2,927 research outputs found
Continuous-Scale Kinetic Fluid Simulation
Kinetic approaches, i.e., methods based on the lattice Boltzmann equations,
have long been recognized as an appealing alternative for solving
incompressible Navier-Stokes equations in computational fluid dynamics.
However, such approaches have not been widely adopted in graphics mainly due to
the underlying inaccuracy, instability and inflexibility. In this paper, we try
to tackle these problems in order to make kinetic approaches practical for
graphical applications. To achieve more accurate and stable simulations, we
propose to employ the non-orthogonal central-moment-relaxation model, where we
develop a novel adaptive relaxation method to retain both stability and
accuracy in turbulent flows. To achieve flexibility, we propose a novel
continuous-scale formulation that enables samples at arbitrary resolutions to
easily communicate with each other in a more continuous sense and with loose
geometrical constraints, which allows efficient and adaptive sample
construction to better match the physical scale. Such a capability directly
leads to an automatic sample construction which generates static and dynamic
scales at initialization and during simulation, respectively. This effectively
makes our method suitable for simulating turbulent flows with arbitrary
geometrical boundaries. Our simulation results with applications to smoke
animations show the benefits of our method, with comparisons for justification
and verification.Comment: 17 pages, 17 figures, accepted by IEEE Transactions on Visualization
and Computer Graphic
Generalized derivations of -Lie algebras
Generalized derivations, quasiderivations and quasicentroid of -algebras
are introduced, and basic relations between them are studied. Structures of
quasiderivations and quasicentroid of -Lie algebras, which contains a
maximal diagonalized tours, are systematically investigated. The main results
are: for all -Lie algebra , 1) the generalized derivation algebra
is the sum of quasiderivation algebra and quasicentroid
; 2) quasiderivations of can be embedded as derivations in a
larger algebra; 3) quasiderivation algebra normalizer quasicentroid,
that is, ; 4) if contains a
maximal diagonalized tours , then and are
diagonalized -modules, that is, as -modules, semi-simplely acts
on and , respectively.Comment: 19 pages. arXiv admin note: text overlap with arXiv:0805.1202 by
other author
Serial Concatenation of RS Codes with Kite Codes: Performance Analysis, Iterative Decoding and Design
In this paper, we propose a new ensemble of rateless forward error correction
(FEC) codes. The proposed codes are serially concatenated codes with
Reed-Solomon (RS) codes as outer codes and Kite codes as inner codes. The inner
Kite codes are a special class of prefix rateless low-density parity-check
(PRLDPC) codes, which can generate potentially infinite (or as many as
required) random-like parity-check bits. The employment of RS codes as outer
codes not only lowers down error-floors but also ensures (with high
probability) the correctness of successfully decoded codewords. In addition to
the conventional two-stage decoding, iterative decoding between the inner code
and the outer code are also implemented to improve the performance further. The
performance of the Kite codes under maximum likelihood (ML) decoding is
analyzed by applying a refined Divsalar bound to the ensemble weight
enumerating functions (WEF). We propose a simulation-based optimization method
as well as density evolution (DE) using Gaussian approximations (GA) to design
the Kite codes. Numerical results along with semi-analytic bounds show that the
proposed codes can approach Shannon limits with extremely low error-floors. It
is also shown by simulation that the proposed codes performs well within a wide
range of signal-to-noise-ratios (SNRs).Comment: 34 pages, 15 figure
Mixed Robust/Average Submodular Partitioning: Fast Algorithms, Guarantees, and Applications to Parallel Machine Learning and Multi-Label Image Segmentation
We study two mixed robust/average-case submodular partitioning problems that
we collectively call Submodular Partitioning. These problems generalize both
purely robust instances of the problem (namely max-min submodular fair
allocation (SFA) and min-max submodular load balancing (SLB) and also
generalize average-case instances (that is the submodular welfare problem (SWP)
and submodular multiway partition (SMP). While the robust versions have been
studied in the theory community, existing work has focused on tight
approximation guarantees, and the resultant algorithms are not, in general,
scalable to very large real-world applications. This is in contrast to the
average case, where most of the algorithms are scalable. In the present paper,
we bridge this gap, by proposing several new algorithms (including those based
on greedy, majorization-minimization, minorization-maximization, and relaxation
algorithms) that not only scale to large sizes but that also achieve
theoretical approximation guarantees close to the state-of-the-art, and in some
cases achieve new tight bounds. We also provide new scalable algorithms that
apply to additive combinations of the robust and average-case extreme
objectives. We show that these problems have many applications in machine
learning (ML). This includes: 1) data partitioning and load balancing for
distributed machine algorithms on parallel machines; 2) data clustering; and 3)
multi-label image segmentation with (only) Boolean submodular functions via
pixel partitioning. We empirically demonstrate the efficacy of our algorithms
on real-world problems involving data partitioning for distributed optimization
of standard machine learning objectives (including both convex and deep neural
network objectives), and also on purely unsupervised (i.e., no supervised or
semi-supervised learning, and no interactive segmentation) image segmentation
Deep Learning Based Robot for Automatically Picking up Garbage on the Grass
This paper presents a novel garbage pickup robot which operates on the grass.
