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International Journal of Neural Systems

https://read.qxmd.com/read/38414422/enhanced-multitask-learning-for-hash-code-generation-of-palmprint-biometrics
#21
JOURNAL ARTICLE
Lin Chen, Lu Leng, Ziyuan Yang, Andrew Beng Jin Teoh
This paper presents a novel multitask learning framework for palmprint biometrics, which optimizes classification and hashing branches jointly. The classification branch within our framework facilitates the concurrent execution of three distinct tasks: identity recognition and classification of soft biometrics, encompassing gender and chirality. On the other hand, the hashing branch enables the generation of palmprint hash codes, optimizing for minimal storage as templates and efficient matching. The hashing branch derives the complementary information from these tasks by amalgamating knowledge acquired from the classification branch...
April 2024: International Journal of Neural Systems
https://read.qxmd.com/read/38414421/robust-federated-learning-for-heterogeneous-model-and-data
#22
JOURNAL ARTICLE
Hussain Ahmad Madni, Rao Muhammad Umer, Gian Luca Foresti
Data privacy and security is an essential challenge in medical clinical settings, where individual hospital has its own sensitive patients data. Due to recent advances in decentralized machine learning in Federated Learning (FL), each hospital has its own private data and learning models to collaborate with other trusted participating hospitals. Heterogeneous data and models among different hospitals raise major challenges in robust FL, such as gradient leakage, where participants can exploit model weights to infer data...
April 2024: International Journal of Neural Systems
https://read.qxmd.com/read/38369905/a-sequential-end-to-end-neonatal-sleep-staging-model-with-squeeze-and-excitation-blocks-and-sequential-multi-scale-convolution-neural-networks
#23
JOURNAL ARTICLE
Hangyu Zhu, Yan Xu, Yonglin Wu, Ning Shen, Laishuan Wang, Chen Chen, Wei Chen
Automatic sleep staging offers a quick and objective assessment for quantitatively interpreting sleep stages in neonates. However, most of the existing studies either do not encompass any temporal information, or simply apply neural networks to exploit temporal information at the expense of high computational overhead and modeling ambiguity. This limits the application of these methods to multiple scenarios. In this paper, a sequential end-to-end sleep staging model, SeqEESleepNet, which is competent for parallelly processing sequential epochs and has a fast training rate to adapt to different scenarios, is proposed...
March 2024: International Journal of Neural Systems
https://read.qxmd.com/read/38369904/semg-based-inter-session-hand-gesture-recognition-via-domain-adaptation-with-locality-preserving-and-maximum-margin
#24
JOURNAL ARTICLE
Yao Guo, Jiayan Liu, Yonglin Wu, Xinyu Jiang, Yalin Wang, Long Meng, Xiangyu Liu, Feng Shu, Chenyun Dai, Wei Chen
Surface electromyography (sEMG)-based gesture recognition can achieve high intra-session performance. However, the inter-session performance of gesture recognition decreases sharply due to the shift in data distribution. Therefore, developing a robust model to minimize the data distribution difference is crucial to improving the user experience. In this work, based on the inter-session gesture recognition task, we propose a novel algorithm called locality preserving and maximum margin criterion (LPMM). The LPMM algorithm integrates three main modules, including domain alignment, pseudo-label selection, and iteration result selection...
March 2024: International Journal of Neural Systems
https://read.qxmd.com/read/38273799/alzheimer-s-disease-evaluation-through-visual-explainability-by-means-of-convolutional-neural-networks
#25
JOURNAL ARTICLE
Francesco Mercaldo, Marcello Di Giammarco, Fabrizio Ravelli, Fabio Martinelli, Antonella Santone, Mario Cesarelli
Background and Objective : Alzheimer's disease is nowadays the most common cause of dementia. It is a degenerative neurological pathology affecting the brain, progressively leading the patient to a state of total dependence, thus creating a very complex and difficult situation for the family that has to assist him/her. Early diagnosis is a primary objective and constitutes the hope of being able to intervene in the development phase of the disease. Methods : In this paper, a method to automatically detect the presence of Alzheimer's disease, by exploiting deep learning, is proposed...
