Automated Sidewalk Surface Detection Using Wearable Accelerometry and Deep Learning

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Abstract

Walking-friendly cities not only promote health and environmental benefits but also play crucial roles in urban development and local economic revitalization. Typically, pedestrian interviews and surveys are used to evaluate walkability. However, these methods can be costly to implement at scale, as they demand considerable time and resources. To address limitations in current methods for evaluating pedestrian pathways, we propose a novel approach utilizing wearable sensors and deep learning. This new method provides benefits in terms of efficiency and cost-effectiveness while ensuring a more objective and consistent evaluation of sidewalk surfaces. In the proposed method, we used wearable accelerometers to capture participants’ acceleration along the vertical (V), anterior-posterior (AP) , and medio-lateral (ML) axes. This data is then transformed into the frequency domain using Fast Transform (FFT), Kalman filter, lowpass filter, and moving average filter. A deep learning model is subsequently utilized to classify the conditions of the sidewalk surfaces using this transformed data. Experimental results indicate that the proposed model achieves a notable accuracy rate of 95.17%.

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