388 research outputs found
Spark plasma sintering of nanomaterials and biomaterials
Spark plasma sintering (SPS) is a novel technique to fabricate advanced materiales. This Thesis describes the origin, mechanism and development of the SPS as well as its applications in nanomaterials synthesis, diamond synthesis and biomaterials synthesis especially titanium based biomaterials. Chapter 1 introduces the background. Chapter 2 concerns the study on the indirect evidences for the presence of plasmas in SPS. Chapter 3 reports the synthesis of diamond from nanocarbon and graphite by SPS. Chapter 4 and 5 studies the SPS of titanium alloys and foams for biomedical applications
Flow Guidance Deformable Compensation Network for Video Frame Interpolation
Motion-based video frame interpolation (VFI) methods have made remarkable
progress with the development of deep convolutional networks over the past
years. While their performance is often jeopardized by the inaccuracy of flow
map estimation, especially in the case of large motion and occlusion. In this
paper, we propose a flow guidance deformable compensation network (FGDCN) to
overcome the drawbacks of existing motion-based methods. FGDCN decomposes the
frame sampling process into two steps: a flow step and a deformation step.
Specifically, the flow step utilizes a coarse-to-fine flow estimation network
to directly estimate the intermediate flows and synthesizes an anchor frame
simultaneously. To ensure the accuracy of the estimated flow, a distillation
loss and a task-oriented loss are jointly employed in this step. Under the
guidance of the flow priors learned in step one, the deformation step designs a
pyramid deformable compensation network to compensate for the missing details
of the flow step. In addition, a pyramid loss is proposed to supervise the
model in both the image and frequency domain. Experimental results show that
the proposed algorithm achieves excellent performance on various datasets with
fewer parameters
Deep Unfolding Convolutional Dictionary Model for Multi-Contrast MRI Super-resolution and Reconstruction
Magnetic resonance imaging (MRI) tasks often involve multiple contrasts.
Recently, numerous deep learning-based multi-contrast MRI super-resolution (SR)
and reconstruction methods have been proposed to explore the complementary
information from the multi-contrast images. However, these methods either
construct parameter-sharing networks or manually design fusion rules, failing
to accurately model the correlations between multi-contrast images and lacking
certain interpretations. In this paper, we propose a multi-contrast
convolutional dictionary (MC-CDic) model under the guidance of the optimization
algorithm with a well-designed data fidelity term. Specifically, we bulid an
observation model for the multi-contrast MR images to explicitly model the
multi-contrast images as common features and unique features. In this way, only
the useful information in the reference image can be transferred to the target
image, while the inconsistent information will be ignored. We employ the
proximal gradient algorithm to optimize the model and unroll the iterative
steps into a deep CDic model. Especially, the proximal operators are replaced
by learnable ResNet. In addition, multi-scale dictionaries are introduced to
further improve the model performance. We test our MC-CDic model on
multi-contrast MRI SR and reconstruction tasks. Experimental results
demonstrate the superior performance of the proposed MC-CDic model against
existing SOTA methods. Code is available at
https://github.com/lpcccc-cv/MC-CDic.Comment: Accepted to IJCAI202
Non-reversible Parallel Tempering for Deep Posterior Approximation
Parallel tempering (PT), also known as replica exchange, is the go-to
workhorse for simulations of multi-modal distributions. The key to the success
of PT is to adopt efficient swap schemes. The popular deterministic even-odd
(DEO) scheme exploits the non-reversibility property and has successfully
reduced the communication cost from to given sufficiently many
chains. However, such an innovation largely disappears in big data due to
the limited chains and few bias-corrected swaps. To handle this issue, we
generalize the DEO scheme to promote non-reversibility and propose a few
solutions to tackle the underlying bias caused by the geometric stopping time.
Notably, in big data scenarios, we obtain an appealing communication cost
based on the optimal window size. In addition, we also adopt
stochastic gradient descent (SGD) with large and constant learning rates as
exploration kernels. Such a user-friendly nature enables us to conduct
approximation tasks for complex posteriors without much tuning costs.Comment: Accepted by AAAI 202
Energetic stability, structural transition, and thermodynamic properties of ZnSnO[sub 3]
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/98679/1/ApplPhysLett_98_091914.pd
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