1,142 research outputs found
Fast Face-swap Using Convolutional Neural Networks
We consider the problem of face swapping in images, where an input identity
is transformed into a target identity while preserving pose, facial expression,
and lighting. To perform this mapping, we use convolutional neural networks
trained to capture the appearance of the target identity from an unstructured
collection of his/her photographs.This approach is enabled by framing the face
swapping problem in terms of style transfer, where the goal is to render an
image in the style of another one. Building on recent advances in this area, we
devise a new loss function that enables the network to produce highly
photorealistic results. By combining neural networks with simple pre- and
post-processing steps, we aim at making face swap work in real-time with no
input from the user
Robustness and modular design of the Drosophila segment polarity network
Biomolecular networks have to perform their functions robustly. A robust
function may have preferences in the topological structures of the underlying
network. We carried out an exhaustive computational analysis on network
topologies in relation to a patterning function in Drosophila embryogenesis. We
found that while the vast majority of topologies can either not perform the
required function or only do so very fragilely, a small fraction of topologies
emerges as particularly robust for the function. The topology adopted by
Drosophila, that of the segment polarity network, is a top ranking one among
all topologies with no direct autoregulation. Furthermore, we found that all
robust topologies are modular--each being a combination of three kinds of
modules. These modules can be traced back to three sub-functions of the
patterning function and their combinations provide a combinatorial variability
for the robust topologies. Our results suggest that the requirement of
functional robustness drastically reduces the choices of viable topology to a
limited set of modular combinations among which nature optimizes its choice
under evolutionary and other biological constraints.Comment: Supplementary Information and Synopsis available at
http://www.ucsf.edu/tanglab
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Reordered subsets reconstruction of proton computed tomography
This project investigates the improvement of iterative reconstruction using reordered subsets. Block iterative projection and Ordered Subset reconstruction algorithms are developed to improve the performance of image reconstruction. Contains source code
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