February 2024: International Journal of Neural Systems
https://read.qxmd.com/read/38231046/a-graph-based-neural-approach-to-linear-sum-assignment-problems
#26
JOURNAL ARTICLE
Carlo Aironi, Samuele Cornell, Stefano Squartini
Linear assignment problems are well-known combinatorial optimization problems involving domains such as logistics, robotics and telecommunications. In general, obtaining an optimal solution to such problems is computationally infeasible even in small settings, so heuristic algorithms are often used to find near-optimal solutions. In order to attain the right assignment permutation, this study investigates a general-purpose learning strategy that uses a bipartite graph to describe the problem structure and a message passing Graph Neural Network (GNN) model to learn the correct mapping...
January 17, 2024: International Journal of Neural Systems
https://read.qxmd.com/read/38230571/epileptic-seizure-detection-with-an-end-to-end-temporal-convolutional-network-and-bidirectional-long-short-term-memory-model
#27
JOURNAL ARTICLE
Xingchen Dong, Yiming Wen, Dezan Ji, Shasha Yuan, Zhen Liu, Wei Shang, Weidong Zhou
Automatic seizure detection plays a key role in assisting clinicians for rapid diagnosis and treatment of epilepsy. In view of the parallelism of temporal convolutional network (TCN) and the capability of bidirectional long short-term memory (BiLSTM) in mining the long-range dependency of multi-channel time-series, we propose an automatic seizure detection method with a novel end-to-end TCN-BiLSTM model in this work. First, raw EEG is filtered with a 0.5-45 Hz band-pass filter, and the filtered data are input into the proposed TCN-BiLSTM network for feature extraction and classification...
January 17, 2024: International Journal of Neural Systems
https://read.qxmd.com/read/38149912/multilevel-laser-induced-pain-measurement-with-wasserstein-generative-adversarial-network%C3%A2-gradient-penalty-model
#28
JOURNAL ARTICLE
Jiancai Leng, Jianqun Zhu, Yihao Yan, Xin Yu, Ming Liu, Yitai Lou, Yanbing Liu, Licai Gao, Yuan Sun, Tianzheng He, Qingbo Yang, Chao Feng, Dezheng Wang, Yang Zhang, Qing Xu, Fangzhou Xu
Pain is an experience of unpleasant sensations and emotions associated with actual or potential tissue damage. In the global context, billions of people are affected by pain disorders. There are particular challenges in the measurement and assessment of pain, and the commonly used pain measuring tools include traditional subjective scoring methods and biomarker-based measures. The main tools for biomarker-based analysis are electroencephalography (EEG), electrocardiography and functional magnetic resonance...
January 2024: International Journal of Neural Systems
https://read.qxmd.com/read/38117159/introduction
#29
JOURNAL ARTICLE
Francesco Carlo Morabito
No abstract text is available yet for this article.
December 21, 2023: International Journal of Neural Systems
https://read.qxmd.com/read/38073547/variable-projection-support-vector-machines-and-some-applications-using-adaptive-hermite-expansions
#30
JOURNAL ARTICLE
Tamás Dózsa, Federico Deuschle, Bram Cornelis, Péter Kovács
In this paper, we develop the so-called variable projection support vector machine (VP-SVM) algorithm that is a generalization of the classical SVM. In fact, the VP block serves as an automatic feature extractor to the SVM, which are trained simultaneously. We consider the primal form of the arising optimization task and investigate the use of nonlinear kernels. We show that by choosing the so-called adaptive Hermite function system as the basis of the orthogonal projections in our classification scheme, several real-world signal processing problems can be successfully solved...
