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Main Authors: Zhang, Shengjun, Chen, Min, Wei, Yibo, Dong, Mingyu, Duan, Yueqi
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2601.17900
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author Zhang, Shengjun
Chen, Min
Wei, Yibo
Dong, Mingyu
Duan, Yueqi
author_facet Zhang, Shengjun
Chen, Min
Wei, Yibo
Dong, Mingyu
Duan, Yueqi
contents 3D reconstruction is to recover 3D signals from the sampled discrete 2D pixels, with the goal to converge continuous 3D spaces. In this paper, we revisit 3D reconstruction from the perspective of signal processing, identifying the periodic spectral extension induced by discrete sampling as the fundamental challenge. Previous 3D reconstruction kernels, such as Gaussians, Exponential functions, and Student's t distributions, serve as the low pass filters to isolate the baseband spectrum. However, their unideal low-pass property results in the overlap of high-frequency components with low-frequency components in the discrete-time signal's spectrum. To this end, we introduce Jinc kernel with an instantaneous drop to zero magnitude exactly at the cutoff frequency, which is corresponding to the ideal low pass filters. As Jinc kernel suffers from low decay speed in the spatial domain, we further propose modulated kernels to strick an effective balance, and achieves superior rendering performance by reconciling spatial efficiency and frequency-domain fidelity. Experimental results have demonstrated the effectiveness of our Jinc and modulated kernels.
format Preprint
id arxiv_https___arxiv_org_abs_2601_17900
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Revisiting 3D Reconstruction Kernels as Low-Pass Filters
Zhang, Shengjun
Chen, Min
Wei, Yibo
Dong, Mingyu
Duan, Yueqi
Computer Vision and Pattern Recognition
3D reconstruction is to recover 3D signals from the sampled discrete 2D pixels, with the goal to converge continuous 3D spaces. In this paper, we revisit 3D reconstruction from the perspective of signal processing, identifying the periodic spectral extension induced by discrete sampling as the fundamental challenge. Previous 3D reconstruction kernels, such as Gaussians, Exponential functions, and Student's t distributions, serve as the low pass filters to isolate the baseband spectrum. However, their unideal low-pass property results in the overlap of high-frequency components with low-frequency components in the discrete-time signal's spectrum. To this end, we introduce Jinc kernel with an instantaneous drop to zero magnitude exactly at the cutoff frequency, which is corresponding to the ideal low pass filters. As Jinc kernel suffers from low decay speed in the spatial domain, we further propose modulated kernels to strick an effective balance, and achieves superior rendering performance by reconciling spatial efficiency and frequency-domain fidelity. Experimental results have demonstrated the effectiveness of our Jinc and modulated kernels.
title Revisiting 3D Reconstruction Kernels as Low-Pass Filters
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2601.17900