27,155 research outputs found
Centrosymmetric, Skew Centrosymmetric and Centrosymmetric Cauchy Tensors
Recently, Zhao and Yang introduced centrosymmetric tensors. In this paper, we
further introduce skew centrosymmetric tensors and centrosymmetric Cauchy
tensors, and discuss properties of these three classes of structured tensors.
Some sufficient and necessary conditions for a tensor to be centrosymmetric or
skew centrosymmetric are given. We show that, a general tensor can always be
expressed as the sum of a centrosymmetric tensor and a skew centrosymmetric
tensor. Some sufficient and necessary conditions for a Cauchy tensor to be
centrosymmetric or skew centrosymmetric are also given. Spectral properties on
H-eigenvalues and H-eigenvectors of centrosymmetric, skew centrosymmetric and
centrosymmetric Cauchy tensors are discussed. Some further questions on these
tensors are raised
Parameterized Synthetic Image Data Set for Fisheye Lens
Based on different projection geometry, a fisheye image can be presented as a
parameterized non-rectilinear image. Deep neural networks(DNN) is one of the
solutions to extract parameters for fisheye image feature description. However,
a large number of images are required for training a reasonable prediction
model for DNN. In this paper, we propose to extend the scale of the training
dataset using parameterized synthetic images. It effectively boosts the
diversity of images and avoids the data scale limitation. To simulate different
viewing angles and distances, we adopt controllable parameterized projection
processes on transformation. The reliability of the proposed method is proved
by testing images captured by our fisheye camera. The synthetic dataset is the
first dataset that is able to extend to a big scale labeled fisheye image
dataset. It is accessible via: http://www2.leuphana.de/misl/fisheye-data-set/.Comment: 2018 5th International Conference on Information Science and Control
Engineerin
Discrete approximations to reflected Brownian motion
In this paper we investigate three discrete or semi-discrete approximation
schemes for reflected Brownian motion on bounded Euclidean domains. For a class
of bounded domains in that includes all bounded Lipschitz
domains and the von Koch snowflake domain, we show that the laws of both
discrete and continuous time simple random walks on
moving at the rate with stationary initial distribution converge
weakly in the space , equipped with the
Skorokhod topology, to the law of the stationary reflected Brownian motion on
. We further show that the following ``myopic conditioning'' algorithm
generates, in the limit, a reflected Brownian motion on any bounded domain .
For every integer , let be a discrete
time Markov chain with one-step transition probabilities being the same as
those for the Brownian motion in conditioned not to exit before time
. We prove that the laws of converge to that of the reflected
Brownian motion on . These approximation schemes give not only new ways of
constructing reflected Brownian motion but also implementable algorithms to
simulate reflected Brownian motion.Comment: Published in at http://dx.doi.org/10.1214/009117907000000240 the
Annals of Probability (http://www.imstat.org/aop/) by the Institute of
Mathematical Statistics (http://www.imstat.org
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