293 research outputs found
Offline-to-Online Knowledge Distillation for Video Instance Segmentation
In this paper, we present offline-to-online knowledge distillation (OOKD) for
video instance segmentation (VIS), which transfers a wealth of video knowledge
from an offline model to an online model for consistent prediction. Unlike
previous methods that having adopting either an online or offline model, our
single online model takes advantage of both models by distilling offline
knowledge. To transfer knowledge correctly, we propose query filtering and
association (QFA), which filters irrelevant queries to exact instances. Our KD
with QFA increases the robustness of feature matching by encoding
object-centric features from a single frame supplemented by long-range global
information. We also propose a simple data augmentation scheme for knowledge
distillation in the VIS task that fairly transfers the knowledge of all classes
into the online model. Extensive experiments show that our method significantly
improves the performance in video instance segmentation, especially for
challenging datasets including long, dynamic sequences. Our method also
achieves state-of-the-art performance on YTVIS-21, YTVIS-22, and OVIS datasets,
with mAP scores of 46.1%, 43.6%, and 31.1%, respectively
Electronic Manipulation of Magnon Topology by Chirality Injection from Boundaries
Magnon bands are known to exhibit nontrivial topology in ordered magnets
under suitable conditions, engendering topological phases referred to as
magnonic topological insulators. Conventional methods to drive a magnonic
topological phase transition are bulk magnetic or thermal operations such as
changing the direction of an external magnetic field or varying the temperature
of the system, which are undesired in device applications of magnon topology.
In this work, we lift the limitation of the magnon topology control on the bulk
non-electronic manipulation by proposing a scheme to manipulate magnonic
topological phases by electronic boundary operations of spin chirality
injection. More specifically, we consider a ferromagnetic honeycomb lattice and
show that a finite spin chirality injected from the boundary of the system via
the spin Hall effects introduces a tunable sublattice-symmetry-breaking mass
term to the bosonic counterpart of the Haldane model for the Chern insulators
and thereby allows us to electronically manipulate the bulk topology of magnons
from the boundary. The "shoulder" in the thermal Hall conductivity profile is
proposed as an experimental probe of the chirality-induced topological phase
transition. The scheme for the boundary manipulation of the magnon topology is
shown to work for a honeycomb antiferromagnet as well. We envisage that the
interfacial chirality injection may offer a nonintrusive electronic means to
tune the static and the dynamical bulk properties of general magnetic systems.Comment: 5 pages, 3 figure
Smart Tourism of the Korea: A Case Study
The utilization of Information Technology (IT) is spreading in tourism industry with explosive growth of Internet, Social Network Service (SNS) through smart phone applications. Especially, since intensive information has high value on tourism area, IT is becoming a crucial factor in the tourism industry. The smart tourism is explained as an holistic approach that provide tour information, service related to travel, such as destination, food, transportation, reservation, travel guide, conveniently to tourists through IT devices. In our research, we focus on the Korea Tourism Organizationās (KTOās) smart tourism case. This research concentrates on the necessity and effectiveness of smart tourism which delivers travel information in real-time base. Also, our study overview how KTOās IT operation manages each channel, website, SNS, applications and finally suggests the smart tourismās future direction for the successful realization
Advancing Bayesian Optimization via Learning Correlated Latent Space
Bayesian optimization is a powerful method for optimizing black-box functions
with limited function evaluations. Recent works have shown that optimization in
a latent space through deep generative models such as variational autoencoders
leads to effective and efficient Bayesian optimization for structured or
discrete data. However, as the optimization does not take place in the input
space, it leads to an inherent gap that results in potentially suboptimal
solutions. To alleviate the discrepancy, we propose Correlated latent space
Bayesian Optimization (CoBO), which focuses on learning correlated latent
spaces characterized by a strong correlation between the distances in the
latent space and the distances within the objective function. Specifically, our
method introduces Lipschitz regularization, loss weighting, and trust region
recoordination to minimize the inherent gap around the promising areas. We
demonstrate the effectiveness of our approach on several optimization tasks in
discrete data, such as molecule design and arithmetic expression fitting, and
achieve high performance within a small budget
In vivo fluorescence imaging of conjunctival goblet cells
Conjunctival goblet cells (GCs) are specialized epithelial cells that secrete mucins onto the ocular surface to maintain the wet environment. Assessment of GCs is important because various ocular surface diseases are associated with their loss. Although there are GC assessment methods available, the current methods are either invasive or difficult to use. In this report, we developed a simple and non-invasive GC assessment method based on fluorescence imaging. Moxifloxacin ophthalmic solution was used to label GCs via topical administration, and then various fluorescence microscopies could image GCs in high contrasts. Fluorescence imaging of GCs in the mouse conjunctiva was confirmed by both confocal reflection microscopy and histology with Periodic acid-Schiff (PAS) labeling. Real-time in-vivo conjunctival GC imaging was demonstrated in a rat model by using both confocal fluorescence microscopy and simple wide-field fluorescence microscopy. Different GC densities were observed in the forniceal and bulbar conjunctivas of the rat eye. Moxifloxacin based fluorescence imaging provides high-contrast images of conjunctival GCs non-invasively and could be useful for the study or diagnosis of GC related ocular surface diseases.11Ysciescopu
Learning Whole-body Manipulation for Quadrupedal Robot
We propose a learning-based system for enabling quadrupedal robots to
manipulate large, heavy objects using their whole body. Our system is based on
a hierarchical control strategy that uses the deep latent variable embedding
which captures manipulation-relevant information from interactions,
proprioception, and action history, allowing the robot to implicitly understand
object properties. We evaluate our framework in both simulation and real-world
scenarios. In the simulation, it achieves a success rate of 93.6 % in
accurately re-positioning and re-orienting various objects within a tolerance
of 0.03 m and 5 {\deg}. Real-world experiments demonstrate the successful
manipulation of objects such as a 19.2 kg water-filled drum and a 15.3 kg
plastic box filled with heavy objects while the robot weighs 27 kg. Unlike
previous works that focus on manipulating small and light objects using
prehensile manipulation, our framework illustrates the possibility of using
quadrupeds for manipulating large and heavy objects that are ungraspable with
the robot's entire body. Our method does not require explicit object modeling
and offers significant computational efficiency compared to optimization-based
methods. The video can be found at https://youtu.be/fO_PVr27QxU
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