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"Health IoT"
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A Framework for Malicious Traffic Detection in IoT Healthcare Environment
by
Shahzad, Farrukh
,
Shah, Ghalib A.
,
Zdravevski, Eftim
in
Cities
,
Communication
,
Computer Security
2021
The Internet of things (IoT) has emerged as a topic of intense interest among the research and industrial community as it has had a revolutionary impact on human life. The rapid growth of IoT technology has revolutionized human life by inaugurating the concept of smart devices, smart healthcare, smart industry, smart city, smart grid, among others. IoT devices’ security has become a serious concern nowadays, especially for the healthcare domain, where recent attacks exposed damaging IoT security vulnerabilities. Traditional network security solutions are well established. However, due to the resource constraint property of IoT devices and the distinct behavior of IoT protocols, the existing security mechanisms cannot be deployed directly for securing the IoT devices and network from the cyber-attacks. To enhance the level of security for IoT, researchers need IoT-specific tools, methods, and datasets. To address the mentioned problem, we provide a framework for developing IoT context-aware security solutions to detect malicious traffic in IoT use cases. The proposed framework consists of a newly created, open-source IoT data generator tool named IoT-Flock. The IoT-Flock tool allows researchers to develop an IoT use-case comprised of both normal and malicious IoT devices and generate traffic. Additionally, the proposed framework provides an open-source utility for converting the captured traffic generated by IoT-Flock into an IoT dataset. Using the proposed framework in this research, we first generated an IoT healthcare dataset which comprises both normal and IoT attack traffic. Afterwards, we applied different machine learning techniques to the generated dataset to detect the cyber-attacks and protect the healthcare system from cyber-attacks. The proposed framework will help in developing the context-aware IoT security solutions, especially for a sensitive use case like IoT healthcare environment.
Journal Article
A detection algorithm for cherry fruits based on the improved YOLO-v4 model
2023
\"Digital\" agriculture is rapidly affecting the value of agricultural output. Robotic picking of the ripe agricultural product enables accurate and rapid picking, making agricultural harvesting intelligent. How to increase product output has also become a challenge for digital agriculture. During the cherry growth process, realizing the rapid and accurate detection of cherry fruits is the key to the development of cherry fruits in digital agriculture. Due to the inaccurate detection of cherry fruits, environmental problems such as shading have become the biggest challenge for cherry fruit detection. This paper proposes an improved YOLO-V4 deep learning algorithm to detect cherry fruits. This model is suitable for cherry fruits with a small volume. It is proposed to increase the network based on the YOLO-V4 backbone network CSPDarknet53 network, combined with DenseNet The density between layers, the a priori box in the YOLO-V4 model, is changed to a circular marker box that fits the shape of the cherry fruit. Based on the improved YOLO-V4 model, the feature extraction is enhanced, the network structure is deepened, and the detection speed is improved. To verify the effectiveness of this method, different deep learning algorithms of YOLO-V3, YOLO-V3-dense and YOLO-V4 are compared. The results show that the mAP (average accuracy) value obtained by using the improved YOLO-V4 model (YOLO-V4-dense) network in this paper is 0.15 higher than that of yolov4. In actual orchard applications, cherries with different ripeness of cherries in the same area can be detected, and the fruits with larger ripeness differences can be artificially intervened, and finally, the yield of cherry fruits can be increased.
Journal Article
Toward real-time and efficient cardiovascular monitoring for COVID-19 patients by 5G-enabled wearable medical devices: a deep learning approach
by
Zhou, Xiaokang
,
Yu, Keping
,
Cheng, Xiaofan
in
Artificial Intelligence
,
Artificial neural networks
,
Cardiovascular disease
2023
Patients with deaths from COVID-19 often have co-morbid cardiovascular disease. Real-time cardiovascular disease monitoring based on wearable medical devices may effectively reduce COVID-19 mortality rates. However, due to technical limitations, there are three main issues. First, the traditional wireless communication technology for wearable medical devices is difficult to satisfy the real-time requirements fully. Second, current monitoring platforms lack efficient streaming data processing mechanisms to cope with the large amount of cardiovascular data generated in real time. Third, the diagnosis of the monitoring platform is usually manual, which is challenging to ensure that enough doctors online to provide a timely, efficient, and accurate diagnosis. To address these issues, this paper proposes a 5G-enabled real-time cardiovascular monitoring system for COVID-19 patients using deep learning. Firstly, we employ 5G to send and receive data from wearable medical devices. Secondly, Flink streaming data processing framework is applied to access electrocardiogram data. Finally, we use convolutional neural networks and long short-term memory networks model to obtain automatically predict the COVID-19 patient’s cardiovascular health. Theoretical analysis and experimental results show that our proposal can well solve the above issues and improve the prediction accuracy of cardiovascular disease to 99.29%.
