REAL-WORLD ON-BOARD UAV AUDIO DATA SET FOR PROPELLER ANOMALIES
Sai Srinadhu Katta, Kide Vuoj�rvi, Sivaprasad Nandyala, Ulla-Maria Kovalainen, Lauren Baddeley
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Detecting propeller damage in Unmanned Aerial Vehicles (UAV) is a crucial step in ensuring their operational resilience and safety. In this work, we present a novel real-world audio data set of propeller anomalies, and use several deep learning models to classify the damage. This data set consists of more than 5 hours of audio recordings, covering all configurations of intact and broken propellers in a UAV quadcopter. A microphone array was mounted onto a UAV, and numerous autonomous indoor missions were flown. Our on-board setup has provided clean audio recordings containing little background noise. We have developed classification models for this data set, using different deep learning architectures: Deep Neural Networks (DNNs), Convolutional Neural Networks (CNNs), Long Short-Term Memory (LSTM), and Transformer Encoder (TrEnc). We conclude that the TrEnc outperforms other architectures, having 11k parameters, .57M Flops, 98.30% accuracy, .98 precision, and .98 recall. Finally, we make our data set publicly available here [https://github.com/tiiuae/UAV-Propeller-Anomaly-Audio-Dataset].