Saved in:
Bibliographic Details
Main Authors: Toussaint, Nicolas, Colleoni, Emanuele, Sanchez-Matilla, Ricardo, Sutcliffe, Joshua, Thompson, Vanessa, Asad, Muhammad, Luengo, Imanol, Stoyanov, Danail
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2509.18642
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866916963915137024
author Toussaint, Nicolas
Colleoni, Emanuele
Sanchez-Matilla, Ricardo
Sutcliffe, Joshua
Thompson, Vanessa
Asad, Muhammad
Luengo, Imanol
Stoyanov, Danail
author_facet Toussaint, Nicolas
Colleoni, Emanuele
Sanchez-Matilla, Ricardo
Sutcliffe, Joshua
Thompson, Vanessa
Asad, Muhammad
Luengo, Imanol
Stoyanov, Danail
contents Monocular relative and metric depth estimation has seen a tremendous boost in the last few years due to the sharp advancements in foundation models and in particular transformer based networks. As we start to see applications to the domain of endoscopic images, there is still a lack of robust benchmarks and high-quality datasets in that area. This paper addresses these limitations by presenting a comprehensive benchmark of state-of-the-art (metric and relative) depth estimation models evaluated on real, unseen endoscopic images, providing critical insights into their generalisation and performance in clinical scenarios. Additionally, we introduce and publish a novel synthetic dataset (EndoSynth) of endoscopic surgical instruments paired with ground truth metric depth and segmentation masks, designed to bridge the gap between synthetic and real-world data. We demonstrate that fine-tuning depth foundation models using our synthetic dataset boosts accuracy on most unseen real data by a significant margin. By providing both a benchmark and a synthetic dataset, this work advances the field of depth estimation for endoscopic images and serves as an important resource for future research. Project page, EndoSynth dataset and trained weights are available at https://github.com/TouchSurgery/EndoSynth.
format Preprint
id arxiv_https___arxiv_org_abs_2509_18642
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Zero-shot Monocular Metric Depth for Endoscopic Images
Toussaint, Nicolas
Colleoni, Emanuele
Sanchez-Matilla, Ricardo
Sutcliffe, Joshua
Thompson, Vanessa
Asad, Muhammad
Luengo, Imanol
Stoyanov, Danail
Computer Vision and Pattern Recognition
Monocular relative and metric depth estimation has seen a tremendous boost in the last few years due to the sharp advancements in foundation models and in particular transformer based networks. As we start to see applications to the domain of endoscopic images, there is still a lack of robust benchmarks and high-quality datasets in that area. This paper addresses these limitations by presenting a comprehensive benchmark of state-of-the-art (metric and relative) depth estimation models evaluated on real, unseen endoscopic images, providing critical insights into their generalisation and performance in clinical scenarios. Additionally, we introduce and publish a novel synthetic dataset (EndoSynth) of endoscopic surgical instruments paired with ground truth metric depth and segmentation masks, designed to bridge the gap between synthetic and real-world data. We demonstrate that fine-tuning depth foundation models using our synthetic dataset boosts accuracy on most unseen real data by a significant margin. By providing both a benchmark and a synthetic dataset, this work advances the field of depth estimation for endoscopic images and serves as an important resource for future research. Project page, EndoSynth dataset and trained weights are available at https://github.com/TouchSurgery/EndoSynth.
title Zero-shot Monocular Metric Depth for Endoscopic Images
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2509.18642