1,025 research outputs found
Simultaneous Spectroscopic and Photometric Observations of Binary Asteroids
We present results of visible wavelengths spectroscopic measurements (0.45 to
0.72 microns) of two binary asteroids, obtained with the 1-m telescope at the
Wise Observatory on January 2008. The asteroids (90) Antiope and (1509)
Esclangona were observed to search for spectroscopic variations correlated with
their rotation while presenting different regions of their surface to the
viewer. Simultaneous photometric observations were performed with the Wise
Observatory's 0.46-m telescope, to investigate the rotational phase behavior
and possible eclipse events. (90) Antiope displayed an eclipse event during our
observations. We could not measure any slope change of the spectroscopic albedo
within the error range of 3%, except for a steady decrease in the total light
flux while the eclipse took place. We conclude that the surface compositions of
the two components do not differ dramatically, implying a common origin and
history. (1509) Esclangona did not show an eclipse, but rather a unique
lightcurve with three peaks and a wide and flat minimum, repeating with a
period of 3.2524 hours. Careful measurements of the spectral albedo slopes
reveal a color variation of 7 to 10 percent on the surface of (1509)
Esclangona, which correlates with a specific region in the photometric
lightcurve. This result suggests that the different features on the lightcurve
are at least partially produced by color variations and could perhaps be
explained by the existence of an exposed fresh surface on (1509) Esclangona.Comment: 21 pages, 14 figures, 1 table, accepted for publication in
Meteoritics & Planetary Science (MAPS
TAUVEX: status in 2011
We present a short history of the TAUVEX instrument, conceived to provide
multi-band wide-field imaging in the ultraviolet, emphasizing the lack of
sufficient and aggressive support on the part of the different space agencies
that dealt with this basic science mission. First conceived in 1985 and
selected by the Israel Space Agency in 1989 as its first priority payload,
TAUVEX is fast becoming one of the longest-living space project of space
astronomy. After being denied a launch on a national Israeli satellite, and
then not flying on the Spectrum X-Gamma (SRG) international observatory, it was
manifested since 2003 as part of ISRO's GSAT-4 Indian satellite to be launched
in the late 2000s. However, two months before the launch, in February 2010, it
was dismounted from its agreed-upon platform. This proved to be beneficial,
since GSAT-4 and its launcher were lost on April 15 2010 due to the failure of
the carrier rocket's 3rd stage. TAUVEX is now stored in ISRO's clean room in
Bangalore with no firm indications when or on what platform it might be
launched.Comment: Invited contribution presented at the "UV Universe 2010". Accepted
for publication in Astrophysics & Space Scienc
HeMIS: Hetero-Modal Image Segmentation
We introduce a deep learning image segmentation framework that is extremely
robust to missing imaging modalities. Instead of attempting to impute or
synthesize missing data, the proposed approach learns, for each modality, an
embedding of the input image into a single latent vector space for which
arithmetic operations (such as taking the mean) are well defined. Points in
that space, which are averaged over modalities available at inference time, can
then be further processed to yield the desired segmentation. As such, any
combinatorial subset of available modalities can be provided as input, without
having to learn a combinatorial number of imputation models. Evaluated on two
neurological MRI datasets (brain tumors and MS lesions), the approach yields
state-of-the-art segmentation results when provided with all modalities;
moreover, its performance degrades remarkably gracefully when modalities are
removed, significantly more so than alternative mean-filling or other synthesis
approaches.Comment: Accepted as an oral presentation at MICCAI 201
Radar and optical leonids
International audienceWe present joint optical-radar observations of meteors collected near the peak of the leonid activity in 2002. We show four examples of joint detections with a large, phased array L-band radar and with intensified video cameras. The general characteristic of the radar-detected optical meteors is that they show the radar detection below the termination of the optical meteor. Therefore, at least some radar events associated with meteor activity are neither head echoes nor trail echoes, but probably indicate the formation of "charged clouds" after the visual meteor is extinguished
Properties of dust in early-type galaxies
We report optical extinction properties of dust for a sample of 26 early-type
galaxies based on the analysis of their multicolour CCD observations. The
wavelength dependence of dust extinction for these galaxies is determined and
the extinction curves are found to run parallel to the Galactic extinction
curve, which implies that the properties of dust in the extragalactic
environment are quite similar to those of the Milky Way. For the sample
galaxies, value of the parameter , the ratio of total extinction in
band to selective extinction in & bands, lies in the range 2.03 - 3.46
with an average of 3.02, compared to its canonical value of 3.1 for the Milky
Way. A dependence of on dust morphology of the host galaxy is also
noticed in the sense that galaxies with a well defined dust lane show tendency
to have smaller values compared to the galaxies with disturbed dust
morphology. The dust content of these galaxies estimated using total optical
extinction is found to lie in the range to 10^6 \rm M_{\sun}, an order
of magnitude smaller than those derived from IRAS flux densities, indicating
that a significant fraction of dust intermixed with stars remains undetected by
the optical method. We examine the relationship between dust mass derived from
IRAS flux and the X-ray luminosity of the host galaxies.The issue of the origin
of dust in early-type galaxies is also discussed.Comment: 12 pages, 6 figures. Accepted for publication in Astronomy &
Astrophysic
Spectral Graph Convolutions for Population-based Disease Prediction
Exploiting the wealth of imaging and non-imaging information for disease
prediction tasks requires models capable of representing, at the same time,
individual features as well as data associations between subjects from
potentially large populations. Graphs provide a natural framework for such
tasks, yet previous graph-based approaches focus on pairwise similarities
without modelling the subjects' individual characteristics and features. On the
other hand, relying solely on subject-specific imaging feature vectors fails to
model the interaction and similarity between subjects, which can reduce
performance. In this paper, we introduce the novel concept of Graph
Convolutional Networks (GCN) for brain analysis in populations, combining
imaging and non-imaging data. We represent populations as a sparse graph where
its vertices are associated with image-based feature vectors and the edges
encode phenotypic information. This structure was used to train a GCN model on
partially labelled graphs, aiming to infer the classes of unlabelled nodes from
the node features and pairwise associations between subjects. We demonstrate
the potential of the method on the challenging ADNI and ABIDE databases, as a
proof of concept of the benefit from integrating contextual information in
classification tasks. This has a clear impact on the quality of the
predictions, leading to 69.5% accuracy for ABIDE (outperforming the current
state of the art of 66.8%) and 77% for ADNI for prediction of MCI conversion,
significantly outperforming standard linear classifiers where only individual
features are considered.Comment: International Conference on Medical Image Computing and
Computer-Assisted Interventions (MICCAI) 201
Tversky loss function for image segmentation using 3D fully convolutional deep networks
Fully convolutional deep neural networks carry out excellent potential for
fast and accurate image segmentation. One of the main challenges in training
these networks is data imbalance, which is particularly problematic in medical
imaging applications such as lesion segmentation where the number of lesion
voxels is often much lower than the number of non-lesion voxels. Training with
unbalanced data can lead to predictions that are severely biased towards high
precision but low recall (sensitivity), which is undesired especially in
medical applications where false negatives are much less tolerable than false
positives. Several methods have been proposed to deal with this problem
including balanced sampling, two step training, sample re-weighting, and
similarity loss functions. In this paper, we propose a generalized loss
function based on the Tversky index to address the issue of data imbalance and
achieve much better trade-off between precision and recall in training 3D fully
convolutional deep neural networks. Experimental results in multiple sclerosis
lesion segmentation on magnetic resonance images show improved F2 score, Dice
coefficient, and the area under the precision-recall curve in test data. Based
on these results we suggest Tversky loss function as a generalized framework to
effectively train deep neural networks
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