41,089 research outputs found
Fine-graind Image Classification via Combining Vision and Language
Fine-grained image classification is a challenging task due to the large
intra-class variance and small inter-class variance, aiming at recognizing
hundreds of sub-categories belonging to the same basic-level category. Most
existing fine-grained image classification methods generally learn part
detection models to obtain the semantic parts for better classification
accuracy. Despite achieving promising results, these methods mainly have two
limitations: (1) not all the parts which obtained through the part detection
models are beneficial and indispensable for classification, and (2)
fine-grained image classification requires more detailed visual descriptions
which could not be provided by the part locations or attribute annotations. For
addressing the above two limitations, this paper proposes the two-stream model
combining vision and language (CVL) for learning latent semantic
representations. The vision stream learns deep representations from the
original visual information via deep convolutional neural network. The language
stream utilizes the natural language descriptions which could point out the
discriminative parts or characteristics for each image, and provides a flexible
and compact way of encoding the salient visual aspects for distinguishing
sub-categories. Since the two streams are complementary, combining the two
streams can further achieves better classification accuracy. Comparing with 12
state-of-the-art methods on the widely used CUB-200-2011 dataset for
fine-grained image classification, the experimental results demonstrate our CVL
approach achieves the best performance.Comment: 9 pages, to appear in CVPR 201
Quantum Criticality of one-dimensional multicomponent Fermi Gas with Strongly Attractive Interaction
Quantum criticality of strongly attractive Fermi gas with symmetry in
one dimension is studied via the thermodynamic Bethe ansatz (TBA) equations.The
phase transitions driven by the chemical potential , effective magnetic
field , (chemical potential biases) are analyzed at the quantum
criticality. The phase diagram and critical fields are analytically determined
by the thermodynamic Bethe ansatz equations in zero temperature limit. High
accurate equations of state, scaling functions are also obtained analytically
for the strong interacting gases. The dynamic exponent and correlation
length exponent read off the universal scaling form. It turns out
that the quantum criticality of the three-component gases involves a sudden
change of density of states of one cluster state, two or three cluster states.
In general, this method can be adapted to deal with the quantum criticality of
multi-component Fermi gases with symmetry.Comment: 20 pages, 5 figures, submitted to J.Phys.A, revised versio
Note on the Radion Effective Potential in the Presence of Branes
In String Theory compactification, branes are often invoked to get the
desired form of the radion effective potential. Current popular way of doing
this assumes that the introduction of branes will not modify the background
geometry in an important way. In this paper, we show by an explicit example
that at least in the codimension 2 case, the gravitational backreaction of the
brane cannot be neglected in deriving the radion effective potential. Actually,
in this case, the presence of branes will have no effect on the dynamics of
radion.Comment: 6 pages, no figures. Some discussion clarified, conclusion unchanged.
To appear in Phys. Rev.
Gravitational potential in Palatini formulation of modified gravity
General Relativity has so far passed almost all the ground-based and
solar-system experiments. Any reasonable extended gravity models should
consistently reduce to it at least in the weak field approximation. In this
work we derive the gravitational potential for the Palatini formulation of the
modified gravity of the L(R) type which admits a de Sitter vacuum solution. We
conclude that the Newtonian limit is always obtained in those class of models
and the deviations from General Relativity is very small for a slowly moving
source.Comment: 5 pages, no figure
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