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Main Authors: Rachuri, Ravi Datta, Liao, Duoduo, Sarikonda, Samhita, Kondur, Datha Vaishnavi
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2412.17968
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author Rachuri, Ravi Datta
Liao, Duoduo
Sarikonda, Samhita
Kondur, Datha Vaishnavi
author_facet Rachuri, Ravi Datta
Liao, Duoduo
Sarikonda, Samhita
Kondur, Datha Vaishnavi
contents This paper presents a pilot study introducing a multimodal fusion framework for the detection and analysis of bridge defects, integrating Non-Destructive Evaluation (NDE) techniques with advanced image processing to enable precise structural assessment. By combining data from Impact Echo (IE) and Ultrasonic Surface Waves (USW) methods, this preliminary investigation focuses on identifying defect-prone regions within concrete structures, emphasizing critical indicators such as delamination and debonding. Using geospatial analysis with alpha shapes, fusion of defect points, and unified lane boundaries, the proposed framework consolidates disparate data sources to enhance defect localization and facilitate the identification of overlapping defect regions. Cross-verification with adaptive image processing further validates detected defects by aligning their coordinates with visual data, utilizing advanced contour-based mapping and bounding box techniques for precise defect identification. The experimental results, with an F1 score of 0.83, demonstrate the potential efficacy of the approach in improving defect localization, reducing false positives, and enhancing detection accuracy, which provides a foundation for future research and larger-scale validation. This preliminary exploration establishes the framework as a promising tool for efficient bridge health assessment, with implications for proactive structural monitoring and maintenance.
format Preprint
id arxiv_https___arxiv_org_abs_2412_17968
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle A Multimodal Fusion Framework for Bridge Defect Detection with Cross-Verification
Rachuri, Ravi Datta
Liao, Duoduo
Sarikonda, Samhita
Kondur, Datha Vaishnavi
Computer Vision and Pattern Recognition
This paper presents a pilot study introducing a multimodal fusion framework for the detection and analysis of bridge defects, integrating Non-Destructive Evaluation (NDE) techniques with advanced image processing to enable precise structural assessment. By combining data from Impact Echo (IE) and Ultrasonic Surface Waves (USW) methods, this preliminary investigation focuses on identifying defect-prone regions within concrete structures, emphasizing critical indicators such as delamination and debonding. Using geospatial analysis with alpha shapes, fusion of defect points, and unified lane boundaries, the proposed framework consolidates disparate data sources to enhance defect localization and facilitate the identification of overlapping defect regions. Cross-verification with adaptive image processing further validates detected defects by aligning their coordinates with visual data, utilizing advanced contour-based mapping and bounding box techniques for precise defect identification. The experimental results, with an F1 score of 0.83, demonstrate the potential efficacy of the approach in improving defect localization, reducing false positives, and enhancing detection accuracy, which provides a foundation for future research and larger-scale validation. This preliminary exploration establishes the framework as a promising tool for efficient bridge health assessment, with implications for proactive structural monitoring and maintenance.
title A Multimodal Fusion Framework for Bridge Defect Detection with Cross-Verification
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2412.17968