Publication Details
QUESST 2014: Evaluating Query-By-Example Speech Search in a Zero-Resource
Rodriguez-Fuentes Luis (FIT)
Buzo Andi (FIT)
Metze Florian
Szőke Igor, Ing., Ph.D. (DCGM)
Penagarikano Mikel (FIT)
low-resource speech recognition, query-byexample speech search, spoken term detection
This paper describes the "Query-by-Example Speech Search Task" (QUESST), held as part of the 2014 MediaEval benchmark campaign. The purpose of the evaluation was to perform language independent search on speech by using speech queries.
In this paper, we present the task and describe the main findings of the 2014 "Query-by-Example Speech Search Task" (QUESST) evaluation. The purpose of QUESST was to perform language independent search of spoken queries on spoken documents, while targeting languages or acoustic conditions for which very few speech resources are available. This evaluation investigated for the first time the performance of query-by-example search against morphological and morpho-syntactic variability, requiring participants to match variants of a spoken query in several languages of different morphological complexity. Another novelty is the use of the normalized cross entropy cost (Cnxe) as the primary performance metric, keeping Term-Weighted Value (TWV) as a secondary metric for comparison with previous evaluations. After analyzing the most competitive submissions (by five teams), we find that, although low-level "pattern matching" approaches provide the best performance for "exact" matches, "symbolic" approaches working on higher-level representations seem to perform better in more complex settings, such as matching morphological variants. Finally, optimizing the output scores for Cnxe seems to generate systems that are more robust to differences in the operating point and that also perform well in terms of TWV, whereas the opposite might not be always true.
@inproceedings{BUT119900,
author="Xavier {Anguera} and Luis {Rodriguez-Fuentes} and Andi {Buzo} and Florian {Metze} and Igor {Szőke} and Mikel {Penagarikano}",
title="QUESST 2014: Evaluating Query-By-Example Speech Search in a Zero-Resource",
booktitle="Proceedings of 2015 IEEE International Conference on Acoustics, Speech and Signal Processing",
year="2015",
pages="5833--5837",
publisher="IEEE Signal Processing Society",
address="South Brisbane, Queensland",
doi="10.1109/ICASSP.2015.7179090",
isbn="978-1-4673-6997-8",
url="http://www.fit.vutbr.cz/research/groups/speech/publi/2015/anguera_icassp2015_0005833.pdf"
}