1,613 research outputs found
Sexual and reproductive health (SRH) of women migrant workers in the ASEAN region: a systematic narrative review and synthesis.
Sexual and reproductive health (SRH) is central to achievement of UN sustainable development goals (SDGs). Women’s migration has wide-reaching implications for their SRH, increasing vulnerabilities and risky behaviours with potential negative implications for both migrants’ fitness to work and host countries’ public health systems. Given the scale of migration within the ASEAN region, we synthesise the literature and identify priorities for future research
End-to-End Learning of Video Super-Resolution with Motion Compensation
Learning approaches have shown great success in the task of super-resolving
an image given a low resolution input. Video super-resolution aims for
exploiting additionally the information from multiple images. Typically, the
images are related via optical flow and consecutive image warping. In this
paper, we provide an end-to-end video super-resolution network that, in
contrast to previous works, includes the estimation of optical flow in the
overall network architecture. We analyze the usage of optical flow for video
super-resolution and find that common off-the-shelf image warping does not
allow video super-resolution to benefit much from optical flow. We rather
propose an operation for motion compensation that performs warping from low to
high resolution directly. We show that with this network configuration, video
super-resolution can benefit from optical flow and we obtain state-of-the-art
results on the popular test sets. We also show that the processing of whole
images rather than independent patches is responsible for a large increase in
accuracy.Comment: Accepted to GCPR201
Deep Autoencoder for Combined Human Pose Estimation and body Model Upscaling
We present a method for simultaneously estimating 3D human pose and body
shape from a sparse set of wide-baseline camera views. We train a symmetric
convolutional autoencoder with a dual loss that enforces learning of a latent
representation that encodes skeletal joint positions, and at the same time
learns a deep representation of volumetric body shape. We harness the latter to
up-scale input volumetric data by a factor of , whilst recovering a
3D estimate of joint positions with equal or greater accuracy than the state of
the art. Inference runs in real-time (25 fps) and has the potential for passive
human behaviour monitoring where there is a requirement for high fidelity
estimation of human body shape and pose
Empowerment as a pre-requisite to managing and influencing health in the workplace: the sexual and reproductive health needs of factory women migrant workers in Malaysia
Malaysia is a major importer of migrant labour within the ASEAN, and migration has adverse implications for the sexual and reproductive health (SRH) of women migrant workers. Given the centrality of the workplace to the lives of such women, we report a qualitative analysis of interview data with women migrant workers (n=14) and wider stakeholders (n=10) and consider the extent to which they are able to effect change in workplace SRH policy and practice. Informed by Rowlands’ typology of power and model of empowerment, our analysis considers the extent to which normative expectations of process and collective mobilisation upon which feminist empowerment models are predicated operate in such contexts and discuss the implications of our findings for research to advance workplace democracy
Counterflow dielectrophoresis for trypanosome enrichment and detection in blood
Human African trypanosomiasis or sleeping sickness is a deadly disease endemic in sub-Saharan Africa, caused by single-celled protozoan parasites. Although it has been targeted for elimination by 2020, this will only be realized if diagnosis can be improved to enable identification and treatment of afflicted patients. Existing techniques of detection are restricted by their limited field-applicability, sensitivity and capacity for automation. Microfluidic-based technologies offer the potential for highly sensitive automated devices that could achieve detection at the lowest levels of parasitemia and consequently help in the elimination programme. In this work we implement an electrokinetic technique for the separation of trypanosomes from both mouse and human blood. This technique utilises differences in polarisability between the blood cells and trypanosomes to achieve separation through opposed bi-directional movement (cell counterflow). We combine this enrichment technique with an automated image analysis detection algorithm, negating the need for a human operator
Deep Markov Random Field for Image Modeling
Markov Random Fields (MRFs), a formulation widely used in generative image
modeling, have long been plagued by the lack of expressive power. This issue is
primarily due to the fact that conventional MRFs formulations tend to use
simplistic factors to capture local patterns. In this paper, we move beyond
such limitations, and propose a novel MRF model that uses fully-connected
neurons to express the complex interactions among pixels. Through theoretical
analysis, we reveal an inherent connection between this model and recurrent
neural networks, and thereon derive an approximated feed-forward network that
couples multiple RNNs along opposite directions. This formulation combines the
expressive power of deep neural networks and the cyclic dependency structure of
MRF in a unified model, bringing the modeling capability to a new level. The
feed-forward approximation also allows it to be efficiently learned from data.
