keyword
https://read.qxmd.com/read/38403618/-research-on-fault-diagnosis-of-patient-monitor-based-on-text-mining
#41
JOURNAL ARTICLE
Xiangfei He, Hehua Zhang, Jing Huang, Dechun Zhao, Yang Li, Rui Nie, Xianghua Liu
The conventional fault diagnosis of patient monitors heavily relies on manual experience, resulting in low diagnostic efficiency and ineffective utilization of fault maintenance text data. To address these issues, this paper proposes an intelligent fault diagnosis method for patient monitors based on multi-feature text representation, improved bidirectional gate recurrent unit (BiGRU) and attention mechanism. Firstly, the fault text data was preprocessed, and the word vectors containing multiple linguistic features was generated by linguistically-motivated bidirectional encoder representation from Transformer...
February 25, 2024: Sheng Wu Yi Xue Gong Cheng Xue za Zhi, Journal of Biomedical Engineering, Shengwu Yixue Gongchengxue Zazhi
https://read.qxmd.com/read/38400317/multi-feature-automatic-extraction-for-detecting-obstructive-sleep-apnea-based-on-single-lead-electrocardiography-signals
#42
JOURNAL ARTICLE
Yu Zhou, Kyungtae Kang
Obstructive sleep apnea (OSA), a prevalent sleep disorder, is intimately associated with various other diseases, particularly cardiovascular conditions. The conventional diagnostic method, nocturnal polysomnography (PSG), despite its widespread use, faces challenges due to its high cost and prolonged duration. Recent developments in electrocardiogram-based diagnostic techniques have opened new avenues for addressing these challenges, although they often require a deep understanding of feature engineering. In this study, we introduce an innovative method for OSA classification that combines a composite deep convolutional neural network model with a multimodal strategy for automatic feature extraction...
February 9, 2024: Sensors
https://read.qxmd.com/read/38396277/reegan-mri-image-edge-preserving-synthesis-based-on-gans-trained-with-misaligned-data
#43
JOURNAL ARTICLE
Xiangjiang Lu, Xiaoshuang Liang, Wenjing Liu, Xiuxia Miao, Xianglong Guan
As a crucial medical examination technique, different modalities of magnetic resonance imaging (MRI) complement each other, offering multi-angle and multi-dimensional insights into the body's internal information. Therefore, research on MRI cross-modality conversion is of great significance, and many innovative techniques have been explored. However, most methods are trained on well-aligned data, and the impact of misaligned data has not received sufficient attention. Additionally, many methods focus on transforming the entire image and ignore crucial edge information...
February 24, 2024: Medical & Biological Engineering & Computing
https://read.qxmd.com/read/38394875/urban-energy-performance-improvement-policy-selection-in-china-based-on-policy-effect-prediction-an-analysis-from-the-dimensions-of-economy-environment-and-well-being
#44
JOURNAL ARTICLE
Lei Wang, Jingyu Zheng, Yanhong Yuan, Yujie Wang, Yaoyu He
The environmental pollution and social well-being issue caused by the huge energy consumption in cities reflect the urgency of improving urban energy performance from multiple dimensions of economy, environment, and well-being. As a result, various countries and cities have promulgated a series of policies. However, the complexity of the policies makes the categories and utilities need to be further clarified, and the diseconomy caused by the lag of policy effect evaluation makes the focus of policy implementation need to be clear in advance...
February 22, 2024: Journal of Environmental Management
https://read.qxmd.com/read/38388761/a-novel-atrial-fibrillation-automatic-detection-algorithm-based-on-ensemble-learning-and-multi-feature-discrimination
#45
JOURNAL ARTICLE
Xiangkui Wan, Yizheng Liu, Xiaoyu Mei, Jinxing Ye, Chunyan Zeng, Yunfan Chen
Atrial fibrillation (AF) is a prevalent cardiac arrhythmia disorder that necessitates long-time electrocardiogram (ECG) data for clinical diagnosis, leading to low detection efficiency. Automatic detection of AF signals within short-time ECG recordings is challenging. To address these issues, this paper proposes a novel algorithm called Ensemble Learning and Multi-Feature Discrimination (ELMD) for the identification and detection of AF signals. Firstly, a robust classifier, BSK-Model, is constructed using ensemble learning...
