2,403 research outputs found
Rail Robot for Rail Track Inspection
Railway transportation requires constant inspections and immediate maintenance to ensure public safety. Traditional manual inspections are not only time consuming, but also expensive. In addition, the accuracy of defect detection is also subjected to human expertise and efficiency at the time of inspection. Computing and Robotics offer automated IoT based solutions where robots could be deployed on rail-tracks and hard to reach areas, and controlled from control rooms to provide faster and low-cost inspection. In this thesis, a novel automated system based on robotics and visual inspection is proposed. The system provides local image processing while inspecting and cloud storage of information that consist of images of the defected railway tracks only. The proposed system utilizes state of the art Machine Learning system and applies it on the images obtained from the tracks in order to classify them as normal or suspicious. Such locations are then marked and more careful inspection can be performed by a dedicated operator with very few locations to inspect (as opposed to the full track)
A deep learning approach towards railway safety risk assessment
Railway stations are essential aspects of railway systems, and they play a vital role in public daily life. Various types of AI technology have been utilised in many fields to ensure the safety of people and their assets. In this paper, we propose a novel framework that uses computer vision and pattern recognition to perform risk management in railway systems in which a convolutional neural network (CNN) is applied as a supervised machine learning model to identify risks. However, risk management in railway stations is challenging because stations feature dynamic and complex conditions. Despite extensive efforts by industry associations and researchers to reduce the number of accidents and injuries in this field, such incidents still occur. The proposed model offers a beneficial method for obtaining more accurate motion data, and it detects adverse conditions as soon as possible by capturing fall, slip and trip (FST) events in the stations that represent high-risk outcomes. The framework of the presented method is generalisable to a wide range of locations and to additional types of risks
Decentralized Vision-Based Byzantine Agent Detection in Multi-Robot Systems with IOTA Smart Contracts
Multiple opportunities lie at the intersection of multi-robot systems and
distributed ledger technologies (DLTs). In this work, we investigate the
potential of new DLT solutions such as IOTA, for detecting anomalies and
byzantine agents in multi-robot systems in a decentralized manner. Traditional
blockchain approaches are not applicable to real-world networked and
decentralized robotic systems where connectivity conditions are not ideal. To
address this, we leverage recent advances in partition-tolerant and
byzantine-tolerant collaborative decision-making processes with IOTA smart
contracts. We show how our work in vision-based anomaly and change detection
can be applied to detecting byzantine agents within multiple robots operating
in the same environment. We show that IOTA smart contracts add a low
computational overhead while allowing to build trust within the multi-robot
system. The proposed approach effectively enables byzantine robot detection
based on the comparison of images submitted by the different robots and
detection of anomalies and changes between them
Robotic equipment carrying RN detectors: requirements and capabilities for testing
77 pags., 32 figs., 5 tabs.-- ERNCIP Radiological and Nuclear Threats to Critical Infrastructure Thematic Group . -- This publication is a Technical report by the Joint Research Centre (JRC) . -- JRC128728 . -- EUR 31044 ENThe research leading to these results has received funding from the European Union as part of
the European Reference Network for Critical Infrastructure Protection (ERNCIP) projec
INTELLIGENT MACHINE VISION BASED RAILWAY INFRASTRUCTURE INSPECTION AND MONITORING USING UAV
Traditionally, railway inspection and monitoring are considered a crucial aspect of the system and are done by human inspectors. Rapid progress of the machine vision-based systems enables automated and autonomous rail track detection and railway infrastructure monitoring and inspection with flexibility and ease of use. In recent years, several prototypes of vision based inspection system have been proposed, where most have various vision sensors mounted on locomotives or wagons. This paper explores the usage of the UAVs (drones) in railways and computer vision based monitoring of railway infrastructure. Employing drones for such monitoring systems enables more robust and reliable visual inspection while providing a cost effective and accurate means for monitoring of the tracks. By means of a camera placed on a drone the images of the rail tracks and the railway infrastructure are taken. On these images, the edge and feature extraction methods are applied to determine the rails. The preliminary obtained results are promising
A Survey on Trust Metrics for Autonomous Robotic Systems
This paper surveys the area of Trust Metrics related to security for
autonomous robotic systems. As the robotics industry undergoes a transformation
from programmed, task oriented, systems to Artificial Intelligence-enabled
learning, these autonomous systems become vulnerable to several security risks,
making a security assessment of these systems of critical importance.
Therefore, our focus is on a holistic approach for assessing system trust which
requires incorporating system, hardware, software, cognitive robustness, and
supplier level trust metrics into a unified model of trust. We set out to
determine if there were already trust metrics that defined such a holistic
system approach. While there are extensive writings related to various aspects
of robotic systems such as, risk management, safety, security assurance and so
on, each source only covered subsets of an overall system and did not
consistently incorporate the relevant costs in their metrics. This paper
attempts to put this prior work into perspective, and to show how it might be
extended to develop useful system-level trust metrics for evaluating complex
robotic (and other) systems
Smart maintenance and inspection of linear assets: An Industry 4.0 approach
Linear assets have linear properties, for instance, similar underlying geometry and characteristics, over a distance. They show specific patterns of continuous inherent deteriorations and failures. Therefore, remedial inspection and maintenance actions will be similar along the length of a linear asset, but because as the asset is distributed over a large area, the execution costs are greater.
Autonomous robots, for instance, unmanned aerial vehicles, pipe inspection gauges, and remotely operated vehicles, are used in different industrial settings in an ad-hoc manner for inspection and maintenance. Autonomous robots can be programmed for repetitive and specific tasks; this is useful for the inspection and maintenance of linear assets.
This paper reviews the challenges of maintaining the linear assets, focusing on inspections. It also provides a conceptual framework for the use of autonomous inspection and maintenance practices for linear assets to reduce maintenance costs, human involvement, etc., whilst improving the availability of linear assets by effective use of autonomous robots and data from different sources
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