Year Year arrow
arrow-active-down-0
Publisher Publisher arrow
arrow-active-down-1
Journal
1
Journal arrow
arrow-active-down-2
Institution Institution arrow
arrow-active-down-3
Institution Country Institution Country arrow
arrow-active-down-4
Publication Type Publication Type arrow
arrow-active-down-5
Field Of Study Field Of Study arrow
arrow-active-down-6
Topics Topics arrow
arrow-active-down-7
Open Access Open Access arrow
arrow-active-down-8
Language Language arrow
arrow-active-down-9
Filter Icon Filter 1
Year Year arrow
arrow-active-down-0
Publisher Publisher arrow
arrow-active-down-1
Journal
1
Journal arrow
arrow-active-down-2
Institution Institution arrow
arrow-active-down-3
Institution Country Institution Country arrow
arrow-active-down-4
Publication Type Publication Type arrow
arrow-active-down-5
Field Of Study Field Of Study arrow
arrow-active-down-6
Topics Topics arrow
arrow-active-down-7
Open Access Open Access arrow
arrow-active-down-8
Language Language arrow
arrow-active-down-9
Filter Icon Filter 1
Export
Sort by: Relevance
  • Open Access Icon
  • Addendum
  • 10.1049/ccs2.70002
Correction to “Improved UNet‐Based Magnetic Resonance Imaging Segmentation of Demyelinating Diseases With Small Lesion Regions”
  • Jan 1, 2025
  • Cognitive Computation and Systems

  • Open Access Icon
  • Research Article
  • 10.1049/ccs2.70000
An Efficient Ensemble Learning Model Integrating Multi‐Branch Sub‐Networks for Facial Expression Recognition
  • Jan 1, 2025
  • Cognitive Computation and Systems
  • Golam Jilani + 2 more

ABSTRACTAccurate facial expression recognition is still challenging due to occlusion and location variability. Reducing computing overhead is also important because facial expression detection systems may be used in real‐time applications. This research provides an effective ensemble learning architecture for facial emotion identification using advanced data augmentation and transfer learning techniques. The architecture uses a multi‐branch sub‐network framework. We chose the EfficientNet‐B0, RegNet_Y_800MF and MobileNetV2 for ensembling because they are significantly smaller in terms of FLOPs and number of parameters than other variations, such as the EfficientNet‐B7 and RegNet_Y_800MF. We included data augmentation methods such as Mixup and CutMix to make our system more resilient to overfitting. As demonstrated by our proposed approach, combining smaller models is more efficient than using a single large model. The proposed architecture achieves state‐of‐the‐art results with an accuracy of 96.42% and 97.55% on the SUFEDB and KDEF datasets, respectively.

  • Open Access Icon
  • Research Article
  • Cite Count Icon 5
  • 10.1049/ccs2.12116
Emotion‐aware psychological first aid: Integrating BERT‐based emotional distress detection with Psychological First Aid‐Generative Pre‐Trained Transformer chatbot for mental health support
  • Jan 1, 2025
  • Cognitive Computation and Systems
  • Olajumoke Taiwo + 1 more

Abstract Mental health disorders have a global prevalence of 25%, according to the WHO, and this is exacerbated by factors such as stigma, geographical location, and a worldwide shortage of practitioners. Mental health chatbots have been developed to address these barriers, but these systems lack key features such as emotion recognition, personalisation, multilingual support, and ethical appropriateness. This paper introduces an innovative mental health support system that integrates BERT‐based emotional distress detection with a psychological first aid (PFA)‐generative pre‐trained transformer (PFA‐GPT) model, providing an emotion‐aware PFA chatbot. The methodology leverages deep learning models, utilising bidirectional encoder representations from transformers (BERT) for emotional distress detection and fine‐tuning GPT‐3.5 on therapy transcripts for PFA chatbot development. The findings demonstrate BERT's superior accuracy (93%) for emotional distress detection compared to bidirectional long short‐term memory. The multilingual PFA chatbot developed using the PFA‐GPT model demonstrated superior BERT scores (exceeding 83%) and proficiently provided ethical PFA. A proof of concept has been developed to illustrate the integration of the emotional distress detection model with the novel generative conversational agent for PFA. This integrated approach holds significant potential in overcoming existing barriers to mental health support and has the potential to transform mental health support, offering timely and accessible care through AI‐powered psychological interventions.

  • Open Access Icon
  • Addendum
  • 10.1049/ccs2.70001
Correction to “Brain Network Analysis of Benign Childhood Epilepsy With Centrotemporal Spikes: With Versus Without Interictal Spikes”
  • Jan 1, 2025
  • Cognitive Computation and Systems

  • Open Access Icon
  • Journal Issue
  • 10.1049/ccs2.v7.1
  • Jan 1, 2025
  • Cognitive Computation and Systems

  • Journal Issue
  • 10.1049/ccs2.v6.4
  • Dec 1, 2024
  • Cognitive Computation and Systems

  • Research Article
  • 10.1049/ccs2.12115
Brain network analysis of benign childhood epilepsy with centrotemporal spikes: With versus without interictal spikes
  • Nov 6, 2024
  • Cognitive Computation and Systems
  • Zhixing Hong + 6 more

Abstract Brain networks provided powerful tools for the analysis and diagnosis of epilepsy. This paper performed a pairwise comparative analysis on the brain networks of Benign Childhood Epilepsy with Centrotemporal Spikes (BECTS): spike group (spike), non‐spike group (non‐spike), and control group (control). In this study, fragments with and without interictal spikes in electroencephalograms of 13 BECTS children during non‐rapid eye movement sleep stage I (NREMI) were selected to construct dynamic brain function networks to explore the functional connectivity (FC). Graph theory and statistical analysis were exploited to investigate changes in FC across different brain regions in different frequency bands. From this study, we can draw the following conclusions: (1) Both spike and non‐spike have lower energy in each brain region on the γ band. (2) With the increase of the frequency band, the FC strength of spike, non‐spike and control groups are all weakened. (3) Spikes are correlated with brain network efficiency and the small‐world property. (4) Spikes increase the FC of temporal, parietal and occipital regions except in the γ band and the absence of spikes weakens the FC of the entire brain region.