Experimental results on a variety of low-level vision tasks show notable
improvement over state-of-the-arts.Comment: Accepted at ECCV 201
The Unreasonable Effectiveness of Texture Transfer for Single Image Super-resolution
While implicit generative models such as GANs have shown impressive results
in high quality image reconstruction and manipulation using a combination of
various losses, we consider a simpler approach leading to surprisingly strong
results. We show that texture loss alone allows the generation of perceptually
high quality images. We provide a better understanding of texture constraining
mechanism and develop a novel semantically guided texture constraining method
for further improvement. Using a recently developed perceptual metric employing
"deep features" and termed LPIPS, the method obtains state-of-the-art results.
Moreover, we show that a texture representation of those deep features better
capture the perceptual quality of an image than the original deep features.
Using texture information, off-the-shelf deep classification networks (without
training) perform as well as the best performing (tuned and calibrated) LPIPS
metrics. The code is publicly available.Comment: 19 pages, 14 figure
Alien Registration- Parent, Joseph B. (Van Buren, Aroostook County)
https://digitalmaine.com/alien_docs/32354/thumbnail.jp
CubeNet: Equivariance to 3D Rotation and Translation
3D Convolutional Neural Networks are sensitive to transformations applied to
their input. This is a problem because a voxelized version of a 3D object, and
its rotated clone, will look unrelated to each other after passing through to
the last layer of a network. Instead, an idealized model would preserve a
meaningful representation of the voxelized object, while explaining the
pose-difference between the two inputs. An equivariant representation vector
has two components: the invariant identity part, and a discernable encoding of
the transformation. Models that can't explain pose-differences risk "diluting"
the representation, in pursuit of optimizing a classification or regression
loss function.
We introduce a Group Convolutional Neural Network with linear equivariance to
translations and right angle rotations in three dimensions. We call this
network CubeNet, reflecting its cube-like symmetry. By construction, this
network helps preserve a 3D shape's global and local signature, as it is
transformed through successive layers. We apply this network to a variety of 3D
inference problems, achieving state-of-the-art on the ModelNet10 classification
challenge, and comparable performance on the ISBI 2012 Connectome Segmentation
Benchmark. To the best of our knowledge, this is the first 3D rotation
equivariant CNN for voxel representations.Comment: Preprin
Single Image Super-Resolution Using Lightweight CNN with Maxout Units
Rectified linear units (ReLU) are well-known to be helpful in obtaining
faster convergence and thus higher performance for many deep-learning-based
applications. However, networks with ReLU tend to perform poorly when the
number of filter parameters is constrained to a small number. To overcome it,
in this paper, we propose a novel network utilizing maxout units (MU), and show
its effectiveness on super-resolution (SR) applications. In general, the MU has
been known to make the filter sizes doubled in generating the feature maps of
the same sizes in classification problems. In this paper, we first reveal that
the MU can even make the filter sizes halved in restoration problems thus
leading to compaction of the network sizes. To show this, our SR network is
designed without increasing the filter sizes with MU, which outperforms the
state of the art SR methods with a smaller number of filter parameters. To the
best of our knowledge, we are the first to incorporate MU into SR applications
and show promising performance results. In MU, feature maps from a previous
convolutional layer are divided into two parts along channels, which are then
compared element-wise and only their max values are passed to a next layer.
Along with some interesting properties of MU to be analyzed, we further
investigate other variants of MU and their effects. In addition, while ReLU
have a trouble for learning in networks with a very small number of
convolutional filter parameters, MU do not. For SR applications, our MU-based
network reconstructs high-resolution images with comparable quality compared to
previous deep-learning-based SR methods, with lower filter parameters.Comment: ACCV201
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