546 research outputs found
Superconvergent postprocessing of interior penalty method
This paper focuses on the superconvergence analysis of the Hessian recovery
technique for the Interior Penalty Method (C0IP) in solving the
biharmonic equation. We establish interior error estimates for C0IP method that
serve as the superconvergent analysis tool. Using the argument of
superconvergence by difference quotient, we prove superconvergent results of
the recovered Hessian matrix on translation-invariant meshes. The Hessian
recovery technique enables us to construct an asymptotically exact error estimator for the C0IP method. Numerical experiments are
provided to support our theoretical results
Exploiting Visual Semantic Reasoning for Video-Text Retrieval
Video retrieval is a challenging research topic bridging the vision and
language areas and has attracted broad attention in recent years. Previous
works have been devoted to representing videos by directly encoding from
frame-level features. In fact, videos consist of various and abundant semantic
relations to which existing methods pay less attention. To address this issue,
we propose a Visual Semantic Enhanced Reasoning Network (ViSERN) to exploit
reasoning between frame regions. Specifically, we consider frame regions as
vertices and construct a fully-connected semantic correlation graph. Then, we
perform reasoning by novel random walk rule-based graph convolutional networks
to generate region features involved with semantic relations. With the benefit
of reasoning, semantic interactions between regions are considered, while the
impact of redundancy is suppressed. Finally, the region features are aggregated
to form frame-level features for further encoding to measure video-text
similarity. Extensive experiments on two public benchmark datasets validate the
effectiveness of our method by achieving state-of-the-art performance due to
the powerful semantic reasoning.Comment: Accepted by IJCAI 2020. SOLE copyright holder is IJCAI (International
Joint Conferences on Artificial Intelligence), all rights reserved.
http://static.ijcai.org/2020-accepted_papers.htm
Unfitted finite element method for the quad-curl interface problem
In this paper, we introduce a novel unfitted finite element method to solve
the quad-curl interface problem. We adapt Nitsche's method for
curlcurl-conforming elements and double the degrees of freedom on interface
elements. To ensure stability, we incorporate ghost penalty terms and a
discrete divergence-free term. We establish the well-posedness of our method
and demonstrate an optimal error bound in the discrete energy norm. We also
analyze the stiffness matrix's condition number. Our numerical tests back up
our theory on convergence rates and condition numbers
Manifold Path Guiding for Importance Sampling Specular Chains
Complex visual effects such as caustics are often produced by light paths
containing multiple consecutive specular vertices (dubbed specular chains),
which pose a challenge to unbiased estimation in Monte Carlo rendering. In this
work, we study the light transport behavior within a sub-path that is comprised
of a specular chain and two non-specular separators. We show that the specular
manifolds formed by all the sub-paths could be exploited to provide coherence
among sub-paths. By reconstructing continuous energy distributions from
historical and coherent sub-paths, seed chains can be generated in the context
of importance sampling and converge to admissible chains through manifold
walks. We verify that importance sampling the seed chain in the continuous
space reaches the goal of importance sampling the discrete admissible specular
chain. Based on these observations and theoretical analyses, a progressive
pipeline, manifold path guiding, is designed and implemented to importance
sample challenging paths featuring long specular chains. To our best knowledge,
this is the first general framework for importance sampling discrete specular
chains in regular Monte Carlo rendering. Extensive experiments demonstrate that
our method outperforms state-of-the-art unbiased solutions with up to 40x
variance reduction, especially in typical scenes containing long specular
chains and complex visibility.Comment: 14 pages, 19 figure
Shapes of distal tibiofibular syndesmosis are associated with risk of recurrent lateral ankle sprains
Distal tibiofibular syndesmosis (DTS) has wide anatomic variability in depth of incisura fibularis and shape of tibial tubercles. We designed a 3-year prospective cohort study of 300 young physical training soldiers in an Army Physical Fitness School. Ankle computed tomography (CT) scans showed that 56% of the incisura fibularis were a "C" shape, 25% were a "1" shape, and 19% were a "Gamma"shape. Furthermore, we invited a randomly selected subcohort of 6 participants in each shape of DTS to undergo a three-dimensional (3D) laser scanning. The "1" shape group showed widest displacement range of the DTS in the y-axis, along with the range of motion (ROM) on the position more than 20 degrees of the ankle dorsiflexion, inversion and eversion. During the 3-year study period, 23 participants experienced recurrent lateral ankle sprains. 7 cases of the incisura fibularis were "C" shape, 13 cases were "1" shape, and 3 cases were "Gamma"shape. The "1" shape showed highest risk among the three shapes in incident recurrent lateral ankle sprains. We propose that it is possible to classify shapes of DTS according to the shapes of incisura fibularis, and people with "1" shape may have more risk of recurrent lateral ankle sprains
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