The periodic inspection of railroad tracks is very important to find structural and geometrical problems that lead to railway accidents. Currently, in Pakistan, rail tracks are inspected by an acoustic-based manual system that requires a railway engineer as a domain expert to differentiate between different rail tracks’ faults, which is cumbersome, laborious, and error-prone. This study proposes the use of traditional acoustic-based systems with deep learning models to increase performance and reduce train accidents. Two convolutional neural networks (CNN) models, convolutional 1D and convolutional 2D, and one recurrent neural network (RNN) model, a long short-term memory (LSTM) model, are used in this regard. Initially, three types of faul...
High deployment costs, safety risks, and time delays restrict traditional track detection methods in...
In this study, real-time detection of defects that may occur in rail components will be investigated...
Rail surface defects have become more of an issue in recent years due to new manufacturing technique...
Regular inspection of railway track health is crucial for maintaining safe and reliable train operat...
Regular inspection of railway track health is crucial for maintaining safe and reliable train operat...
Within Artificial Intelligence, Deep Learning (DL) represents a paradigm that has been showing unpre...
Condition monitoring of railway tracks is effective for the sake of an increase in the safety of reg...
The hard equation of railway safety versus the high commercial profits can only be achieved through ...
The work described in this Thesis has been conducted at the Department of Electrical Engineering and...
Railway track inspection is a vital task to ensure safe and efficient train travel. However, traditi...
Within Artificial Intelligence, Deep Learning (DL) represents a paradigm that has been showing unpre...
This article focuses on investigating the utilization of deep convolutional neural networks for segm...
The contemporary exigency for efficient and meticulous rail-track maintenance within the expansive r...
Rail track is a critical component of rail systems. Accidents or interruptions caused by rail track ...
In this paper, we propose a deep convolutional neural network solution to the analysis of image data...
High deployment costs, safety risks, and time delays restrict traditional track detection methods in...
In this study, real-time detection of defects that may occur in rail components will be investigated...
Rail surface defects have become more of an issue in recent years due to new manufacturing technique...
Regular inspection of railway track health is crucial for maintaining safe and reliable train operat...
Regular inspection of railway track health is crucial for maintaining safe and reliable train operat...
Within Artificial Intelligence, Deep Learning (DL) represents a paradigm that has been showing unpre...
Condition monitoring of railway tracks is effective for the sake of an increase in the safety of reg...
The hard equation of railway safety versus the high commercial profits can only be achieved through ...
The work described in this Thesis has been conducted at the Department of Electrical Engineering and...
Railway track inspection is a vital task to ensure safe and efficient train travel. However, traditi...
Within Artificial Intelligence, Deep Learning (DL) represents a paradigm that has been showing unpre...
This article focuses on investigating the utilization of deep convolutional neural networks for segm...
The contemporary exigency for efficient and meticulous rail-track maintenance within the expansive r...
Rail track is a critical component of rail systems. Accidents or interruptions caused by rail track ...
In this paper, we propose a deep convolutional neural network solution to the analysis of image data...
High deployment costs, safety risks, and time delays restrict traditional track detection methods in...
In this study, real-time detection of defects that may occur in rail components will be investigated...
Rail surface defects have become more of an issue in recent years due to new manufacturing technique...