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Audio surveillance of roads using deep learning and autoencoder-based sample weight initialization

机译:使用深度学习和基于自动编码器的样本权重初始化对道路进行音频监控

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Road safety has always been a major concern, where a variety of competences is involved, ranging from government and local authorities, medical caregivers and other service provides. Prompt intervention in emergency cases is one of the key factors to minimize damages. Therefore, real-time surveillance is proposed as an efficient means to detect problems on roads. Video surveillance alone is not enough to detect serious accidents, since any hazardous behavior on the road may be confused with an accident, which may lead to many wrong alarms. Instead, audio processing has the potential to recognize sounds coming from different sources, such as crashes, tire skidding, harsh braking, etc. Since a few years, deep learning has become the state of the art for audio events detection. However, the usual dominance of absence of events in road surveillance would make a bias in the training process. Therefore, a novel method to initialize the neural network's weights using an autoencoder trained only on event-related data is used to balance the data distribution.
机译:道路安全一直是人们关注的主要问题,涉及各种权限,包括政府和地方当局,医疗人员和其他服务提供者。紧急情况下的及时干预是使损失最小化的关键因素之一。因此,提出了实时监视作为检测道路问题的有效手段。仅凭视频监控不足以检测严重事故,因为道路上的任何危险行为都可能与事故相混淆,这可能导致许多错误警报。取而代之的是,音频处理具有识别来自不同来源的声音的潜力,例如碰撞,轮胎打滑,严酷的制动等。几年以来,深度学习已成为检测音频事件的最新技术。但是,在道路监视中通常没有事件的优势将在训练过程中产生偏差。因此,一种使用仅对事件相关数据进行训练的自动编码器来初始化神经网络权重的新颖方法可用于平衡数据分布。

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