Journal Article
Enhancing COVID-19 tracking apps with human activity recognition using a deep convolutional neural network and HAR-images
by
D’Angelo, Gianni
,
Palmieri, Francesco
in
Accelerometers
,
Applications programs
,
Artificial Intelligence
2023
With the emergence of COVID-19, mobile health applications have increasingly become crucial in contact tracing, information dissemination, and pandemic control in general. Apps warn users if they have been close to an infected person for sufficient time, and therefore potentially at risk. The distance measurement accuracy heavily affects the probability estimation of being infected. Most of these applications make use of the electromagnetic field produced by Bluetooth Low Energy technology to estimate the distance. Nevertheless, radio interference derived from numerous factors, such as crowding, obstacles, and user activity can lead to wrong distance estimation, and, in turn, to wrong decisions. Besides, most of the social distance-keeping criteria recognized worldwide plan to keep a different distance based on the activity of the person and on the surrounding environment. In this study, in order to enhance the performance of the COVID-19 tracking apps, a human activity classifier based on Convolutional Deep Neural Network is provided. In particular, the raw data coming from the accelerometer sensor of a smartphone are arranged to form an image including several channels (HAR-Image), which is used as fingerprints of the in-progress activity that can be used as an additional input by tracking applications. Experimental results, obtained by analyzing real data, have shown that the HAR-Images are effective features for human activity recognition. Indeed, the results on the k-fold cross-validation and obtained by using a real dataset achieved an accuracy very close to 100%.
Journal Article
A smart healthcare framework for detection and monitoring of COVID-19 using IoT and cloud computing
by
Emad-ul-Haq, Qazi
,
Imran, Muhammad
,
Razzak, Imran
in
Accuracy
,
Algorithms
,
Artificial Intelligence
2023
Coronavirus (COVID-19) is a very contagious infection that has drawn the world’s attention. Modeling such diseases can be extremely valuable in predicting their effects. Although classic statistical modeling may provide adequate models, it may also fail to understand the data’s intricacy. An automatic COVID-19 detection system based on computed tomography (CT) scan or X-ray images is effective, but a robust system design is challenging. In this study, we propose an intelligent healthcare system that integrates IoT-cloud technologies. This architecture uses smart connectivity sensors and deep learning (DL) for intelligent decision-making from the perspective of the smart city. The intelligent system tracks the status of patients in real time and delivers reliable, timely, and high-quality healthcare facilities at a low cost. COVID-19 detection experiments are performed using DL to test the viability of the proposed system. We use a sensor for recording, transferring, and tracking healthcare data. CT scan images from patients are sent to the cloud by IoT sensors, where the cognitive module is stored. The system decides the patient status by examining the images of the CT scan. The DL cognitive module makes the real-time decision on the possible course of action. When information is conveyed to a cognitive module, we use a state-of-the-art classification algorithm based on DL, i.e., ResNet50, to detect and classify whether the patients are normal or infected by COVID-19. We validate the proposed system’s robustness and effectiveness using two benchmark publicly available datasets (Covid-Chestxray dataset and Chex-Pert dataset). At first, a dataset of 6000 images is prepared from the above two datasets. The proposed system was trained on the collection of images from 80% of the datasets and tested with 20% of the data. Cross-validation is performed using a tenfold cross-validation technique for performance evaluation. The results indicate that the proposed system gives an accuracy of 98.6%, a sensitivity of 97.3%, a specificity of 98.2%, and an F1-score of 97.87%. Results clearly show that the accuracy, specificity, sensitivity, and F1-score of our proposed method are high. The comparison shows that the proposed system performs better than the existing state-of-the-art systems. The proposed system will be helpful in medical diagnosis research and healthcare systems. It will also support the medical experts for COVID-19 screening and lead to a precious second opinion.
Journal Article
Machine learning-based diffusion model for prediction of coronavirus-19 outbreak
by
Kasturia, Shreya
,
Raheja, Supriya
,
Cheng, Xiaochun
in
Artificial Intelligence
,
Artificial neural networks
,
Computational Biology/Bioinformatics
2023
The coronavirus pandemic has been globally impacting the health and prosperity of people. A persistent increase in the number of positive cases has boost the stress among governments across the globe. There is a need of approach which gives more accurate predictions of outbreak. This paper presents a novel approach called diffusion prediction model for prediction of number of coronavirus cases in four countries: India, France, China and Nepal. Diffusion prediction model works on the diffusion process of the human contact. Model considers two forms of spread: when the spread takes time after infecting one person and when the spread is immediate after infecting one person. It makes the proposed model different over other state-of-the art models. It is giving more accurate results than other state-of-the art models. The proposed diffusion prediction model forecasts the number of new cases expected to occur in next 4 weeks. The model has predicted the number of confirmed cases, recovered cases, deaths and active cases. The model can facilitate government to be well prepared for any abrupt rise in this pandemic. The performance is evaluated in terms of accuracy and error rate and compared with the prediction results of support vector machine, logistic regression model and convolution neural network. The results prove the efficiency of the proposed model.
