127 research outputs found
A Semantic IoT Early Warning System for Natural Environment Crisis Management
This work was supported in part by the European FP7 Funded Project TRIDEC under Grant 258723, the other project partners in helping to deliver the complete project Syste, in particular, GFZ, and the German Research Centre for Geosciences, Potsdam, Germany. The work of R. Tao was supported by the Queen Mary University of London for a Ph.D. studentship
Semantic Restructuring of Natural Language Image Captions to Enhance Image Retrieval
semantic, multimedia,information retrievalsemantic, multimedia,information retrievalsemantic, multimedia,information retrievalsemantic, multimedia,information retrieva
A Game-Theory Based Incentive Framework for an Intelligent Traffic System as Part of a Smart City Initiative
Intelligent Transportation Systems (ITSs) can be applied to inform and incentivize travellers to help them make cognizant choices concerning their trip routes and transport modality use for their daily travel whilst achieving more sustainable societal and transport authority goals. However, in practice, it is challenging for an ITS to enable incentive generation that is context-driven and personalized, whilst supporting multi-dimensional travel goals. This is because an ITS has to address the situation where different travellers have different travel preferences and constraints for route and modality, in the face of dynamically-varying traffic conditions. Furthermore, personalized incentive generation also needs to dynamically achieve different travel goals from multiple travellers, in the face of their conducts being a mix of both competitive and cooperative behaviours. To address this challenge, a Rule-based Incentive Framework (RIF) is proposed in this paper that utilizes both decision tree and evolutionary game theory to process travel information and intelligently generate personalized incentives for travellers. The travel information processed includes travellers’ mobile patterns, travellers’ modality preferences and route traffic volume information. A series of MATLAB simulations of RIF was undertaken to validate RIF to show that it is potentially an effective way to incentivize travellers to change travel routes and modalities as an essential smart city service
Temporal convolutional networks for multi-person activity recognition using a 2D LIDAR
Motion trajectories contain rich information about human activities. We propose to use a 2D LIDAR to perform multiple people activity recognition simultaneously by classifying their trajectories. We clustered raw LIDAR data and classified the clusters into human and non-human classes in order to recognize humans in a scenario. For the clusters of humans, we implemented the Kalman Filter to track their trajectories which are further segmented and labelled with corresponding activities. We introduced spatial transformation and Gaussian noise for trajectory augmentation in order to overcome the problem of unbalanced classes and boost the performance of human activity recognition (HAR). Finally, we built two neural networks including a long short-term memory (LSTM) network and a temporal convolutional network (TCN) to classify trajectory samples into 15 activity classes collected from a kitchen. The proposed TCN achieved the best result of 99.49% in overall accuracy. In comparison, the TCN is slightly superior to the LSTM network. Both the TCN and the LSTM network outperform hidden Markov Model (HMM), dynamic time warping (DTW), and support vector machine (SVM) with a wide margin. Our approach achieves a higher activity recognition accuracy than the related work
A Multi-Modal Incompleteness Ontology model (MMIO) to enhance 4 information fusion for image retrieval
This research has been supported in part by National Science and Technology Development (NSTDA), Thailand. Project No: SCH-NR2011-851
A WiFi RSSI Ranking Fingerprint Positioning System and Its Application to Indoor Activities of Daily Living Recognition
WiFi RSSI (Received Signal Strength Indicators) seem to be the basis of the most widely
used method for Indoor Positioning Systems (IPS) driven by the growth of deployed
WiFi Access Points (AP), especially within urban areas. However, there are still several
challenges to be tackled: its accuracy is often 2-3m, it’s prone to interference and
attenuation effects, and the diversity of Radio Frequency (RF) receivers, e.g.,
smartphones, affects its accuracy. RSSI fingerprinting can be used to mitigate against
interference and attenuation effects. In this paper, we present a novel, more accurate,
RSSI ranking-based method that consists of three parts. First, an AP selection based on a
Genetic Algorithm (GA) is applied to reduce the positioning computational cost and
increase the positioning accuracy. Second, Kendall Tau Correlation Coefficient (KTCC)
and a Convolutional Neural Network (CNN) are applied to extract the ranking features
for estimating locations. Third, an Extended Kalman filter (EKF) is then used to smooth
the estimated sequential locations before Multi-Dimensional Dynamic Time Warping
(MD-DTW) is used to match similar trajectories or paths representing ADLs from
different or the same users that vary in time and space In order to leverage and evaluate
our IPS system, we also used it to recognise Activities of Daily Living (ADL) in an office
like environment. It was able to achieve an average positioning accuracy of 1.42m and a
79.5% recognition accuracy for 9 location-driven activities
An Evaluation Framework for Adaptive Security for the IoT in eHealth
The work presented here has been carried out in the project ASSET – Adaptive Security for Smart Internet of Things in eHealth (2012–2015) funded by the Research Council of Norway in the VERDIKT programme. WThe work presented here has been carried out in the project ASSET – Adaptive Security for Smart Internet of Things in eHealth (2012–2015) funded by the Research Council of Norway in the VERDIKT programme. W—We present an assessment framework to evaluate adaptive security algorithms specifically for the Internet of Things (IoT) in eHealth applications. The successful deployment of the IoT depends on ensuring security and privacy, which need to adapt to the processing capabilities and resource use of the IoT. We develop a framework for the assessment and validation of context-aware adaptive security solutions for the IoT in eHealth that can quantify the characteristics and requirements of a situation. We present the properties to be fulfilled by a scenario to assess and quantify characteristics for the adaptive security solutions for eHealth. We then develop scenarios for patients with chronic diseases using biomedical sensors. These scenarios are used to create storylines for a chronic patient living at home or being treated in the hospital. We show numeric examples for how to apply our framework. We also present guidelines how to integrate our framework to evaluating adaptive security solutionsThe work presented here has been carried out in the project
ASSET – Adaptive Security for Smart Internet of Things
in eHealth (2012–2015) funded by the Research Council of
Norway in the VERDIKT programme
The IPIN 2019 Indoor Localisation Competition - Description and Results
IPIN 2019 Competition, sixth in a series of IPIN competitions, was held at the CNR Research Area of Pisa (IT), integrated into the program of the IPIN 2019 Conference. It included two on-site real-time Tracks and three off-site Tracks. The four Tracks presented in this paper were set in the same environment, made of two buildings close together for a total usable area of 1000 m 2 outdoors and and 6000 m 2 indoors over three floors, with a total path length exceeding 500 m. IPIN competitions, based on the EvAAL framework, have aimed at comparing the accuracy performance of personal positioning systems in fair and realistic conditions: past editions of the competition were carried in big conference settings, university campuses and a shopping mall. Positioning accuracy is computed while the person carrying the system under test walks at normal walking speed, uses lifts and goes up and down stairs or briefly stops at given points. Results presented here are a showcase of state-of-the-art systems tested side by side in real-world settings as part of the on-site real-time competition Tracks. Results for off-site Tracks allow a detailed and reproducible comparison of the most recent positioning and tracking algorithms in the same environment as the on-site Tracks
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