Saved in:
Bibliographic Details
Main Authors: Du, Lintong, Liu, Huazhen, Zhang, Yijia, Liu, ShuXin, Qu, Yuan, Zhang, Zenghui, Yang, Jiamiao
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2412.05584
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866917987338944512
author Du, Lintong
Liu, Huazhen
Zhang, Yijia
Liu, ShuXin
Qu, Yuan
Zhang, Zenghui
Yang, Jiamiao
author_facet Du, Lintong
Liu, Huazhen
Zhang, Yijia
Liu, ShuXin
Qu, Yuan
Zhang, Zenghui
Yang, Jiamiao
contents Spatial phase unwrapping is a key technique for extracting phase information to obtain 3D morphology and other features. Modern industrial measurement scenarios demand high precision, large image sizes, and high speed. However, conventional methods struggle with noise resistance and processing speed. Current deep learning methods are limited by the receptive field size and sparse semantic information, making them ineffective for large size images. To address this issue, we propose a mutual self-distillation (MSD) mechanism and adaptive boosting ensemble segmenters to construct a universal multi-size phase unwrapping network (UMSPU). MSD performs hierarchical attention refinement and achieves cross-layer collaborative learning through bidirectional distillation, ensuring fine-grained semantic representation across image sizes. The adaptive boosting ensemble segmenters combine weak segmenters with different receptive fields into a strong one, ensuring stable segmentation across spatial frequencies. Experimental results show that UMSPU overcomes image size limitations, achieving high precision across image sizes ranging from 256*256 to 2048*2048 (an 8 times increase). It also outperforms existing methods in speed, robustness, and generalization. Its practicality is further validated in structured light imaging and InSAR. We believe that UMSPU offers a universal solution for phase unwrapping, with broad potential for industrial applications.
format Preprint
id arxiv_https___arxiv_org_abs_2412_05584
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle UMSPU: Universal Multi-Size Phase Unwrapping via Mutual Self-Distillation and Adaptive Boosting Ensemble Segmenters
Du, Lintong
Liu, Huazhen
Zhang, Yijia
Liu, ShuXin
Qu, Yuan
Zhang, Zenghui
Yang, Jiamiao
Computer Vision and Pattern Recognition
Artificial Intelligence
Spatial phase unwrapping is a key technique for extracting phase information to obtain 3D morphology and other features. Modern industrial measurement scenarios demand high precision, large image sizes, and high speed. However, conventional methods struggle with noise resistance and processing speed. Current deep learning methods are limited by the receptive field size and sparse semantic information, making them ineffective for large size images. To address this issue, we propose a mutual self-distillation (MSD) mechanism and adaptive boosting ensemble segmenters to construct a universal multi-size phase unwrapping network (UMSPU). MSD performs hierarchical attention refinement and achieves cross-layer collaborative learning through bidirectional distillation, ensuring fine-grained semantic representation across image sizes. The adaptive boosting ensemble segmenters combine weak segmenters with different receptive fields into a strong one, ensuring stable segmentation across spatial frequencies. Experimental results show that UMSPU overcomes image size limitations, achieving high precision across image sizes ranging from 256*256 to 2048*2048 (an 8 times increase). It also outperforms existing methods in speed, robustness, and generalization. Its practicality is further validated in structured light imaging and InSAR. We believe that UMSPU offers a universal solution for phase unwrapping, with broad potential for industrial applications.
title UMSPU: Universal Multi-Size Phase Unwrapping via Mutual Self-Distillation and Adaptive Boosting Ensemble Segmenters
topic Computer Vision and Pattern Recognition
Artificial Intelligence
url https://arxiv.org/abs/2412.05584