Category Ranking

98%

Total Visits

921

Avg Visit Duration

2 minutes

Citations

20

Article Abstract

Recent studies construct deblurred neural radiance fields (DeRF) using dozens of blurry images, which are not practical scenarios if only a limited number of blurry images are available. This paper focuses on constructing DeRF from sparse-view for more pragmatic real-world scenarios. As observed in our experiments, establishing DeRF from sparse views proves to be a more challenging problem due to the inherent complexity arising from the simultaneous optimization of blur kernels and NeRF from sparse view. Sparse-DeRF successfully regularizes the complicated joint optimization, presenting alleviated overfitting artifacts and enhanced quality on radiance fields. The regularization consists of three key components: Surface smoothness, helps the model accurately predict the scene structure utilizing unseen and additional hidden rays derived from the blur kernel based on statistical tendencies of real-world; Modulated gradient scaling, helps the model adjust the amount of the backpropagated gradient according to the arrangements of scene objects; Perceptual distillation improves the perceptual quality by overcoming the ill-posed multi-view inconsistency of image deblurring and distilling the pre-deblurred information, compensating for the lack of clean information in blurry images. We demonstrate the effectiveness of the Sparse-DeRF with extensive quantitative and qualitative experimental results by training DeRF from 2-view, 4-view, and 6-view blurry images.

Download full-text PDF

Source
http://dx.doi.org/10.1109/TPAMI.2025.3563398DOI Listing

Publication Analysis

Top Keywords

blurry images
16
radiance fields
12
deblurred neural
8
neural radiance
8
sparse view
8
helps model
8
sparse-derf deblurred
4
fields sparse
4
view studies
4
studies construct
4

Similar Publications

Recent advancements in single-image 3D generation have produced two main categories of methods: reconstruction-based and generative methods. Reconstruction-based methods are efficient but lack uncertainty handling, leading to blurry artifacts in unseen regions. Generative approaches that based on score distillation [47], [71] are slow due to scene-specific optimization.

View Article and Find Full Text PDF

CubeSats are becoming increasingly popular in scientific missions due to lower costs, but installing a long-focus unobscured reflective optical system within such a small volume is not easy. This paper proposes two methods to increase the focal length of optical systems in cube satellites. One method breaks the planar symmetry of the traditional off-axis three-mirror system, modifying the system structure to be off-axis in two directions, and simultaneously uses a fifth-order polynomial freeform surface to correct the higher-order aberrations caused by the off-axis configuration.

View Article and Find Full Text PDF

Background: Magnetic Particle Imaging (MPI) is an emerging technology used to visualize the motion of magnetic nanoparticles in biological tissues. Due to the complexity of the physical behavior of nanoparticles, it is challenging to reconstruct high-quality MPI images from MPI signals. Traditional reconstruction methods, such as system matrix and x-space, are either extremely time-consuming or result in very blurry images.

View Article and Find Full Text PDF

Introduction: Finding a convenient, accurate, and non-invasive method to differentiate between benign and malignant breast masses is especially important for clinical practice, and this study aimed to explore the clinical value of Nomogram model based on multimodality ultrasound image characteristics and clinical baseline data for detecting benign and malignant breast masses.

Methods: A retrospective analysis of the clinical data and ultrasound imaging characteristics of 132 patients with breast masses. Data were randomly divided into a training set (92 cases) and a validation set (40 cases) in a ratio of 7:3.

View Article and Find Full Text PDF

We developed a rapid scanning optical microscope, termed "BlurryScope", that leverages continuous image acquisition and deep learning to provide a cost-effective and compact solution for automated inspection and analysis of tissue sections. This device offers comparable speed to commercial digital pathology scanners, but at a significantly lower price point and smaller size/weight. Using BlurryScope, we implemented automated classification of human epidermal growth factor receptor 2 (HER2) scores on motion-blurred images of immunohistochemically (IHC) stained breast tissue sections, achieving concordant results with those obtained from a high-end digital scanning microscope.

View Article and Find Full Text PDF