Raw Data Is All You Need: Virtual Axle Detector with Enhanced Receptive Field

09/04/2023
by   Henik Riedel, et al.
0

Rising maintenance costs of ageing infrastructure necessitate innovative monitoring techniques. This paper presents a new approach for axle detection, enabling real-time application of Bridge Weigh-In-Motion (BWIM) systems without dedicated axle detectors. The proposed method adapts the Virtual Axle Detector (VAD) model to handle raw acceleration data, which allows the receptive field to be increased. The proposed Virtual Axle Detector with Enhanced Receptive field (VADER) improves the F_1 score by 73% and spatial accuracy by 39%, while cutting computational and memory costs by 99% compared to the state-of-the-art VAD. VADER reaches a F_1 score of 99.4% and a spatial error of 4.13 cm when using a representative training set and functional sensors. We also introduce a novel receptive field (RF) rule for an object-size driven design of Convolutional Neural Network (CNN) architectures. Based on this rule, our results suggest that models using raw data could achieve better performance than those using spectrograms, offering a compelling reason to consider raw data as input.

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