image and Video Processing

Abstract

A major obstacle to the development of effective monocular depth estimation algorithms is the difficulty in obtaining high-quality depth data that corresponds to collected RGB images. Collecting this data is time-consuming and costly, and even data collected by modern sensors has limited range or resolution, and is subject to inconsistencies and noise. To combat this, we propose a method of data generation in simulation using 3D synthetic environments and CycleGAN domain transfer. We compare this method of data generation to the popular NYUDepth V2 dataset by training a depth estimation model based on the DenseDepth structure using different training sets of real and simulated data. We evaluate the performance of the models on newly collected images and LiDAR depth data from a Husky robot to verify the generalizability of the approach and show that GAN-transformed data can serve as an effective alternative to real-world data, particularly in depth estimation.

Keywords

Cite

@article{arxiv.2405.01113,
  title  = {Domain-Transferred Synthetic Data Generation for Improving Monocular Depth Estimation},
  author = {Seungyeop Lee and Knut Peterson and Solmaz Arezoomandan and Bill Cai and Peihan Li and Lifeng Zhou and David Han},
  journal= {arXiv preprint arXiv:2405.01113},
  year   = {2024}
}
R2 v1 2026-06-28T16:13:43.140Z