Conference paper
Multi-modal biometrics for mobile authentication
Hagai Aronowitz, Min Li, et al.
IJCB 2014
The Single Instruction Multiple Data (SIMD) model for fine-grained parallelism was recently extended to support SIMD operations on disjoint vector elements. In this paper we demonstrate how SIMdD (SIMD on disjoint data) supports effective vectorization of digital signal processing (DSP) benchmarks, by facilitating data reorganization and reuse. In particular we show that this model can be adopted by a compiler to achieve near-optimal performance for important classes of kernels. Copyright 2003 ACM.
Hagai Aronowitz, Min Li, et al.
IJCB 2014
Alexander Sorin, Slava Shechtman, et al.
INTERSPEECH 2018
Jaime H. Moreno, Victor Zyuban, et al.
IBM J. Res. Dev
Hillery C. Hunter, Jaime H. Moreno
CASES 2003