More bridges today require maintenance with age, owing to increasing structural loads from traffic and natural disasters. Routine inspection for damages, including in the aftermath of special events, is conducted by experts. To address the limitations of human inspection, deep-learning-based analysis of bridge damage is being actively conducted. However, such models exhibit deteriorated performance in classifying multiple classes. Most existing algorithms do not use in situ images. Hence, the results of the model training do not accurately reflect the actual damage. This study utilizes an extant method and proposes a new model of combination training by bridge member. By integrating the two approaches, we propose a bridge damaged-object-det...
Bridge inspections are relied heavily on visual inspection, and usually conducted within limited tim...
Many bridges in the State of Louisiana and the United States are working under serious degradation c...
2017PDFTech ReportSun, ChaoZhang, ZhimingLouisiana State University (Baton Rouge, La.). Department o...
This work proposes a supervised Deep Learning approach for damage identification in bridge structure...
This study presents a new approach for bridge damage detection using multi-level data fusion and ano...
The vast network of bridges in the United States raises a high requirement for maintenance and rehab...
Conventional practices of bridge visual inspection present several limitations, including a tedious ...
This work proposes a novel supervised learning approach to identify damage in operating bridge struc...
In this paper, a novel method is proposed based on a windowed-one-dimensional convolutional neural n...
Using Unmanned Aerial Systems (UASs) for bridge visual inspection automation necessitates the implem...
Artificial Intelligence (AI) and allied disruptive technologies have revolutionized the scientific w...
To ensure the safety and rational use of bridge traffic lines, the existing bridge structural damage...
In this work, we propose a combined approach of model-based and machine learning techniques for dama...
Bridge crack detection is essential to ensure bridge safety. The introduction of deep learning techn...
Rapid advances in infrastructure health monitoring and sensing technologies allow monitoring of asse...
Bridge inspections are relied heavily on visual inspection, and usually conducted within limited tim...
Many bridges in the State of Louisiana and the United States are working under serious degradation c...
2017PDFTech ReportSun, ChaoZhang, ZhimingLouisiana State University (Baton Rouge, La.). Department o...
This work proposes a supervised Deep Learning approach for damage identification in bridge structure...
This study presents a new approach for bridge damage detection using multi-level data fusion and ano...
The vast network of bridges in the United States raises a high requirement for maintenance and rehab...
Conventional practices of bridge visual inspection present several limitations, including a tedious ...
This work proposes a novel supervised learning approach to identify damage in operating bridge struc...
In this paper, a novel method is proposed based on a windowed-one-dimensional convolutional neural n...
Using Unmanned Aerial Systems (UASs) for bridge visual inspection automation necessitates the implem...
Artificial Intelligence (AI) and allied disruptive technologies have revolutionized the scientific w...
To ensure the safety and rational use of bridge traffic lines, the existing bridge structural damage...
In this work, we propose a combined approach of model-based and machine learning techniques for dama...
Bridge crack detection is essential to ensure bridge safety. The introduction of deep learning techn...
Rapid advances in infrastructure health monitoring and sensing technologies allow monitoring of asse...
Bridge inspections are relied heavily on visual inspection, and usually conducted within limited tim...
Many bridges in the State of Louisiana and the United States are working under serious degradation c...
2017PDFTech ReportSun, ChaoZhang, ZhimingLouisiana State University (Baton Rouge, La.). Department o...