Under-display ToF imaging aims to achieve accurate depth sensing through a ToF camera placed beneath a screen panel. However, transparent OLED (TOLED) layers introduce severe degradations-such as signal attenuation, multi-path interference (MPI), and temporal noise-that significantly compromise depth quality. To alleviate this drawback, we propose Learnable Fractional Reaction-Diffusion Dynamics (LFRD 2), a hybrid framework that combines the expressive power of neural networks with the interpretability of physical modeling. Specifically, we implement a time-fractional reaction-diffusion module that enables iterative depth refinement with dynamically generated differential orders, capturing long-term dependencies. In addition, we introduce an efficient continuous convolution operator via coefficient prediction and repeated differentiation to further improve restoration quality. Experiments on four benchmark datasets demonstrate the effectiveness of our approach. The code is publicly available at https://github.com/wudiqx106/LFRD2.

Qiao1, X., Poggi, M., Wei, X., Deng, P., Zhou, Y., Mattoccia, S. (2025). Learnable Fractional Reaction-Diffusion Dynamics for Under-Display ToF Imaging and Beyond. The computer vision foundation/IEEE [10.1109/ICCV51701.2025.00574].

Learnable Fractional Reaction-Diffusion Dynamics for Under-Display ToF Imaging and Beyond

Matteo Poggi;Stefano Mattoccia
2025

Abstract

Under-display ToF imaging aims to achieve accurate depth sensing through a ToF camera placed beneath a screen panel. However, transparent OLED (TOLED) layers introduce severe degradations-such as signal attenuation, multi-path interference (MPI), and temporal noise-that significantly compromise depth quality. To alleviate this drawback, we propose Learnable Fractional Reaction-Diffusion Dynamics (LFRD 2), a hybrid framework that combines the expressive power of neural networks with the interpretability of physical modeling. Specifically, we implement a time-fractional reaction-diffusion module that enables iterative depth refinement with dynamically generated differential orders, capturing long-term dependencies. In addition, we introduce an efficient continuous convolution operator via coefficient prediction and repeated differentiation to further improve restoration quality. Experiments on four benchmark datasets demonstrate the effectiveness of our approach. The code is publicly available at https://github.com/wudiqx106/LFRD2.
2025
2025 IEEE/CVF International Conference on Computer Vision (ICCV)
6080
6090
Qiao1, X., Poggi, M., Wei, X., Deng, P., Zhou, Y., Mattoccia, S. (2025). Learnable Fractional Reaction-Diffusion Dynamics for Under-Display ToF Imaging and Beyond. The computer vision foundation/IEEE [10.1109/ICCV51701.2025.00574].
Qiao1, Xin; Poggi, Matteo; Wei, Xing; Deng, Pengchao; Zhou, Yanhui; Mattoccia, Stefano
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/1049092
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