February 23, 2024: Medical & Biological Engineering & Computing
https://read.qxmd.com/read/38387154/fatigue-at-the-wheel-a-non-visual-approach-to-truck-driver-fatigue-detection-by-multi-feature-fusion
#46
JOURNAL ARTICLE
Chen He, Pengpeng Xu, Xin Pei, Qianfang Wang, Yun Yue, Chunyang Han
BACKGROUND: Monitoring of long-haul truck driver fatigue state has attracted considerable interest. Conventional fatigue driving detection methods based on the physiological and visual features are scarcely applicable, due to the intrusiveness, reliability, and cost-effectiveness concerns. METHODS: We elaborately developed a fatigue driving detection method by fusion of non-visual features derived from the customized wristbands, vehicle-mounted equipment, and trip logs...
February 21, 2024: Accident; Analysis and Prevention
https://read.qxmd.com/read/38386675/expressway-traffic-flow-prediction-based-on-mf-tan-and-stsa
#47
JOURNAL ARTICLE
Xi Zhang, Qiang Ren, Ying Zhang, Chunlian Quan, Shuang Guo, Fangwei Li
Highly accurate traffic flow prediction is essential for effectively managing traffic congestion, providing real-time travel advice, and reducing travel costs. However, traditional traffic flow prediction models often fail to fully consider the correlation and periodicity among traffic state data and rely on static network topology graphs. To solve this problem, this paper proposes a expressway traffic flow prediction model based on multi-feature spatial-temporal adaptive periodic fused graph convolutional network (MFSTAPFGCN)...
2024: PloS One
https://read.qxmd.com/read/38352768/micro-motion-characteristics-of-multi-feature-targets-on-the-double-pulse-coherent-system
#48
JOURNAL ARTICLE
Si Chen, Haiyang Zhang, Lin Wang, Yu Fan, Changming Zhao
In this paper, we study the micro-motion characteristics of multi-feature targets based on a double pulse coherent system under atmospheric conditions. The theoretical model for echo signal and micro-motion characteristics of a 3D target in double pulse coherent system is deduced. We discuss the influence of micro-motion characteristics, the relative size of light spot and target, target shapes, and incident direction on frequency shift. LRCS (Lidar cross-section), echo waveform, intensity and radiation energy distribution under different conditions are obtained additionally...
February 15, 2024: Heliyon
https://read.qxmd.com/read/38343972/pssp-mffnet-a-multifeature-fusion-network-for-protein-secondary-structure-prediction
#49
JOURNAL ARTICLE
Yifu Chen, Guanxing Chen, Calvin Yu-Chian Chen
Protein secondary structure prediction (PSSP) is a fundamental task in modern bioinformatics research and is particularly important for uncovering the functional mechanisms of proteins. To improve the accuracy of PSSP, various general and essential features generated from amino acid sequences are often used for predicting the secondary structure. In this paper, we propose PSSP-MFFNet, a deep learning-based multi-feature fusion network for PSSP, which incorporates a multi-view deep learning architecture with the multiple sequence alignment (MSA) Transformer to efficiently capture global and local features of protein sequences...
February 6, 2024: ACS Omega
https://read.qxmd.com/read/38339706/yolov7-ts-a-traffic-sign-detection-model-based-on-sub-pixel-convolution-and-feature-fusion
#50
JOURNAL ARTICLE
Shan Zhao, Yang Yuan, Xuan Wu, Yunlei Wang, Fukai Zhang
In recent years, significant progress has been witnessed in the field of deep learning-based object detection. As a subtask in the field of object detection, traffic sign detection has great potential for development. However, the existing object detection methods for traffic sign detection in real-world scenes are plagued by issues such as the omission of small objects and low detection accuracies. To address these issues, a traffic sign detection model named YOLOv7-Traffic Sign (YOLOv7-TS) is proposed based on sub-pixel convolution and feature fusion...
February 3, 2024: Sensors
https://read.qxmd.com/read/38339501/spatial-visual-imagery-svi-based-electroencephalograph-discrimination-for-natural-cad-manipulation
#51
JOURNAL ARTICLE
Beining Cao, Hongwei Niu, Jia Hao, Xiaonan Yang, Zinian Ye
With the increasing demand for natural interactions, people have realized that an intuitive Computer-Aided Design (CAD) interaction mode can reduce the complexity of CAD operation and improve the design experience. Although interaction modes like gaze and gesture are compatible with some complex CAD manipulations, they still require people to express their design intentions physically. The brain contains design intentions implicitly and controls the corresponding body parts that execute the task. Therefore, building an end-to-end channel between the brain and computer as an auxiliary mode for CAD manipulation will allow people to send design intentions mentally and make their interaction more intuitive...
January 25, 2024: Sensors
https://read.qxmd.com/read/38257708/glfnet-combining-global-and-local-information-in-vehicle-re-recognition
#52
JOURNAL ARTICLE
Yinghan Yang, Peng Liu, Junran Huang, Hongfei Song
Vehicle re-identification holds great significance for intelligent transportation and public safety. Extracting vehicle recognition information from multi-view vehicle images has become one of the challenging problems in the field of vehicle recognition. Most recent methods employ a single network extraction structure, either a single global or local measure. However, for vehicle images with high intra-class variance and low inter-class variance, exploring globally invariant features and discriminative local details is necessary...
January 18, 2024: Sensors
https://read.qxmd.com/read/38257467/video-based-identification-and-prediction-techniques-for-stable-vessel-trajectories-in-bridge-areas
#53
JOURNAL ARTICLE
Woqin Luo, Ye Xia, Tiantao He
In recent years, the global upswing in vessel-bridge collisions underscores the vital need for robust vessel track identification in accident prevention. Contemporary vessel trajectory identification strategies often integrate target detection with trajectory tracking algorithms, employing models like YOLO integrated with DeepSORT or Bytetrack algorithms. However, the accuracy of these methods relies on target detection outcomes and the imprecise boundary acquisition method results in erroneous vessel trajectory identification and tracking, leading to both false positives and missed detections...
January 8, 2024: Sensors
https://read.qxmd.com/read/38257406/study-on-a-pig-vocalization-classification-method-based-on-multi-feature-fusion
#54
JOURNAL ARTICLE
Yuting Hou, Qifeng Li, Zuchao Wang, Tonghai Liu, Yuxiang He, Haiyan Li, Zhiyu Ren, Xiaoli Guo, Gan Yang, Yu Liu, Ligen Yu
To improve the classification of pig vocalization using vocal signals and improve recognition accuracy, a pig vocalization classification method based on multi-feature fusion is proposed in this study. With the typical vocalization of pigs in large-scale breeding houses as the research object, short-time energy, frequency centroid, formant frequency and first-order difference, and Mel frequency cepstral coefficient and first-order difference were extracted as the fusion features. These fusion features were improved using principal component analysis...
January 5, 2024: Sensors
https://read.qxmd.com/read/38245656/multimodal-classification-of-alzheimer-s-disease-and-mild-cognitive-impairment-using-custom-mkscddl-kernel-over-cnn-with-transparent-decision-making-for-explainable-diagnosis
#55
JOURNAL ARTICLE
V Adarsh, G R Gangadharan, Ugo Fiore, Paolo Zanetti
The study presents an innovative diagnostic framework that synergises Convolutional Neural Networks (CNNs) with a Multi-feature Kernel Supervised within-class-similar Discriminative Dictionary Learning (MKSCDDL). This integrative methodology is designed to facilitate the precise classification of individuals into categories of Alzheimer's Disease, Mild Cognitive Impairment (MCI), and Cognitively Normal (CN) statuses while also discerning the nuanced phases within the MCI spectrum. Our approach is distinguished by its robustness and interpretability, offering clinicians an exceptionally transparent tool for diagnosis and therapeutic strategy formulation...
January 20, 2024: Scientific Reports
https://read.qxmd.com/read/38224325/improved-deep-belief-network-for-estimating-mango-quality-indices-and-grading-a-computer-vision-based-neutrosophic-approach
#56
JOURNAL ARTICLE
Mukesh Kumar Tripathi, Shivendra
This research introduces a revolutionary machinet learning algorithm-based quality estimation and grading system. The suggested work is divided into four main parts: Ppre-processing, neutroscopic model transformation, Feature Extraction, and Grading. The raw images are first pre-processed by following five major stages: read, resize, noise removal, contrast enhancement via CLAHE, and Smoothing via filtering. The pre-processed images are then converted into a neutrosophic domain for more effective mango grading...
January 15, 2024: Network: Computation in Neural Systems
https://read.qxmd.com/read/38216539/crossfuse-xgboost-accurate-prediction-of-the-maximum-recommended-daily-dose-through-multi-feature-fusion-cross-validation-screening-and-extreme-gradient-boosting
#57
JOURNAL ARTICLE
Qiang Li, Yu He, Jianbo Pan
In the drug development process, approximately 30% of failures are attributed to drug safety issues. In particular, the first-in-human (FIH) trial of a new drug represents one of the highest safety risks, and initial dose selection is crucial for ensuring safety in clinical trials. With traditional dose estimation methods, which extrapolate data from animals to humans, catastrophic events have occurred during Phase I clinical trials due to interspecies differences in compound sensitivity and unknown molecular mechanisms...
November 22, 2023: Briefings in Bioinformatics
https://read.qxmd.com/read/38194394/m-fanet-multi-feature-attention-convolutional-neural-network-for-motor-imagery-decoding
#58
JOURNAL ARTICLE
Yiyang Qin, Banghua Yang, Sixiong Ke, Peng Liu, Fenqi Rong, Xinxing Xia
Motor imagery (MI) decoding methods are pivotal in advancing rehabilitation and motor control research. Effective extraction of spectral-spatial-temporal features is crucial for MI decoding from limited and low signal-to-noise ratio electroencephalogram (EEG) signal samples based on brain-computer interface (BCI). In this paper, we propose a lightweight Multi-Feature Attention Neural Network (M-FANet) for feature extraction and selection of multi-feature data. M-FANet employs several unique attention modules to eliminate redundant information in the frequency domain, enhance local spatial feature extraction and calibrate feature maps...
January 9, 2024: IEEE Transactions on Neural Systems and Rehabilitation Engineering
https://read.qxmd.com/read/38191900/named-entity-recognition-in-aerospace-based-on-multi-feature-fusion-transformer
#59
JOURNAL ARTICLE
Jing Chu, Yumeng Liu, Qi Yue, Zixuan Zheng, Xiaokai Han
In recent years, along with the rapid development in the domain of artificial intelligence and aerospace, aerospace combined with artificial intelligence is the future trend. As an important basic tool for Natural Language Processing, Named Entity Recognition technology can help obtain key relevant knowledge from a large number of aerospace data. In this paper, we produced an aerospace domain entity recognition dataset containing 30 k sentences in Chinese and developed a named entity recognition model that is Multi-Feature Fusion Transformer (MFT), which combines features such as words and radicals to enhance the semantic information of the sentences...
January 8, 2024: Scientific Reports
https://read.qxmd.com/read/38191118/isumo-rsfpn-a-predictor-for-identifying-lysine-sumo-ylation-sites-based-on-multi-features-and-feature-pyramid-networks
#60
JOURNAL ARTICLE
Zhe Lv, Xin Wei, Siqin Hu, Gang Lin, Wangren Qiu
SUMOylation is a protein post-translational modification that plays an essential role in cellular functions. For predicting SUMO sites, numerous researchers have proposed advanced methods based on ordinary machine learning algorithms. These reported methods have shown excellent predictive performance, but there is room for improvement. In this study, we constructed a novel deep neural network Residual Pyramid Network (RsFPN), and developed an ensemble deep learning predictor called iSUMO-RsFPN. Initially, three feature extraction methods were employed to extract features from samples...
January 6, 2024: Analytical Biochemistry
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