Category Ranking

98%

Total Visits

921

Avg Visit Duration

2 minutes

Citations

20

Article Abstract

Significance: Conventional fringe projection profilometry (FPP) requires multiple image acquisitions and therefore long acquisition times that make it slow for high-speed dynamic measurements. We propose and demonstrate a deep-learning-based single-shot FPP system utilizing a single endoscope for surgical guidance.

Aim: We aim to achieve real-time depth map generation of target tissues with high accuracy for robotic surgical guidance.

Approach: We proposed an endoscopic single-shot FPP system based on a deep learning network to generate real-time accurate tissue depth maps for surgical guidance. The system utilizes a dual-channel endoscope, where one channel projects fringe patterns from a projector and the other channel collects images using a camera. In addition, we developed a data synthesis method to generate a large number of diverse training datasets. The network consists of MaskNet, which segments the tissue from the background, and DepthNet, which predicts the depth map of the image. The results from both networks are combined to generate the final depth map.

Results: We tested our algorithm using fringe patterns with different frequencies and found that the optimal frequency for single-shot FPP in our setup is 20 Hz. The algorithm has been tested on both synthetic and experimental data, achieving a maximum depth prediction error of and a processing time of about 12.75 ms per frame.

Conclusion: A deep-learning-based single-shot FPP endoscopic system was shown to be highly effective in real-time depth map generation with millimeter-scale error. Implementing such a system has the potential to improve the reliability of image-guided robotic surgery.

Download full-text PDF

Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC12364446PMC
http://dx.doi.org/10.1117/1.JBO.30.8.086003DOI Listing

Publication Analysis

Top Keywords

single-shot fpp
16
depth map
12
endoscopic single-shot
8
fringe projection
8
projection profilometry
8
deep-learning-based single-shot
8
fpp system
8
real-time depth
8
map generation
8
fringe patterns
8

Similar Publications

Deep-learning-based endoscopic single-shot fringe projection profilometry.

J Biomed Opt

August 2025

Johns Hopkins University, Department of Electrical and Computer Engineering, Baltimore, Maryland, United States.

Significance: Conventional fringe projection profilometry (FPP) requires multiple image acquisitions and therefore long acquisition times that make it slow for high-speed dynamic measurements. We propose and demonstrate a deep-learning-based single-shot FPP system utilizing a single endoscope for surgical guidance.

Aim: We aim to achieve real-time depth map generation of target tissues with high accuracy for robotic surgical guidance.

View Article and Find Full Text PDF

Fringe projection profilometry (FPP) based on structured light is widely used for three-dimensional (3D) shape measurement due to its non-contact nature and high accuracy. However, in practical measurement scenarios, the surface reflectivity of objects varies significantly, leading to a mix of specular and diffuse reflections. This results in the coexistence of underexposed and overexposed areas, which remains a challenging issue in FPP.

View Article and Find Full Text PDF

A drawback of fringe projection profilometry (FPP) is that it is still a challenge to perform efficient and accurate high-resolution absolute phase recovery with only a single measurement. This paper proposes a single-model self-recovering fringe projection absolute phase recovery method based on deep learning. The built Fringe Prediction Self-Recovering network converts a single fringe image acquired by a camera into four single mode self-recovering fringe images.

View Article and Find Full Text PDF

To reveal the fundamental aspects hidden behind a variety of transient events in mechanics, physics, and biology, the highly desired ability to acquire three-dimensional (3D) images with ultrafast temporal resolution has been long sought. As one of the most commonly employed 3D sensing techniques, fringe projection profilometry (FPP) reconstructs the depth of a scene from stereo images taken with sequentially structured illuminations. However, the imaging speed of current FPP methods is generally capped at several kHz, which is limited by the projector-camera hardware and the number of fringe patterns required for phase retrieval and unwrapping.

View Article and Find Full Text PDF

Single-shot fringe projection profilometry (FPP) is widely used in the field of dynamic optical 3D reconstruction because of its high accuracy and efficiency. However, the traditional single-shot FPP methods are not satisfactory in reconstructing complex scenes with noise and discontinuous objects. Therefore, this paper proposes a Deformable Convolution-Based HINet with Attention Connection (DCAHINet), which is a dual-stage hybrid network with a deformation extraction stage and depth mapping stage.

View Article and Find Full Text PDF