Damaged footpaths, including cracks and surface irregularities, pose significant risks to pedestrians in urban environments. To facilitate research in automated infrastructure monitoring and pedestrian fall-risk mitigation, we introduce the Indian Footpath Damage Segmentation Dataset, a high-resolution image collection captured using a professional SLR camera under diverse lighting and weather conditions in Pune, India. Each image has been manually annotated with pixel-level segmentation masks using the LabelMe tool, targeting a single class: footpath damage. Annotations include severity levels (low, medium, high) based on crack width, defined in consultation with civil engineering experts. To demonstrate the dataset's utility, we trained a U-Net model with an EfficientNet-B3 encoder and attention-based decoder, and further experimented with ResNeXt50₃2x4d encoders and ensemble methods incorporating a convolutional fusion head. Our best-performing ensemble model achieved a Dice score of 0. 6899, Intersection over Union (IoU) of 0. 6741, accuracy of 0. 9317, precision of 0. 7154, recall of 0. 6932, and F1-score of 0. 6899. The dataset is openly accessible for academic and research use on Zenodo.
Chakurkar et al. (Mon,) studied this question.
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