This paper proposes a benchmark of submissions to Detection and Classification Acoustic Scene and Events 2021 Challenge (DCASE) Task 4 representing a sampling of the state-of-the-art in Sound Event Detection task. The submissions are evaluated according to the two polyphonic sound detection score scenarios proposed for the DCASE 2021 Challenge Task 4, which allow to make an analysis on whether submissions are designed to perform fine-grained temporal segmentation, coarse-grained temporal segmentation, or have been designed to be polyvalent on the scenarios proposed. We study the solutions proposed by participants to analyze their robustness to varying level target to non-target signal-to-noise ratio and to temporal localization of target sound events. A last experiment is proposed in order to study the impact of non-target events on systems outputs. Results show that systems adapted to provide coarse segmentation outputs are more robust to different target to non-target signal-to-noise ratio and, with the help of specific data augmentation methods, they are more robust to time localization of the original event. Results of the last experiment display that systems tend to spuriously predict short events when non-target events are present. This is particularly true for systems that are tailored to have a fine segmentation.
翻译:本文提出2021年声频场景和事件探测和分类挑战(DCASE)任务4提交材料的基准,该任务是对 " 健康事件探测 " 中最先进的发现任务进行抽样评估,按照为DCASE 2021挑战任务4提出的两种多声音音探测分数假设方案对提交材料进行评价,以便分析提交材料的目的是用来进行微分的时段分割、粗微偏差的时段分割,还是设计成对拟议假设方案具有多重价值。我们研究参与者提出的解决办法,以分析其是否稳健地达到非目标信号对噪音比率和目标事件时间定位的不同水平目标。提议进行最后一项试验,以研究非目标事件对系统产出的影响。结果显示,为提供粗微分分数产出而调整的系统,对于非目标信号对噪音比率的不同目标更为有力,在特定数据扩增方法的帮助下,它们对于原始事件的时间定位更为有力。上次试验的结果显示,当非目标事件发生时,系统往往对短片段事件作出精确的预测。