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Emergency Siren Recognition in Urban Scenarios: Synthetic Dataset and Deep Learning Models

机译:紧急警笛在城市情景中的认识:合成数据集和深度学习模式

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Emergency Siren Recognition (ESR) is an important issue for automotive safety. We are interested in the early recognition of ambulance sirens in urban scenarios, where noise can be produced by a wide variety of sources and represents an impediment to the perception of alarm sounds by drivers. In this paper, we propose a deep convolutional neural network based on the U-Net encoding path for the ESR task. To overcome the problem of audio acquisition, an algorithm has been implemented to generate a synthetic dataset that reproduces the sound of a siren in multiple urban traffic contexts. We perform emergency sound recognition to identify the presence of the alerting sound using spectrogram-like features. Our experimental evaluations demonstrate that our ESR approach has achieved excellent performance both in mono-scenarios and multi-scenarios at very low SNRs, also in conditions unseen during training thanks to a large amount of training data.
机译:紧急警告识别(ESR)是汽车安全的一个重要问题。我们对在城市情景中的救护车警报器的早期认可感兴趣,其中噪音可以通过各种来源产生,并且代表驾驶员对警报声音感知的障碍。在本文中,我们基于ESR任务的U-Net编码路径提出了一个深度卷积神经网络。为了克服音频采集的问题,已经实现了一种算法来生成合成数据集,其在多个城市交通上下文中再现Siren的声音。我们执行紧急声音识别以使用频谱图的特征来识别警报声的存在。我们的实验评估表明,我们的ESR方法在非常低的SNR中的单情景和多场景中取得了良好的性能,同时在培训期间的条件下,由于大量的培训数据。

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