91 research outputs found
PICTURE: PhotorealistIC virtual Try-on from UnconstRained dEsigns
In this paper, we propose a novel virtual try-on from unconstrained designs
(ucVTON) task to enable photorealistic synthesis of personalized composite
clothing on input human images. Unlike prior arts constrained by specific input
types, our method allows flexible specification of style (text or image) and
texture (full garment, cropped sections, or texture patches) conditions. To
address the entanglement challenge when using full garment images as
conditions, we develop a two-stage pipeline with explicit disentanglement of
style and texture. In the first stage, we generate a human parsing map
reflecting the desired style conditioned on the input. In the second stage, we
composite textures onto the parsing map areas based on the texture input. To
represent complex and non-stationary textures that have never been achieved in
previous fashion editing works, we first propose extracting hierarchical and
balanced CLIP features and applying position encoding in VTON. Experiments
demonstrate superior synthesis quality and personalization enabled by our
method. The flexible control over style and texture mixing brings virtual
try-on to a new level of user experience for online shopping and fashion
design.Comment: Project page: https://ningshuliang.github.io/2023/Arxiv/index.htm
Tetris: A compilation Framework for VQE Applications
Quantum computing has shown promise in solving complex problems by leveraging
the principles of superposition and entanglement. The Variational Quantum
Eigensolver (VQE) algorithm stands as a pivotal approach in the realm of
quantum algorithms, enabling the simulation of quantum systems on quantum
hardware. In this paper, we introduce two innovative techniques, namely
"Tetris" and "Fast Bridging," designed to enhance the efficiency and
effectiveness of VQE tasks. The "Tetris" technique addresses a crucial aspect
of VQE optimization by unveiling cancellation opportunities within the logical
circuit phase of UCCSD ansatz. Tetris demonstrates a remarkable reduction up to
20% in CNOT gate counts, about 119048 CNOT gates, and 30% depth reduction
compared to the state-of-the-art compiler 'Paulihedral'. In addition to Tetris,
we present the "Fast Bridging" technique as an alternative to the conventional
qubit routing methods that heavily rely on swap operations. The fast bridging
offers a novel approach to qubit routing, mitigating the limitations associated
with swap-heavy routing. By integrating the fast bridging into the VQE
framework, we observe further reductions in CNOT gate counts and circuit depth.
The bridging technique can achieve up to 27% CNOT gate reduction in the QAOA
application. Through a combination of Tetris and the fast bridging, we present
a comprehensive strategy for enhancing VQE performance. Our experimental
results showcase the effectiveness of Tetris in uncovering cancellation
opportunities and demonstrate the symbiotic relationship between Tetris and the
fast bridging in minimizing gate counts and circuit depth. This paper
contributes not only to the advancement of VQE techniques but also to the
broader field of quantum algorithm optimization
Expectation Maximization Pseudo Labels
In this paper, we study pseudo-labelling. Pseudo-labelling employs raw
inferences on unlabelled data as pseudo-labels for self-training. We elucidate
the empirical successes of pseudo-labelling by establishing a link between this
technique and the Expectation Maximisation algorithm. Through this, we realise
that the original pseudo-labelling serves as an empirical estimation of its
more comprehensive underlying formulation. Following this insight, we present a
full generalisation of pseudo-labels under Bayes' theorem, termed Bayesian
Pseudo Labels. Subsequently, we introduce a variational approach to generate
these Bayesian Pseudo Labels, involving the learning of a threshold to
automatically select high-quality pseudo labels. In the remainder of the paper,
we showcase the applications of pseudo-labelling and its generalised form,
Bayesian Pseudo-Labelling, in the semi-supervised segmentation of medical
images. Specifically, we focus on: 1) 3D binary segmentation of lung vessels
from CT volumes; 2) 2D multi-class segmentation of brain tumours from MRI
volumes; 3) 3D binary segmentation of whole brain tumours from MRI volumes; and
4) 3D binary segmentation of prostate from MRI volumes. We further demonstrate
that pseudo-labels can enhance the robustness of the learned representations.
