36,621 research outputs found
Evaluation of Deep Learning on an Abstract Image Classification Dataset
Convolutional Neural Networks have become state of the art methods for image
classification over the last couple of years. By now they perform better than
human subjects on many of the image classification datasets. Most of these
datasets are based on the notion of concrete classes (i.e. images are
classified by the type of object in the image). In this paper we present a
novel image classification dataset, using abstract classes, which should be
easy to solve for humans, but variations of it are challenging for CNNs. The
classification performance of popular CNN architectures is evaluated on this
dataset and variations of the dataset that might be interesting for further
research are identified.Comment: Copyright IEEE. To be published in the proceedings of MBCC at
ICCV201
Economic Polarization Through Trade: Trade Liberalization and Regional Growth in Mexico
economic growth, regional disparities, trade, integration, polarization, Mexico
Learning Abstract Classes using Deep Learning
Humans are generally good at learning abstract concepts about objects and
scenes (e.g.\ spatial orientation, relative sizes, etc.). Over the last years
convolutional neural networks have achieved almost human performance in
recognizing concrete classes (i.e.\ specific object categories). This paper
tests the performance of a current CNN (GoogLeNet) on the task of
differentiating between abstract classes which are trivially differentiable for
humans. We trained and tested the CNN on the two abstract classes of horizontal
and vertical orientation and determined how well the network is able to
transfer the learned classes to other, previously unseen objects.Comment: To be published in the proceedings of the International Conference on
Bio-inspired Information and Communications Technologies 201
Sensitivity to the Higgs sector of SUSY-seesaw models via LFV tau decays
Here we study and compare the sensitivity to the Higgs sector of the
SUSY-seesaw models via the LFV tau decays: tau-> 3 mu, tau->K^{+}K^{-}, tau->mu
eta and tau-> mu f_{0}. We emphasize that, at present, the two later channels
are the most efficient ones to test indirectly the Higgs particles.Comment: 4 pages, 3 figures, conference SUSY09 Boston (M.Herrero
The tidally disturbed luminous compact blue galaxy Mkn 1087 and its surroundings
We present new broad-band optical and near-infrared CCD imaging together with
deep optical intermediate-resolution spectroscopy of Mkn 1087 and its
surrounding objects. We analyze the morphology and colors of the stellar
populations of the brightest objects, some of them star-formation areas, as
well as the kinematics, physical conditions and chemical composition of the
ionized gas associated with them. Mkn 1087 does not host an Active Galactic
Nucleus, but it could be a Luminous Compact Blue Galaxy. Although it was
classified as a suspected Wolf-Rayet galaxy, we do not detect the spectral
features of these sort of massive stars. Mkn 1087 shows morphological and
kinematical features that can be explained assuming that it is in interaction
with two nearby galaxies: the bright KPG 103a and a dwarf ()
star-forming companion. We argue that this dwarf companion is not a tidal
object but an external galaxy because of its low metallicity [12+log(O/H) =
8.24] with respect to the one derived for Mkn 1087 [12+log(O/H) = 8.57] and its
kinematics. Some of the non-stellar objects surrounding Mkn 1087 are connected
by bridges of matter with the main body, host star-formation events and show
similar abundances despite their different angular distances. These facts,
together their kinematics, suggest that they are tidal dwarf galaxies formed
from material stripped from Mkn 1087. A bright star-forming region at the south
of Mkn 1087 (knot #7) does not show indications of being a tidal galaxy or the
product of a merging process as suggested in previous works. We argue that Mkn
1087 and its surroundings should be considered a group of galaxies.Comment: Accepted by A&A, 21 pages, 13 figures, 8 table
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