Machine Learning Model for Road Anomaly Detection Using Smartphone Accelerometer Data Academic Article in Scopus uri icon

abstract

  • This paper presents a vibration-based machine learning approach for road surface monitoring using smartphone sensors. With Mexico¿s road network experiencing significant deterioration and potholes ranking as citizens¿ top concern, we propose a convolutional neural network (CNN) model that analyzes accelerometer and gyroscope data from Android smartphones to detect road anomalies. Our methodology includes a custom mobile application for data collection, feature extraction through moving average filtering, and a 2-CNN architecture for classification. Experimental results demonstrate 98% accuracy in distinguishing potholes from speed bumps when using six sensor features, compares favorably with previously reported vibration-based approaches. The system¿s low-cost implementation and high accuracy indicate that it may be well suited for large-scale road condition monitoring using mobile crowd-sensing paradigms. © 2013 IEEE.

publication date

  • January 1, 2025