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Can Synthetic Data Boost the Training of Deep Acoustic Vehicle Counting Networks?

17 January 2024
Stefano Damiano
Luca Bondi
Shabnam Ghaffarzadegan
Andre Guntoro
Toon van Waterschoot
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Abstract

In the design of traffic monitoring solutions for optimizing the urban mobility infrastructure, acoustic vehicle counting models have received attention due to their cost effectiveness and energy efficiency. Although deep learning has proven effective for visual traffic monitoring, its use has not been thoroughly investigated in the audio domain, likely due to real-world data scarcity. In this work, we propose a novel approach to acoustic vehicle counting by developing: i) a traffic noise simulation framework to synthesize realistic vehicle pass-by events; ii) a strategy to mix synthetic and real data to train a deep-learning model for traffic counting. The proposed system is capable of simultaneously counting cars and commercial vehicles driving on a two-lane road, and identifying their direction of travel under moderate traffic density conditions. With only 24 hours of labeled real-world traffic noise, we are able to improve counting accuracy on real-world data from 63%63\%63% to 88%88\%88% for cars and from 86%86\%86% to 94%94\%94% for commercial vehicles.

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