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Real-Time Emergency Vehicle Siren Detection with Efficient CNNs on Embedded Hardware

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arxiv 2507.01563 v1 pith:M4JYE647 submitted 2025-07-02 cs.SD cs.AIeess.AS

Real-Time Emergency Vehicle Siren Detection with Efficient CNNs on Embedded Hardware

classification cs.SD cs.AIeess.AS
keywords detectionemergencyreal-timesystemvehicleacousticacrossaudioset-ev
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present a full-stack emergency vehicle (EV) siren detection system designed for real-time deployment on embedded hardware. The proposed approach is based on E2PANNs, a fine-tuned convolutional neural network derived from EPANNs, and optimized for binary sound event detection under urban acoustic conditions. A key contribution is the creation of curated and semantically structured datasets - AudioSet-EV, AudioSet-EV Augmented, and Unified-EV - developed using a custom AudioSet-Tools framework to overcome the low reliability of standard AudioSet annotations. The system is deployed on a Raspberry Pi 5 equipped with a high-fidelity DAC+microphone board, implementing a multithreaded inference engine with adaptive frame sizing, probability smoothing, and a decision-state machine to control false positive activations. A remote WebSocket interface provides real-time monitoring and facilitates live demonstration capabilities. Performance is evaluated using both framewise and event-based metrics across multiple configurations. Results show the system achieves low-latency detection with improved robustness under realistic audio conditions. This work demonstrates the feasibility of deploying IoS-compatible SED solutions that can form distributed acoustic monitoring networks, enabling collaborative emergency vehicle tracking across smart city infrastructures through WebSocket connectivity on low-cost edge devices.

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