Back to Search Start Over

CG-fusion CAM: Online segmentation of laser-induced damage on large-aperture optics

Authors :
Han, Yueyue
Huang, Yingyan
Dong, Hangcheng
Chen, Fengdong
Zeng, Fa
Peng, Zhitao
Zhu, Qihua
Liu, Guodong
Publication Year :
2023

Abstract

Online segmentation of laser-induced damage on large-aperture optics in high-power laser facilities is challenged by complicated damage morphology, uneven illumination and stray light interference. Fully supervised semantic segmentation algorithms have achieved state-of-the-art performance, but rely on plenty of pixel-level labels, which are time-consuming and labor-consuming to produce. LayerCAM, an advanced weakly supervised semantic segmentation algorithm, can generate pixel-accurate results using only image-level labels, but its scattered and partially under-activated class activation regions degrade segmentation performance. In this paper, we propose a weakly supervised semantic segmentation method with Continuous Gradient CAM and its nonlinear multi-scale fusion (CG-fusion CAM). The method redesigns the way of back-propagating gradients and non-linearly activates the multi-scale fused heatmaps to generate more fine-grained class activation maps with appropriate activation degree for different sizes of damage sites. Experiments on our dataset show that the proposed method can achieve segmentation performance comparable to that of fully supervised algorithms.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2307.09161
Document Type :
Working Paper