December 11, 2023: International Journal of Neural Systems
https://read.qxmd.com/read/38073546/a-few-shot-transfer-learning-approach-for-motion-intention-decoding-from-electroencephalographic-signals
#31
JOURNAL ARTICLE
Nadia Mammone, Cosimo Ieracitano, Rossella Spataro, Christoph Guger, Woosang Cho, Francesco Carlo Morabito
In this study, a few-shot transfer learning approach was introduced to decode movement intention from electroencephalographic (EEG) signals, allowing to recognize new tasks with minimal adaptation. To this end, a dataset of EEG signals recorded during the preparation of complex sub-movements was created from a publicly available data collection. The dataset was divided into two parts: the source domain dataset (including 5 classes) and the support (target domain) dataset , (including 2 classes) with no overlap between the two datasets in terms of classes...
December 11, 2023: International Journal of Neural Systems
https://read.qxmd.com/read/38063381/bimodal-feature-analysis-with-deep-learning-for-autism-spectrum-disorder-detection
#32
JOURNAL ARTICLE
Federica Colonnese, Francesco Di Luzio, Antonello Rosato, Massimo Panella
Autism Spectrum Disorder (ASD) is a complex and heterogeneous neurodevelopmental disorder which affects a significant proportion of the population, with estimates suggesting that about 1 in 100 children worldwide are affected by ASD. This study introduces a new Deep Neural Network for identifying ASD in children through gait analysis, using features extracted from frames composing video recordings of their walking patterns. The innovative method presented herein is based on imagery and combines gait analysis and deep learning, offering a noninvasive and objective assessment of neurodevelopmental disorders while delivering high accuracy in ASD detection...
December 6, 2023: International Journal of Neural Systems
https://read.qxmd.com/read/38063378/unsupervised-neural-manifold-alignment-for-stable-decoding-of-movement-from-cortical-signals
#33
JOURNAL ARTICLE
Mohammadali Ganjali, Alireza Mehridehnavi, Sajed Rakhshani, Abed Khorasani
The stable decoding of movement parameters using neural activity is crucial for the success of brain-machine interfaces (BMIs). However, neural activity can be unstable over time, leading to changes in the parameters used for decoding movement, which can hinder accurate movement decoding. To tackle this issue, one approach is to transfer neural activity to a stable, low-dimensional manifold using dimensionality reduction techniques and align manifolds across sessions by maximizing correlations of the manifolds...
December 6, 2023: International Journal of Neural Systems
https://read.qxmd.com/read/37990998/self-supervised-eeg-representation-learning-with-contrastive-predictive-coding-for-post-stroke-patients
#34
JOURNAL ARTICLE
Fangzhou Xu, Yihao Yan, Jianqun Zhu, Xinyi Chen, Licai Gao, Yanbing Liu, Weiyou Shi, Yitai Lou, Wei Wang, Jiancai Leng, Yang Zhang
Stroke patients are prone to fatigue during the EEG acquisition procedure, and experiments have high requirements on cognition and physical limitations of subjects. Therefore, how to learn effective feature representation is very important. Deep learning networks have been widely used in motor imagery (MI) based brain-computer interface (BCI). This paper proposes a contrast predictive coding (CPC) framework based on the modified s-transform (MST) to generate MST-CPC feature representations. MST is used to acquire the temporal-frequency feature to improve the decoding performance for MI task recognition...
December 2023: International Journal of Neural Systems
https://read.qxmd.com/read/37990997/author-index-volume-33-2023
#35
JOURNAL ARTICLE
(no author information available yet)
No abstract text is available yet for this article.
December 2023: International Journal of Neural Systems
https://read.qxmd.com/read/38009869/discriminative-power-of-handwriting-and-drawing-features-in-depression
#36
JOURNAL ARTICLE
Claudia Greco, Gennaro Raimo, Terry Amorese, Marialucia Cuciniello, Gavin Mcconvey, Gennaro Cordasco, Marcos Faundez-Zanuy, Alessandro Vinciarelli, Zoraida Callejas-Carrion, Anna Esposito
This study contributes knowledge on the detection of depression through handwriting/drawing features, to identify quantitative and noninvasive indicators of the disorder for implementing algorithms for its automatic detection. For this purpose, an original online approach was adopted to provide a dynamic evaluation of handwriting/drawing performance of healthy participants with no history of any psychiatric disorders ([Formula: see text]), and patients with a clinical diagnosis of depression ([Formula: see text])...
