34,158 research outputs found

    Spatio-Temporal Patterning in Primary Motor Cortex at Movement Onset

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    Voluntary movement initiation involves the engagement of large populations of motor cortical neurons around movement onset. Despite knowledge of the temporal dynamics that lead to movement, the spatial structure of these dynamics across the cortical surface remains unknown. In data from 4 rhesus macaques, we show that the timing of attenuation of beta frequency local field potential oscillations, a correlate of locally activated cortex, forms a spatial gradient across primary motor cortex (MI). We show that these spatio-temporal dynamics are recapitulated in the engagement order of ensembles of MI neurons. We demonstrate that these patterns are unique to movement onset and suggest that movement initiation requires a precise spatio-temporal sequential activation of neurons in MI

    Collaborative Concealment of Spatio-Temporal Mobile Sequential Patterns

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    Recent advances in communication and information technology such as the increasing accuracy of GPS technology and the portability of wireless communication devices coat the way for Location Based Services LBS Based on the data collected from the location aware mobile devices data mining techniques are used to meet the quality requirements of expected services The efficient management of moving object databases has gained much interest in recent years due to the development of mobile communication and positioning technologies A typical way of representing moving objects is to use the trajectories Much work has focused on the topics of indexing query processing and data mining of moving object trajectories but little attention has been paid to the preservation of privacy in this setting The major contribution of this paper is to provide privacy to the users of Location Based Services along with capturing interesting user s behavior pattern by broaden the ideas presented in the datamining-literatur

    Sign Spotting using Hierarchical Sequential Patterns with Temporal Intervals

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    This paper tackles the problem of spotting a set of signs occuring in videos with sequences of signs. To achieve this, we propose to model the spatio-temporal signatures of a sign using an extension of sequential patterns that contain temporal intervals called Sequential Interval Patterns (SIP). We then propose a novel multi-class classifier that organises different sequential interval patterns in a hierarchical tree structure called a Hierarchical SIP Tree (HSP-Tree). This allows one to exploit any subsequence sharing that exists between different SIPs of different classes. Multiple trees are then combined together into a forest of HSP-Trees resulting in a strong classifier that can be used to spot signs. We then show how the HSP-Forest can be used to spot sequences of signs that occur in an input video. We have evaluated the method on both concatenated sequences of isolated signs and continuous sign sequences. We also show that the proposed method is superior in robustness and accuracy to a state of the art sign recogniser when applied to spotting a sequence of signs.This work was funded by the UK government

    Parameters estimation for spatio-temporal maximum entropy distributions: application to neural spike trains

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    We propose a numerical method to learn Maximum Entropy (MaxEnt) distributions with spatio-temporal constraints from experimental spike trains. This is an extension of two papers [10] and [4] who proposed the estimation of parameters where only spatial constraints were taken into account. The extension we propose allows to properly handle memory effects in spike statistics, for large sized neural networks.Comment: 34 pages, 33 figure
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