Jove
Visualize
Contact Us
JoVE
x logofacebook logolinkedin logoyoutube logo
ABOUT JoVE
OverviewLeadershipBlogJoVE Help Center
AUTHORS
Publishing ProcessEditorial BoardScope & PoliciesPeer ReviewFAQSubmit
LIBRARIANS
TestimonialsSubscriptionsAccessResourcesLibrary Advisory BoardFAQ
RESEARCH
JoVE JournalMethods CollectionsJoVE Encyclopedia of ExperimentsArchive
EDUCATION
JoVE CoreJoVE BusinessJoVE Science EducationJoVE Lab ManualFaculty Resource CenterFaculty Site
Terms & Conditions of Use
Privacy Policy
Policies

Related Concept Videos

Confocal Fluorescence Microscopy01:16

Confocal Fluorescence Microscopy

13.1K
Confocal microscopy is an advanced microscopic technique. The prime advantage of the confocal microscope over other microscopy techniques is its ability to block the out-of-focus light from the illuminated samples using pinholes. It is widely used with fluorescence optics to obtain high-resolution, sharp contrast images. Unlike optical microscopes, confocal microscopes use a focused beam of light laser to scan the entire sample surface at different z-planes. These microscopes are, therefore,...
13.1K

You might also read

Related Articles

Articles linked to this work by shared authors, journal, and citation graph.

Sort by
Same author

Minimally Invasive Intraoperative Laser Vibrometry (MIVIB)-A Peroperative Method to Measure Fixation of the Ossicular Chain.

Laryngoscope investigative otolaryngology·2025
Same author

Prestrain in the eardrum investigated using laser-ablation perforation: A proof of principle study on the New Zealand white rabbit.

Hearing research·2023
Same author

Blowing pressure stabilization method for the artificial excitation of reed instruments (L).

The Journal of the Acoustical Society of America·2023
Same author

Rabbit tympanic membrane thickness distribution obtained via optical coherence tomography.

Hearing research·2023
Same author

How does prestrain in the tympanic membrane affect middle-ear function? A finite-element model study in rabbit.

Journal of the mechanical behavior of biomedical materials·2022
Same author

Three-dimensional vibration patterns of alto saxophone reeds measured on different mouthpieces under mimicked realistic playing conditions.

The Journal of the Acoustical Society of America·2021
Same journal

Human-AI Interaction in Interventional Radiology: A Narrative Review of Current Applications, Challenges, and Future Directions.

Journal of imaging·2026
Same journal

Coronary Artery Anomalies and Anatomical Variants: Cross-Sectional Diagnostic Imaging and Clinical Background.

Journal of imaging·2026
Same journal

YoLeTooth: A Unified Framework for Joint Tooth Segmentation and Periapical Lesion Detection in Panoramic Radiographs.

Journal of imaging·2026
Same journal

Radiomics-Guided Multi-Sequence Learning for Pathological Complete Response Prediction from Breast MRI with Missing Auxiliary Sequences.

Journal of imaging·2026
Same journal

Cutaneous Thermography in Arthropathies: Quantitative Imaging, Machine Learning, and Clinical Translation.

Journal of imaging·2026
Same journal

Two-Stage Dynamic Synergistic Segmentation Method for Myocardial Pathology.

Journal of imaging·2026
See all related articles

Related Experiment Video

Updated: Jun 15, 2025

High-resolution, High-speed, Three-dimensional Video Imaging with Digital Fringe Projection Techniques
11:34

High-resolution, High-speed, Three-dimensional Video Imaging with Digital Fringe Projection Techniques

Published on: December 3, 2013

15.6K

Deep Learning for Single-Shot Structured Light Profilometry: A Comprehensive Dataset and Performance Analysis.

Rhys G Evans1, Ester Devlieghere2, Robrecht Keijzer2

  • 1Industrial Vision Lab (InViLab), Faculty of Applied Engineering, Campus Groenenborger, University of Antwerp, Groenenborgerlaan 179, 2020 Antwerp, Belgium.

Journal of Imaging
|August 28, 2024
PubMed
Summary
This summary is machine-generated.

A new dataset of over 10,000 physical data pairs for single-shot deep learning-based structured light profilometry (SS-DL-SLP) has been created. This benchmark dataset enables robust 3D optical metrology research and development.

Keywords:
3D imaging and sensingdatasetmachine learningprofilometrystructured light

More Related Videos

A Guide to Structured Illumination TIRF Microscopy at High Speed with Multiple Colors
11:15

A Guide to Structured Illumination TIRF Microscopy at High Speed with Multiple Colors

Published on: May 30, 2016

25.1K
Scanning Light Scattering Profiler SLPS Based Methodology to Quantitatively Evaluate Forward and Backward Light Scattering from Intraocular Lenses
06:55

Scanning Light Scattering Profiler SLPS Based Methodology to Quantitatively Evaluate Forward and Backward Light Scattering from Intraocular Lenses

Published on: June 6, 2017

7.6K

Related Experiment Videos

Last Updated: Jun 15, 2025

High-resolution, High-speed, Three-dimensional Video Imaging with Digital Fringe Projection Techniques
11:34

High-resolution, High-speed, Three-dimensional Video Imaging with Digital Fringe Projection Techniques

Published on: December 3, 2013

15.6K
A Guide to Structured Illumination TIRF Microscopy at High Speed with Multiple Colors
11:15

A Guide to Structured Illumination TIRF Microscopy at High Speed with Multiple Colors

Published on: May 30, 2016

25.1K
Scanning Light Scattering Profiler SLPS Based Methodology to Quantitatively Evaluate Forward and Backward Light Scattering from Intraocular Lenses
06:55

Scanning Light Scattering Profiler SLPS Based Methodology to Quantitatively Evaluate Forward and Backward Light Scattering from Intraocular Lenses

Published on: June 6, 2017

7.6K

Area of Science:

  • * 3D Optical Metrology
  • * Computer Vision
  • * Machine Learning

Background:

  • * Single-shot deep learning-based structured light profilometry (SS-DL-SLP) offers rapid and robust 3D measurements.
  • * Acquiring large training datasets for SS-DL-SLP is practically challenging.
  • * Existing methods lack comprehensive, standardized benchmarks for evaluating deep learning models.

Purpose of the Study:

  • * To introduce a large-scale, physically generated dataset for SS-DL-SLP.
  • * To establish a benchmark for evaluating and comparing deep learning models in 3D optical metrology.
  • * To facilitate research and promote reproducibility in SS-DL-SLP.

Main Methods:

  • * Construction of a dataset with over 10,000 physical data couples.
  • * Utilizing 3D-printed calibration targets with random surface profiles.
  • * Recording corresponding height profiles and deformed fringe patterns.

Main Results:

  • * Demonstrated high accuracy of established neural networks in predicting height information from fringe patterns.
  • * Validated network robustness on unique, unseen objects.
  • * Achieved reliable full-field height information retrieval.

Conclusions:

  • * The presented dataset serves as a valuable resource for advancing SS-DL-SLP.
  • * Publicly available code and data promote further research and development in 3D optical metrology.
  • * The benchmark facilitates the exploration and comparison of novel deep learning approaches.