# A Convolutional Cost-Sensitive Crack Localization Algorithm for   Automated and Reliable RC Bridge Inspection

**Authors:** Seyed Omid Sajedi, Xiao Liang

arXiv: 1905.09716 · 2019-05-24

## TL;DR

This paper introduces a deep learning-based semantic segmentation method for automatic crack localization in bridge inspections using UAV imagery, addressing class imbalance to improve detection accuracy and reliability.

## Contribution

It proposes a novel convolutional cost-sensitive framework tailored for crack detection in UAV images, enhancing robustness over traditional manual inspection methods.

## Key findings

- High accuracy in crack detection demonstrated on real-world images
- Effective handling of class imbalance improves model reliability
- Potential for automated bridge health monitoring using UAV imagery

## Abstract

Bridges are an essential part of the transportation infrastructure and need to be monitored periodically. Visual inspections by dedicated teams have been one of the primary tools in structural health monitoring (SHM) of bridge structures. However, such conventional methods have certain shortcomings. Manual inspections may be challenging in harsh environments and are commonly biased in nature. In the last decade, camera-equipped unmanned aerial vehicles (UAVs) have been widely used for visual inspections; however, the task of automatically extracting useful information from raw images is still challenging. In this paper, a deep learning semantic segmentation framework is proposed to automatically localize surface cracks. Due to the high imbalance of crack and background classes in images, different strategies are investigated to improve performance and reliability. The trained models are tested on real-world crack images showing impressive robustness in terms of the metrics defined by the concepts of precision and recall. These techniques can be used in SHM of bridges to extract useful information from the unprocessed images taken from UAVs.

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Source: https://tomesphere.com/paper/1905.09716