This paper presents a novel machine learning approach using convolutional neural networks (CNN) to predict road accident risks by analyzing Google Maps images of road segments. The model accounts for complex road geometry and surrounding features, offering a cost-effective and globally applicable solution for improving road safety. Results demonstrate the model's effectiveness in predicting accident-prone locations across multiple cities, with high accuracy metrics achieved.
Related topics: