793 research outputs found
Neural Baby Talk
We introduce a novel framework for image captioning that can produce natural
language explicitly grounded in entities that object detectors find in the
image. Our approach reconciles classical slot filling approaches (that are
generally better grounded in images) with modern neural captioning approaches
(that are generally more natural sounding and accurate). Our approach first
generates a sentence `template' with slot locations explicitly tied to specific
image regions. These slots are then filled in by visual concepts identified in
the regions by object detectors. The entire architecture (sentence template
generation and slot filling with object detectors) is end-to-end
differentiable. We verify the effectiveness of our proposed model on different
image captioning tasks. On standard image captioning and novel object
captioning, our model reaches state-of-the-art on both COCO and Flickr30k
datasets. We also demonstrate that our model has unique advantages when the
train and test distributions of scene compositions -- and hence language priors
of associated captions -- are different. Code has been made available at:
https://github.com/jiasenlu/NeuralBabyTalkComment: 12 pages, 7 figures, CVPR 201
Reinforcement Learning for Ramp Control: An Analysis of Learning Parameters
Reinforcement Learning (RL) has been proposed to deal with ramp control problems under dynamic traffic conditions; however, there is a lack of sufficient research on the behaviour and impacts of different learning parameters. This paper describes a ramp control agent based on the RL mechanism and thoroughly analyzed the influence of three learning parameters; namely, learning rate, discount rate and action selection parameter on the algorithm performance. Two indices for the learning speed and convergence stability were used to measure the algorithm performance, based on which a series of simulation-based experiments were designed and conducted by using a macroscopic traffic flow model. Simulation results showed that, compared with the discount rate, the learning rate and action selection parameter made more remarkable impacts on the algorithm performance. Based on the analysis, some suggestionsabout how to select suitable parameter values that can achieve a superior performance were provided
Kerr-AdS/CFT Correspondence in Diverse Dimensions
It was proposed recently that the near-horizon states of an extremal
four-dimensional Kerr black hole could be identified with a certain chiral
conformal field theory whose Virasoro algebra arises as an asymptotic symmetry
algebra of the near-horizon Kerr geometry. Supportive evidence for the proposed
duality came from the equality of the microscopic entropy of the CFT,
calculated by means of the Cardy formula, and the Bekenstein-Hawking entropy of
the extremal Kerr black hole. In this paper we examine the proposed Kerr/CFT
correspondence in a broader context. In particular, we show that the
microscopic entropy and the Bekenstein-Hawking entropy agree also for the
extremal Kerr-AdS metric in four dimensions, and also for the extremal Kerr-AdS
metrics in dimensions 5, 6 and 7. General formulae for all higher dimensions
are also presented.Comment: Latex, 19 pages, typos corrected and references adde
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