The fifth Oriental Language Recognition (OLR) Challenge focuses on language recognition in a variety of complex environments to promote its development. The OLR 2020 Challenge includes three tasks: (1) cross-channel language identification, (2) dialect identification, and (3) noisy language identification. We choose Cavg as the principle evaluation metric, and the Equal Error Rate (EER) as the secondary metric. There were 58 teams participating in this challenge and one third of the teams submitted valid results. Compared with the best baseline, the Cavg values of Top 1 system for the three tasks were relatively reduced by 82%, 62% and 48%, respectively. This paper describes the three tasks, the database profile, and the final results. We also outline the novel approaches that improve the performance of language recognition systems most significantly, such as the utilization of auxiliary information.
翻译:第五个东方语言识别(OLR)挑战侧重于在各种复杂环境中的语文识别,以促进其发展。2020年奥伦坡挑战包括三项任务:(1) 跨通道语言识别,(2) 方言识别,(3) 噪音语言识别。我们选择Cavg作为主要评估指标,而平等误差率(EER)作为次要衡量标准。有58个团队参与这项挑战,三分之一团队提交了有效结果。与最佳基线相比,三大任务前一系统的Cavg值分别相对减少了82%、62%和48%。本文描述了三项任务、数据库概况和最终结果。我们还概述了最显著改善语言识别系统绩效的新办法,如辅助信息的利用。