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Eldar

Eldar Akchurin, Aachen DE

Patent application numberDescriptionPublished
20100091715COGNITIVE CHANNEL ADAPTATION IN WIRELESS SENSOR NETWORKS - Cognitive radio adaptation is employed in WSNs to reduce effects of RF interference. Communication channel quality is assessed locally at each node. Using beacons to propagate channel quality and node related information among the nodes of the network, channel adaptation decision is made either centrally by identifying a channel that is optimum for a majority of nodes through a tree-structure dissemination (Majority Voting Scheme) or in a distributed manner by identifying a channel where maximum interference for any node is less than maximum interference on the other channels (Veto Voting Scheme). If two channels have the same level of maximal interference, the channel with a lesser number is chosen. Channel quality assessment may be optimized based on expected interference type and/or statistical methods.04-15-2010

Eldar Causevic, Ellisville, MO US

Patent application numberDescriptionPublished
20100185115APPARATUS FOR EVOKING AND RECORDING BIO-POTENTIALS - Apparatus (07-22-2010

Eldar Giladi, Arlington, MA US

Patent application numberDescriptionPublished
20100063742MULTI-SCALE SHORT READ ASSEMBLY - The invention generally provides methods for analyzing and constructing nucleic acid sequences and more specifically for assembling a collection of short read nucleic acid sequences to construct longer nucleic acid sequences.03-11-2010

Eldar Yonina, Haifa IL

Patent application numberDescriptionPublished
20090068951Spectrum-Blind Sampling And Reconstruction Of Multi-Band Signals - A signal processing method includes sampling an analog signal, which has a spectral density defining one or more bands, to produce a digitized signal. A spectral transform of the digitized signal is expressed as a matrix multiplied by a vector, wherein the vector includes multiple elements that represent the spectral density of the analog signal as a function of frequency within respective spectral slices. Indices of a subset of the elements of the vector, in which the spectral density is concentrated, is determined. The analog signal is reconstructed from the digitized signal using the subset of the elements of the vector and a corresponding subset of columns of the matrix having the indices.03-12-2009