基于多尺度注意法的弱监督声音事件检测联合检测分类模型

Yaoguang Wang, Liang He
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引用次数: 0

摘要

注意机制已被应用于弱监督声事件检测(SED)中,并取得了较好的效果,但大多数方法只集中在时间轴上。本文提出了一种多尺度时频注意(MTFA)方法,用于音频标记(at)和SED标记(SED)在时间和频域上捕捉不同尺度的固有特征。我们的模型是一个可以同时执行语音识别和语音识别的统一网络,它通过MTFA模块为语音识别生成多尺度的注意力感知表示,并通过全局池化模块将这些表示映射到语音识别中相应音频事件的出现概率。为了对该方法进行评价,我们在声学场景和事件检测与分类(DCASE)任务Task4上进行了实验,在评估集上,该方法在AT任务中达到57.9% (f1分),在SED任务中达到0.71(错误率),与该挑战的最新结果相当。
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A Joint Detection-Classification Model for Weakly Supervised Sound Event Detection Using Multi-Scale Attention Method
Attention mechanism has been applied to the weakly supervised sound event detection (SED) and has achieved state-of-the-art performance, but most methods only concentrate along the time axis. In this paper, we propose the multi-scale time-frequency attention (MTFA) method to capture the intrinsic features at different scales both in time and frequency domain for audio tagging (AT) and SED. Our model is a unified network which can perform AT and SED simultaneously, it produces multi-scale attention-aware representations for SED with MTFA module, and a global pooling module maps the representations to presence probability of corresponding audio event for AT. To evaluate the proposed method, we conduct experiments on Task4 of Detection and Classification of Acoustic Scenes and Events (DCASE) challenge, and it achieves 57.9% (F1-score) in AT task and 0.71 (error rate) in SED task on evaluation set, which is comparable to the state-of-the-art results in the challenge.
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