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Human–computer interaction / Instruction set architectures / Computer accessibility / Speech recognition / Computing / Qualcomm Hexagon / Speaker recognition / Automatic identification and data capture / Computer architecture / Digital signal processors


DSP.Ear: Leveraging Co-Processor Support for Continuous Audio Sensing on Smartphones Petko Georgiev§ , Nicholas D. Lane† , Kiran K. Rachuri§‡ , Cecilia Mascolo§ § University of Cambridge, † Microsoft Research,
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Document Date: 2014-09-09 15:46:08


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File Size: 1,93 MB

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