The robot is able to detect the garbage accurately and autonomously by using a
deep neural network for garbage recognition. In addition, with the ground
segmentation using a deep neural network, a novel navigation strategy is
proposed to guide the robot to move around. With the garbage recognition and
automatic navigation functions, the robot can clean garbage on the ground in
places like parks or schools efficiently and autonomously. Experimental results
show that the garbage recognition accuracy can reach as high as 95%, and even
without path planning, the navigation strategy can reach almost the same
cleaning efficiency with traditional methods. Thus, the proposed robot can
serve as a good assistance to relieve dustman's physical labor on garbage
cleaning tasks.Comment: 8 pages, 13 figures,TCE accepte
Smart Guiding Glasses for Visually Impaired People in Indoor Environment
To overcome the travelling difficulty for the visually impaired group, this
paper presents a novel ETA (Electronic Travel Aids)-smart guiding device in the
shape of a pair of eyeglasses for giving these people guidance efficiently and
safely. Different from existing works, a novel multi sensor fusion based
obstacle avoiding algorithm is proposed, which utilizes both the depth sensor
and ultrasonic sensor to solve the problems of detecting small obstacles, and
transparent obstacles, e.g. the French door. For totally blind people, three
kinds of auditory cues were developed to inform the direction where they can go
ahead. Whereas for weak sighted people, visual enhancement which leverages the
AR (Augment Reality) technique and integrates the traversable direction is
adopted. The prototype consisting of a pair of display glasses and several low
cost sensors is developed, and its efficiency and accuracy were tested by a
number of users. The experimental results show that the smart guiding glasses
can effectively improve the user's travelling experience in complicated indoor
environment. Thus it serves as a consumer device for helping the visually
impaired people to travel safely.Comment: 9 pages,15 figures, IEEE transaction on consumer electronics receive
Learning Robust, Transferable Sentence Representations for Text Classification
Despite deep recurrent neural networks (RNNs) demonstrate strong performance
in text classification, training RNN models are often expensive and requires an
extensive collection of annotated data which may not be available. To overcome
the data limitation issue, existing approaches leverage either pre-trained word
embedding or sentence representation to lift the burden of training RNNs from
scratch. In this paper, we show that jointly learning sentence representations
from multiple text classification tasks and combining them with pre-trained
word-level and sentence level encoders result in robust sentence
representations that are useful for transfer learning. Extensive experiments
and analyses using a wide range of transfer and linguistic tasks endorse the
effectiveness of our approach.Comment: arXiv admin note: substantial text overlap with arXiv:1804.0791
RepNet: Cutting Tail Latency in Data Center Networks with Flow Replication
Data center networks need to provide low latency, especially at the tail, as
demanded by many interactive applications. To improve tail latency, existing
approaches require modifications to switch hardware and/or end-host operating
systems, making them difficult to be deployed. We present the design,
implementation, and evaluation of RepNet, an application layer transport that
can be deployed today. RepNet exploits the fact that only a few paths among
many are congested at any moment in the network, and applies simple flow
replication to mice flows to opportunistically use the less congested path.
RepNet has two designs for flow replication: (1) RepSYN, which only replicates
SYN packets and uses the first connection that finishes TCP handshaking for
data transmission, and (2) RepFlow which replicates the entire mice flow. We
implement RepNet on {\tt node.js}, one of the most commonly used platforms for
networked interactive applications. {\tt node}'s single threaded event-loop and
non-blocking I/O make flow replication highly efficient. Performance evaluation
on a real network testbed and in Mininet reveals that RepNet is able to reduce
the tail latency of mice flows, as well as application completion times, by
more than 50\%
Reddening of the BLR and NLR in AGN From a Systematic Analysis of Balmer Decrement
We selected an active galactic nuclei (AGN) sample () from
Sloan Digital Sky Survey Data Release 7, and measured the broad- () and narrow-line Balmer decrements () of 554 selected AGNs. We found that the distributions
of Balmer decrements can be fitted by a Gaussian function and give the best
estimates of with a standard deviation
0.07 dex, and with a standard deviation
0.10 dex. We inspected the distributions of and
in the BaldwinPhillipsTerlevich (BPT)
diagram and found that only narrow-line Balmer decrements depend on the
physical conditions of the narrow-line region (NLR). We tested the relationship
between and , and
found that does not correlate with . We investigated the relationship between Balmer
decrements and Seyfert sub-type, and found that only broad-line Balmer
decrements correlate with Seyfert sub-type, We also examined the dependency of
Balmer decrements on AGN properties, and found that Balmer decrements have no
correlation with optical luminosity, but show some dependence on accretion
rate. These results indicate that the NLR is subject to more reddening by dust
than the broad-line region (BLR).Comment: 10 pages, 9 figures, 1 table, accepted for publication in MNRA
Object Skeleton Extraction in Natural Images by Fusing Scale-associated Deep Side Outputs
Object skeleton is a useful cue for object detection, complementary to the
object contour, as it provides a structural representation to describe the
relationship among object parts. While object skeleton extraction in natural
images is a very challenging problem, as it requires the extractor to be able
to capture both local and global image context to determine the intrinsic scale
of each skeleton pixel. Existing methods rely on per-pixel based multi-scale
feature computation, which results in difficult modeling and high time
consumption. In this paper, we present a fully convolutional network with
multiple scale-associated side outputs to address this problem. By observing
the relationship between the receptive field sizes of the sequential stages in
the network and the skeleton scales they can capture, we introduce a
scale-associated side output to each stage. We impose supervision to different
stages by guiding the scale-associated side outputs toward groundtruth
skeletons of different scales. The responses of the multiple scale-associated
side outputs are then fused in a scale-specific way to localize skeleton pixels
with multiple scales effectively. Our method achieves promising results on two
skeleton extraction datasets, and significantly outperforms other competitors.Comment: Accepted by CVPR201
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