  • Open Access Icon
  • Research Article
  • 10.1049/ccs2.12103
Garbage prediction using regression analysis for municipal corporations of Indian cities
  • Oct 19, 2024
  • Cognitive Computation and Systems
  • Raj Kumar Sharma + 1 more

Abstract Garbage management is exceptionally critical and poses enormous environmental challenges. It has always been a vital issue in municipal corporations. However, municipal agencies have developed and used garbage management systems. Garbage forecasting still plays a crucial role in the management system and helps improve or create a garbage management system. This research examines the information from 212 cities to suggest a helpful regression model for garbage forecasting and control. To establish a connection between the variables, the descriptive study employs statistical techniques to learn about the composition of data collected from municipal corporations and conduct correlation analysis. Population and garbage depend highly on one another, as evidenced by their correlation coefficient of 0.922,144. The primary research is used to build an alternate hypothesis that shows the chosen variables are highly dependent on one another. The dataset is scaled and divided into a training and testing 80:20 ratio during the pre‐processing data phase. This research aims to do a regression analysis with daily garbage production, urban area, and population as independent variables. This research initiates a variety of regression models, including multiple linear regression (MLR), artificial neural network (ANN), decision tree regression (DTR), and random forest regression (RFR). The MLR model's R2 value of 0.85 indicates that it has the potential to accurately forecast daily garbage production based on just two independent variables and a single dependent variable. Random Forest Regression (RFR) with (MSE: 100,078.749 & MAE: 182.212) shows that it has the lowest MSE among all the models, which provides the most accurate predictions on average and the fit values of 8.85 and 316.23 obtained from the error distribution with a bin value 25. The estimated results from each model are compared to the test data values on line graphs and Taylor plots. The mean square error and the mean absolute error in the analysis and the Taylor plot show that the RFR model is best suited for predicting daily garbage production in a city. This research, therefore, provides a Random Forest model that is optimal for such challenges and is recommended for this class of problem.

  • Open Access Icon
  • Research Article
  • Cite Count Icon 1
  • 10.1049/ccs2.12112
MedBlockSure: Blockchain‐based insurance system
  • Sep 22, 2024
  • Cognitive Computation and Systems
  • Charu Krishna + 2 more

Abstract Health insurance plays a vital role during medical emergencies in the coverage against medical expenses. Insurance fraud is an international challenge that affects most economies worldwide. Government and private companies offer many insurance schemes. The successful implementation of numerous health insurance programs offered for the public by and large are often threatened by corruption, fraud, and numerous other data‐related issues. Further the procedure for acclaiming the insurance money is not only critical in terms of verification of claims but tedious and time consuming also. To help redress these problems, blockchain technology can be utilised as is it offers improved security, transparency, auditability, privacy, accountability along with many other advantages. The goal is to create and implement a blockchain‐based solution for efficient functioning of insurance system and to prevent such health insurance systems from going bankrupt. The authors have proposed an insurance claim model, MedBlockSure using blockchain architecture for creating interoperability between the insurer, the hospital and the insurance company. The model will aid in maintaining transparency between the insurer and the company while eliminating the requirement of middlemen or agents. The conceptual view of the proposed system using sequence and use case diagrams and data management framework and smart claim processing system is demonstrated.

  • Open Access Icon
  • Research Article
  • Cite Count Icon 4
  • 10.1049/ccs2.12114
Advancing low‐light object detection with you only look once models: An empirical study and performance evaluation
  • Sep 18, 2024
  • Cognitive Computation and Systems
  • Samier Uddin Ahammad Shovo + 3 more

Abstract Low‐light object detection is needed for ensuring security, enabling surveillance, and enhancing safety in diverse applications, including autonomous vehicles, surveillance systems, and search and rescue operations. A comprehensive study on low‐light object detection is presented using state‐of‐the‐art you only look once (YOLO) models, including YOLOv3, YOLOv5, YOLOv6, and YOLOv8, aiming to enhance detection performance under challenging low‐light conditions. The ExDark dataset is a dataset that consists of adequate low‐light images, modified to simulate realistic low‐light scenarios, and employed for evaluation. The deep learning algorithm optimises YOLO's architecture for low‐light detection by adapting the network structure and training strategies while preserving the algorithm's integrity. The experimental results show that YOLOv8 consistently outperforms baseline models, achieving significant improvements in accuracy and robustness in low‐light scenarios. The deep learning algorithm that acquired the best score, YOLOv8s, had a mean average precision score of 0.5513. This work contributes to the field of low‐light object detection, offering promising solutions for real‐world applications like nighttime surveillance and autonomous navigation in low‐light conditions, addressing the growing demand for advanced low‐light object detection.