A comparison of audio-based deep learning methods for detecting anomalous road events

R Balia, A Giuliani, L Piano, A Pisu, R Saia… - Procedia Computer …, 2022 - Elsevier
Procedia Computer Science, 2022Elsevier
Road surveillance systems have an important role in monitoring roads and safeguarding
their users. Many of these systems are based on video streams acquired from urban video
surveillance infrastructures, from which it is possible to reconstruct the dynamics of accidents
and detect other events. However, such systems may lack accuracy in adverse
environmental settings: for instance, poor lighting, weather conditions, and occlusions can
reduce the effectiveness of the automatic detection and consequently increase the rate of …
Abstract
Road surveillance systems have an important role in monitoring roads and safeguarding their users. Many of these systems are based on video streams acquired from urban video surveillance infrastructures, from which it is possible to reconstruct the dynamics of accidents and detect other events. However, such systems may lack accuracy in adverse environmental settings: for instance, poor lighting, weather conditions, and occlusions can reduce the effectiveness of the automatic detection and consequently increase the rate of false or missed alarms. These issues can be mitigated by integrating such solutions with audio analysis modules, that can improve the ability to recognize distinctive events such as car crashes. For this purpose, in this work we propose a preliminary analysis of solutions based on Deep Learning techniques for the automatic identification of hazardous events through the analysis of audio spectrograms.
Elsevier
以上显示的是最相近的搜索结果。 查看全部搜索结果