November 24, 2023: International Journal of Neural Systems
https://read.qxmd.com/read/38084473/hierarchical-bayesian-causality-network-to-extract-high-level-semantic-information-in-visual-cortex
#37
JOURNAL ARTICLE
Yongqiang Ma, Wen Zhang, Ming Du, Haodong Jing, Nanning Zheng
Functional MRI (fMRI) is a brain signal with high spatial resolution, and visual cognitive processes and semantic information in the brain can be represented and obtained through fMRI. In this paper, we design single-graphic and matched/unmatched double-graphic visual stimulus experiments and collect 12 subjects' fMRI data to explore the brain's visual perception processes. In the double-graphic stimulus experiment, we focus on the high-level semantic information as "matching", and remove tail-to-tail conjunction by designing a model to screen the matching-related voxels...
November 20, 2023: International Journal of Neural Systems
https://read.qxmd.com/read/37982259/neonatal-white-matter-damage-analysis-using-dti-super-resolution-and-multi-modality-image-registration
#38
JOURNAL ARTICLE
Yi Wang, Yuan Zhang, Chi Ma, Rui Wang, Zhe Guo, Yu Shen, Miaomiao Wang, Hongying Meng
Punctate White Matter Damage (PWMD) is a common neonatal brain disease, which can easily cause neurological disorder and strongly affect life quality in terms of neuromotor and cognitive performance. Especially, at the neonatal stage, the best cure time can be easily missed because PWMD is not conducive to the diagnosis based on current existing methods. The lesion of PWMD is relatively straightforward on T1-weighted Magnetic Resonance Imaging (T1 MRI), showing semi-oval, cluster or linear high signals. Diffusion Tensor Magnetic Resonance Image (DT-MRI, referred to as DTI) is a noninvasive technique that can be used to study brain microstructures in vivo , and provide information on movement and cognition-related nerve fiber tracts...
November 17, 2023: International Journal of Neural Systems
https://read.qxmd.com/read/37964570/an-efficient-group-federated-learning-framework-for-large-scale-eeg-based-driver-drowsiness-detection
#39
JOURNAL ARTICLE
Xinyuan Chen, Yi Niu, Yanna Zhao, Xue Qin
To avoid traffic accidents, monitoring the driver's electroencephalogram (EEG) signals to assess drowsiness is an effective solution. However, aggregating the personal data of these drivers may lead to insufficient data usage and pose a risk of privacy breaches. To address these issues, a framework called Group Federated Learning (Group-FL) for large-scale driver drowsiness detection is proposed, which can efficiently utilize diverse client data while protecting privacy. First, by arranging the clients into different levels of groups and gradually aggregating their model parameters from low-level groups to high-level groups, communication and time costs are reduced...
November 15, 2023: International Journal of Neural Systems
https://read.qxmd.com/read/37899654/multi-view-graph-contrastive-learning-via-adaptive-channel-optimization-for-depression-detection-in-eeg-signals
#40
JOURNAL ARTICLE
Shuangyong Zhang, Hong Wang, Zixi Zheng, Tianyu Liu, Weixin Li, Zishan Zhang, Yanshen Sun
Automated detection of depression using Electroencephalogram (EEG) signals has become a promising application in advanced bioinformatics technology. Although current methods have achieved high detection performance, several challenges still need to be addressed: (1) Previous studies do not consider data redundancy when modeling multi-channel EEG signals, resulting in some unrecognized noise channels remaining. (2) Most works focus on the functional connection of EEG signals, ignoring their spatial proximity...
November 2023: International Journal of Neural Systems
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