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CUNY Systems for the Query-by-Example Search on Speech Task at MediaEval 2015
{Andrew Rosenberg Min Ma}

Abstract
This paper describes two query-by-example systems developed by Speech Lab, Queens College (CUNY). Our systems aimed to respond with quick search results from the selected reference files. Three phonetic recognizers (Czech, Hungarian and Russian) were utilized to get phoneme sequences of both query and reference speech files. Each query sequence were compared with all the reference sequences using both global and local aligners. In the first system, we predicted the most probable reference files based on the sequence alignment results; In the second system, we pruned out the subsequences from the reference sequences that yielded best local symbolic alignments, then 39-dimension MFCC features were extracted for both query and the subsequences. Both the two systems employed an optimized DTW, and obtained Cnxe of 0.9989 and 1.0674 on the test data respectively.
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| keyword-spotting-on-quesst | CUNY [SMO+iSAX] (dev) | ATWV: 0.0011 Cnxe: 0.9988 MTWV: 0.0067 MinCnxe: 0.9872 |
| keyword-spotting-on-quesst | CUNY [Subseq+MFCC] (eval) | ATWV: -4.0205 Cnxe: 1.0674 MTWV: 0.0006 MinCnxe: 0.9853 |
| keyword-spotting-on-quesst | CUNY [Subseq+MFCC] (dev) | ATWV: -3.9820 Cnxe: 1.0658 MTWV: 0.0123 MinCnxe: 0.9823 |
| keyword-spotting-on-quesst | CUNY [SMO+iSAX] (eval) | ATWV: 0.0006 Cnxe: 0.9989 MTWV: 0.0010 MinCnxe: 0.9870 |
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