55,657 research outputs found
Signatures of primordial gravitational waves in matter power spectrum
We simulate the evolution of a dust universe from to by
numerically integrating the Einstein's equation for a spatially flat
Friedmann-Lemaire-Robertson-Walker (FLRW) background spacetime with scalar
perturbations which are derived from the matter power spectrum produced with
the Code for Anisotropies in the Microwave Background (CAMB). To investigate
the effects of primordial gravitational waves (GWs) on the inhomogeneity of the
universe, we add an additional decaying, divergenceless and traceless
primordial tensor perturbation with its initial amplitude being to the above metric. We find that this primordial tensor perturbation
suppresses the matter power spectrum by about at for modes with
wave number similar to its. This suppression may be a possible probe of a GWs
background in the future.Comment: 8 pages, 5 figure
Multi-Label Zero-Shot Human Action Recognition via Joint Latent Ranking Embedding
Human action recognition refers to automatic recognizing human actions from a
video clip. In reality, there often exist multiple human actions in a video
stream. Such a video stream is often weakly-annotated with a set of relevant
human action labels at a global level rather than assigning each label to a
specific video episode corresponding to a single action, which leads to a
multi-label learning problem. Furthermore, there are many meaningful human
actions in reality but it would be extremely difficult to collect/annotate
video clips regarding all of various human actions, which leads to a zero-shot
learning scenario. To the best of our knowledge, there is no work that has
addressed all the above issues together in human action recognition. In this
paper, we formulate a real-world human action recognition task as a multi-label
zero-shot learning problem and propose a framework to tackle this problem in a
holistic way. Our framework holistically tackles the issue of unknown temporal
boundaries between different actions for multi-label learning and exploits the
side information regarding the semantic relationship between different human
actions for knowledge transfer. Consequently, our framework leads to a joint
latent ranking embedding for multi-label zero-shot human action recognition. A
novel neural architecture of two component models and an alternate learning
algorithm are proposed to carry out the joint latent ranking embedding
learning. Thus, multi-label zero-shot recognition is done by measuring
relatedness scores of action labels to a test video clip in the joint latent
visual and semantic embedding spaces. We evaluate our framework with different
settings, including a novel data split scheme designed especially for
evaluating multi-label zero-shot learning, on two datasets: Breakfast and
Charades. The experimental results demonstrate the effectiveness of our
framework.Comment: 27 pages, 10 figures and 7 tables. Technical report submitted to a
journal. More experimental results/references were added and typos were
correcte
Random restricted partitions
We study two types of probability measures on the set of integer partitions
of with at most parts. The first one chooses the random partition with
a chance related to its largest part only. We then obtain the limiting
distributions of all of the parts together and that of the largest part as
tends to infinity while is fixed or tends to infinity. In particular, if
goes to infinity not fast enough, the largest part satisfies the central
limit theorem. The second measure is very general. It includes the Dirichlet
distribution and the uniform distribution as special cases. We derive the
asymptotic distributions of the parts jointly and that of the largest part by
taking limit of and in the same manner as that in the first probability
measure.Comment: 32 page
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