The code is released in the following GitHub repository:
https://github.com/moucheng2017/EMSSLComment: Accepted in Medical Image Analysi
Microtissues Enhance Smooth Muscle Differentiation and Cell Viability of hADSCs for Three Dimensional Bioprinting
Smooth muscle differentiated human adipose derived stem cells (hADSCs) provide a crucial stem cell source for urinary tissue engineering, but the induction of hADSCs for smooth muscle differentiation still has several issues to overcome, including a relatively long induction time and equipment dependence, which limits access to abundant stem cells within a short period of time for further application. Three-dimensional (3D) bioprinting holds great promise in regenerative medicine due to its controllable construction of a designed 3D structure. When evenly mixed with bioink, stem cells can be spatially distributed within a bioprinted 3D structure, thus avoiding drawbacks such as, stem cell detachment in a conventional cell-scaffold strategy. Notwithstanding the advantages mentioned above, cell viability is often compromised during 3D bioprinting, which is often due to pressure during the bioprinting process. The objective of our study was to improve the efficiency of hADSC smooth muscle differentiation and cell viability of a 3D bioprinted structure. Here, we employed the hanging-drop method to generate hADSC microtissues in a smooth muscle inductive medium containing human transforming growth factor β1 and bioprinted the induced microtissues onto a 3D structure. After 3 days of smooth muscle induction, the expression of α-smooth muscle actin and smoothelin was higher in microtissues than in their counterpart monolayer cultured hADSCs, as confirmed by immunofluorescence and western blotting analysis. The semi-quantitative assay showed that the expression of α-smooth muscle actin (α-SMA) was 0.218 ± 0.077 in MTs and 0.082 ± 0.007 in Controls; smoothelin expression was 0.319 ± 0.02 in MTs and 0.178 ± 0.06 in Controls. Induced MTs maintained their phenotype after the bioprinting process. Live/dead and cell count kit 8 assays showed that cell viability and cell proliferation in the 3D structure printed with microtissues were higher at all time points compared to the conventional single-cell bioprinting strategy (mean cell viability was 88.16 ± 3.98 vs. 61.76 ± 15% for microtissues and single-cells, respectively). These results provide a novel way to enhance the smooth muscle differentiation of hADSCs and a simple method to maintain better cell viability in 3D bioprinting
Disentangling superconducting and magnetic orders in NaFe_1-xNi_xAs using muon spin rotation
Muon spin rotation and relaxation studies have been performed on a "111"
family of iron-based superconductors NaFe_1-xNi_xAs. Static magnetic order was
characterized by obtaining the temperature and doping dependences of the local
ordered magnetic moment size and the volume fraction of the magnetically
ordered regions. For x = 0 and 0.4 %, a transition to a nearly-homogeneous long
range magnetically ordered state is observed, while for higher x than 0.4 %
magnetic order becomes more disordered and is completely suppressed for x = 1.5
%. The magnetic volume fraction continuously decreases with increasing x. The
combination of magnetic and superconducting volumes implies that a
spatially-overlapping coexistence of magnetism and superconductivity spans a
large region of the T-x phase diagram for NaFe_1-xNi_xAs . A strong reduction
of both the ordered moment size and the volume fraction is observed below the
superconducting T_C for x = 0.6, 1.0, and 1.3 %, in contrast to other iron
pnictides in which one of these two parameters exhibits a reduction below TC,
but not both. The suppression of magnetic order is further enhanced with
increased Ni doping, leading to a reentrant non-magnetic state below T_C for x
= 1.3 %. The reentrant behavior indicates an interplay between
antiferromagnetism and superconductivity involving competition for the same
electrons. These observations are consistent with the sign-changing s-wave
superconducting state, which is expected to appear on the verge of microscopic
coexistence and phase separation with magnetism. We also present a universal
linear relationship between the local ordered moment size and the
antiferromagnetic ordering temperature TN across a variety of iron-based
superconductors. We argue that this linear relationship is consistent with an
itinerant-electron approach, in which Fermi surface nesting drives
antiferromagnetic ordering.Comment: 20 pages, 14 figures, Correspondence should be addressed to Prof.
Yasutomo Uemura: [email protected]
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