Journal Article
A cyber warfare perspective on risks related to health IoT devices and contact tracing
by
Gribaudo, Marco
,
Bobbio, Andrea
,
Iacono, Mauro
in
Artificial Intelligence
,
Computational Biology/Bioinformatics
,
Computational Science and Engineering
2023
The wide use of IT resources to assess and manage the recent COVID-19 pandemic allows to increase the effectiveness of the countermeasures and the pervasiveness of monitoring and prevention. Unfortunately, the literature reports that IoT devices, a widely adopted technology for these applications, are characterized by security vulnerabilities that are difficult to manage at the state level. Comparable problems exist for related technologies that leverage smartphones, such as contact tracing applications, and non-medical health monitoring devices. In analogous situations, these vulnerabilities may be exploited in the cyber domain to overload the crisis management systems with false alarms and to interfere with the interests of target countries, with consequences on their economy and their political equilibria. In this paper we analyze the potential threat to an example subsystem to show how these influences may impact it and evaluate a possible consequence.
Journal Article
Res-CovNet: an internet of medical health things driven COVID-19 framework using transfer learning
by
Pande, Sagar
,
Madhavan, Mangena Venu
,
Khamparia, Aditya
in
Artificial Intelligence
,
Classification
,
Computational Biology/Bioinformatics
2023
Major countries are globally facing difficult situations due to this pandemic disease, COVID-19. There are high chances of getting false positives and false negatives identifying the COVID-19 symptoms through existing medical practices such as PCR (polymerase chain reaction) and RT-PCR (reverse transcription-polymerase chain reaction). It might lead to a community spread of the disease. The alternative of these tests can be CT (Computer Tomography) imaging or X-rays of the lungs to identify the patient with COVID-19 symptoms more accurately. Furthermore, by using feasible and usable technology to automate the identification of COVID-19, the facilities can be improved. This notion became the basic framework, Res-CovNet, of the implemented methodology, a hybrid methodology to bring different platforms into a single platform. This basic framework is incorporated into IoMT based framework, a web-based service to identify and classify various forms of pneumonia or COVID-19 utilizing chest X-ray images. For the front end, the.NET framework along with C# language was utilized, MongoDB was utilized for the storage aspect, Res-CovNet was utilized for the processing aspect. Deep learning combined with the notion forms a comprehensive implementation of the framework, Res-CovNet, to classify the COVID-19 affected patients from pneumonia-affected patients as both lung imaging looks similar to the naked eye. The implemented framework, Res-CovNet, developed with the technique, transfer learning in which ResNet-50 used as a pre-trained model and then extended with classification layers. The work implemented using the data of X-ray images collected from the various trustable sources that include cases such as normal, bacterial pneumonia, viral pneumonia, and COVID-19, with the overall size of the data is about 5856. The accuracy of the model implemented is about 98.4% in identifying COVID-19 against the normal cases. The accuracy of the model is about 96.2% in the case of identifying COVID-19 against all other cases, as mentioned.
Journal Article
Gesture recognition based on sEMG using multi-attention mechanism for remote control
by
Lang, Yiran
,
Dai, Chuankai
,
He, Jiping
in
Artificial Intelligence
,
Artificial neural networks
,
Computational Biology/Bioinformatics
2023
Remote controlling using surface electromyography (sEMG) plays a more and more important role in a human–robot interface, such as controlling prosthesis devices, and exoskeleton. Different gestures are controlled by the cooperation of muscle groups, and sEMG represent the energy of the activated muscle fibers. With the limit of the low performance of wearable device, this article proposed a remote hand gesture recognized system based on deep learning framework of multi-attention mechanism convolutional neural network using sEMG energy to decoding hand gestures with remote server host. In the first part, an adaptive channel weighted method is proposed on multi-channel data of sEMG for enhancing the related feature map of sEMG and reducing the feature map low contribution of sEMG. The second part is improving the shortcuts by adding adaptively weighted instead of a simple short concatenation of feature maps. A novel multi-attention deep learning framework with multi-view (MMDL) for hand gestures recognition is proposed in our study, using sEMG. We verify the MMDL framework on myo dataset, myoUp dataset, and ninapro DB5, with the average accuracy 99.27%, 97.86%, and 97.0%, which is improved by 0.46%, 18.88%, 7% compared with prior works. In addition, the framework can classify seven hand gestures with 99.92% accuracy on ours datasets.
Journal Article
A privacy-preserving botnet detection approach in largescale cooperative IoT environment
by
Luo, Xi
,
Zhu, Muyijie
,
Li, Yixin
in
Algorithms
,
Artificial Intelligence
,
Computational Biology/Bioinformatics
2023
With the development of Internet-of-Things (IoT), our modern life has been greatly facilitated, while an exponentially growing number of vulnerable devices also breed a wonderful ground for botnet controllers,. However, existing detection approaches developed for individual traditional network area neglect cross-area privacy issue and resource restraint nature of IoT network and therefore impede their effectiveness of mitigating IoT botnet. In this work, we present a lightweight and privacy-preserving system, namely PPBotHunter, to detect botnet across multiple network areas. PPBotHunter implements a fuzzy matrix algorithm to retrieve effective bot similarity computation while ensuring a high privacy degree. This algorithm is designed based on a privacy-preserving scalar product computation technique (PPSPC) which enables PPBotHunter to be lightweight yet efficient. We utilize only time series feature to build the fuzzy matrices, which further improve the compatibility, energy-efficacy and resistance against heterogeneity. The theoretical analysis and detailed simulations illustrate the efficacy and effectiveness of our proposed botnet detection system.
Journal Article