489 research outputs found
PEA265: Perceptual Assessment of Video Compression Artifacts
The most widely used video encoders share a common hybrid coding framework
that includes block-based motion estimation/compensation and block-based
transform coding. Despite their high coding efficiency, the encoded videos
often exhibit visually annoying artifacts, denoted as Perceivable Encoding
Artifacts (PEAs), which significantly degrade the visual Qualityof- Experience
(QoE) of end users. To monitor and improve visual QoE, it is crucial to develop
subjective and objective measures that can identify and quantify various types
of PEAs. In this work, we make the first attempt to build a large-scale
subjectlabelled database composed of H.265/HEVC compressed videos containing
various PEAs. The database, namely the PEA265 database, includes 4 types of
spatial PEAs (i.e. blurring, blocking, ringing and color bleeding) and 2 types
of temporal PEAs (i.e. flickering and floating). Each containing at least
60,000 image or video patches with positive and negative labels. To objectively
identify these PEAs, we train Convolutional Neural Networks (CNNs) using the
PEA265 database. It appears that state-of-theart ResNeXt is capable of
identifying each type of PEAs with high accuracy. Furthermore, we define PEA
pattern and PEA intensity measures to quantify PEA levels of compressed video
sequence. We believe that the PEA265 database and our findings will benefit the
future development of video quality assessment methods and perceptually
motivated video encoders.Comment: 10 pages,15 figures,4 table
Multi-Spatio-temporal Fusion Graph Recurrent Network for Traffic forecasting
Traffic forecasting is essential for the traffic construction of smart cities
in the new era. However, traffic data's complex spatial and temporal
dependencies make traffic forecasting extremely challenging. Most existing
traffic forecasting methods rely on the predefined adjacency matrix to model
the Spatio-temporal dependencies. Nevertheless, the road traffic state is
highly real-time, so the adjacency matrix should change dynamically with time.
This article presents a new Multi-Spatio-temporal Fusion Graph Recurrent
Network (MSTFGRN) to address the issues above. The network proposes a
data-driven weighted adjacency matrix generation method to compensate for
real-time spatial dependencies not reflected by the predefined adjacency
matrix. It also efficiently learns hidden Spatio-temporal dependencies by
performing a new two-way Spatio-temporal fusion operation on parallel
Spatio-temporal relations at different moments. Finally, global Spatio-temporal
dependencies are captured simultaneously by integrating a global attention
mechanism into the Spatio-temporal fusion module. Extensive trials on four
large-scale, real-world traffic datasets demonstrate that our method achieves
state-of-the-art performance compared to alternative baselines
An inverse problem for semilinear equations involving the fractional Laplacian
Our work concerns the study of inverse problems of heat and wave equations
involving the fractional Laplacian operator with zeroth order nonlinear
perturbations. We recover nonlinear terms in the semilinear equations from the
knowledge of the fractional Dirichlet-to-Neumann type map combined with the
Runge approximation and the unique continuation property of the fractional
Laplacian.Comment: 25 page
Semantic Face Compression for Metaverse: A Compact 3D Descriptor Based Approach
In this letter, we envision a new metaverse communication paradigm for
virtual avatar faces, and develop the semantic face compression with compact 3D
facial descriptors. The fundamental principle is that the communication of
virtual avatar faces primarily emphasizes the conveyance of semantic
information. In light of this, the proposed scheme offers the advantages of
being highly flexible, efficient and semantically meaningful. The semantic face
compression, which allows the communication of the descriptors for artificial
intelligence based understanding, could facilitate numerous applications
without the involvement of humans in metaverse. The promise of the proposed
paradigm is also demonstrated by performance comparisons with the
state-of-the-art video coding standard, Versatile Video Coding. A significant
improvement in terms of rate-accuracy performance has been achieved. The
proposed scheme is expected to enable numerous applications, such as digital
human communication based on machine analysis, and to form the cornerstone of
interaction and communication in the metaverse.Comment: 5 pages, 3 figure
A Framework on Complex Matrix Derivatives with Special Structure Constraints for Wireless Systems
Matrix-variate optimization plays a central role in advanced wireless system
designs. In this paper, we aim to explore optimal solutions of matrix variables
under two special structure constraints using complex matrix derivatives,
including diagonal structure constraints and constant modulus constraints, both
of which are closely related to the state-of-the-art wireless applications.
Specifically, for diagonal structure constraints mostly considered in the
uplink multi-user single-input multiple-output (MU-SIMO) system and the
amplitude-adjustable intelligent reflecting surface (IRS)-aided multiple-input
multiple-output (MIMO) system, the capacity maximization problem, the
mean-squared error (MSE) minimization problem and their variants are rigorously
investigated. By leveraging complex matrix derivatives, the optimal solutions
of these problems are directly obtained in closed forms. Nevertheless, for
constant modulus constraints with the intrinsic nature of element-wise
decomposability, which are often seen in the hybrid analog-digital MIMO system
and the fully-passive IRS-aided MIMO system, we firstly explore inherent
structures of the element-wise phase derivatives associated with different
optimization problems. Then, we propose a novel alternating optimization (AO)
algorithm with the aid of several arbitrary feasible solutions, which avoids
the complicated matrix inversion and matrix factorization involved in
conventional element-wise iterative algorithms. Numerical simulations reveal
that the proposed algorithm can dramatically reduce the computational
complexity without loss of system performance
Conjunctival Lymphangiogenesis Was Associated with the Degree of Aggression in Substantial Recurrent Pterygia
Objective. To examine conjunctival lymphatic vessels and to analyze the relationship between lymphangiogenesis and aggressive recurrent pterygia. Methods. Tissues from 60 excised recurrent (including 19 of Grade 1, 28 of Grade 2, and 13 of Grade 3) pterygia were used in the study. Tissues from 9 nasal epibulbar conjunctivae segments were used as controls. Pterygium slices from each patient were immunostained with LYVE-1 monoclonal antibodies to identify lymphatic microvessels in order to calculate the lymphovascular area (LVA), the lymphatic microvessel density (LMD), and the lymphovascular luminal diameter (LVL). The relationship between lymphangiogenesis (LVA, LMD, and LVL) and pterygium aggression (width, extension, and area) was clarified. Results. Few LYVE-1 positive lymphatic vessels were found in the normal epibulbar conjunctiva segments. Lymphatic vessels were slightly increased in Grades 1 and 2 and were dramatically increased in Grade 3 recurrent pterygia. The LMD was correlated with the pterygium area in Grade 1 and 2 pterygia. In Grade 3, both LVA and LMD were significantly correlated with the pterygium area. Conclusions. Lymphangiogenesis was associated with the degree of aggression in recurrent pterygia, particularly in substantial Grade 3 recurrent pterygia
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