IVCVMay 29, 2025

Dc-EEMF: Pushing depth-of-field limit of photoacoustic microscopy via decision-level constrained learning

arXiv:2506.03181v1h-index: 3
Originality Incremental advance
AI Analysis

This addresses a bottleneck in biomedical imaging for preclinical and clinical studies requiring extended depth-of-field, but it is an incremental improvement as it builds on existing fusion techniques.

The paper tackles the limited depth-of-field in photoacoustic microscopy by proposing a decision-level constrained end-to-end multi-focus image fusion method, achieving impressive fusion results without substantial sacrifice in lateral resolution.

Photoacoustic microscopy holds the potential to measure biomarkers' structural and functional status without labels, which significantly aids in comprehending pathophysiological conditions in biomedical research. However, conventional optical-resolution photoacoustic microscopy (OR-PAM) is hindered by a limited depth-of-field (DoF) due to the narrow depth range focused on a Gaussian beam. Consequently, it fails to resolve sufficient details in the depth direction. Herein, we propose a decision-level constrained end-to-end multi-focus image fusion (Dc-EEMF) to push DoF limit of PAM. The DC-EEMF method is a lightweight siamese network that incorporates an artifact-resistant channel-wise spatial frequency as its feature fusion rule. The meticulously crafted U-Net-based perceptual loss function for decision-level focus properties in end-to-end fusion seamlessly integrates the complementary advantages of spatial domain and transform domain methods within Dc-EEMF. This approach can be trained end-to-end without necessitating post-processing procedures. Experimental results and numerical analyses collectively demonstrate our method's robust performance, achieving an impressive fusion result for PAM images without a substantial sacrifice in lateral resolution. The utilization of Dc-EEMF-powered PAM has the potential to serve as a practical tool in preclinical and clinical studies requiring extended DoF for various applications.

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