All Relations between representation and cnn

Publication Sentence Publish Date Extraction Date Species
Anyi Wang, Tao Zhu, Qifeng Men. Spectrum Sensing Method Based on STFT-RADN in Cognitive Radio Networks. Sensors (Basel, Switzerland). vol 24. issue 17. 2024-09-14. PMID:39275703. to address the common issues in traditional convolutional neural network (cnn)-based spectrum sensing algorithms in cognitive radio networks (crns), including inadequate signal feature representation, inefficient utilization of feature map information, and limited feature extraction capabilities due to shallow network structures, this paper proposes a spectrum sensing algorithm based on a short-time fourier transform (stft) and residual attention dense network (radn). 2024-09-14 2024-09-17 Not clear
M Latha, P Santhosh Kumar, R Roopa Chandrika, T R Mahesh, V Vinoth Kumar, Suresh Guluwad. Revolutionizing breast ultrasound diagnostics with EfficientNet-B7 and Explainable AI. BMC medical imaging. vol 24. issue 1. 2024-09-03. PMID:39223507. to address these issues, we propose a methodology that leverages efficientnet-b7, a scalable cnn architecture, combined with advanced data augmentation techniques to enhance minority class representation and improve model robustness. 2024-09-03 2024-09-05 Not clear
Ming Li, Zekun Yang, Jiehua Yan, Haoran Li, Wangzhong Y. Dune Morphology Classification and Dataset Construction Method Based on Unmanned Aerial Vehicle Orthoimagery. Sensors (Basel, Switzerland). vol 24. issue 15. 2024-08-10. PMID:39124020. however, convolutional neural network (cnn) models exhibit robust feature representation capabilities for images and have achieved excellent results in image classification, providing a new method for studying dune morphology classification. 2024-08-10 2024-08-13 Not clear
Keyvan Mahjoory, Andreas Bahmer, Molly J Henr. Convolutional neural networks can identify brain interactions involved in decoding spatial auditory attention. PLoS computational biology. vol 20. issue 8. 2024-08-08. PMID:39116183. to this end, our cnn model was specifically designed to learn pairwise interaction representations for 10 cortical regions from five-second inputs. 2024-08-08 2024-08-12 human
Adam White, Margarita Saranti, Artur d'Avila Garcez, Thomas M H Hope, Cathy J Price, Howard Bowma. Predicting recovery following stroke: Deep learning, multimodal data and feature selection using explainable AI. NeuroImage. Clinical. vol 43. 2024-07-13. PMID:39002223. additionally, we introduce the novel approach of training a convolutional neural network (cnn) on images that combine regions-of-interests (rois) extracted from mris, with symbolic representations of tabular data. 2024-07-13 2024-07-16 human
Adam White, Margarita Saranti, Artur d'Avila Garcez, Thomas M H Hope, Cathy J Price, Howard Bowma. Predicting recovery following stroke: Deep learning, multimodal data and feature selection using explainable AI. NeuroImage. Clinical. vol 43. 2024-07-13. PMID:39002223. we evaluate a series of cnn architectures (both 2d and a 3d) that are trained on different representations of mri and tabular data, to predict whether a composite measure of post-stroke spoken picture description ability is in the aphasic or non-aphasic range. 2024-07-13 2024-07-16 human
Xin Bi, Tian Zhan. Pedagogical sentiment analysis based on the BERT-CNN-BiGRU-attention model in the context of intercultural communication barriers. PeerJ. Computer science. vol 10. 2024-07-10. PMID:38983236. it proposes a hybrid model (bcba) based on bidirectional encoder representations from transformers (bert), convolutional neural networks (cnn), bidirectional gated recurrent units (bigru), and the attention mechanism. 2024-07-10 2024-07-12 Not clear
Alex Mirugwe, Clare Ashaba, Alice Namale, Evelyn Akello, Edward Bichetero, Edgar Kansiime, Juwa Nyirend. Sentiment Analysis of Social Media Data on Ebola Outbreak Using Deep Learning Classifiers. Life (Basel, Switzerland). vol 14. issue 6. 2024-06-27. PMID:38929691. the techniques examined included a 6-layer convolutional neural network (cnn), a 6-layer long short-term memory model (lstm), and an 8-layer bidirectional encoder representations from transformers (bert) model. 2024-06-27 2024-06-29 Not clear
Rongtao Xu, Changwei Wang, Jiguang Zhang, Shibiao Xu, Weiliang Meng, Xiaopeng Zhan. SkinFormer: Learning Statistical Texture Representation With Transformer for Skin Lesion Segmentation. IEEE journal of biomedical and health informatics. vol PP. 2024-06-24. PMID:38913520. texture representations are not only related to the local structural information learned by cnn, but also include the global statistical texture information of the input image. 2024-06-24 2024-06-27 Not clear
Karim Gasmi, Hajer Ayadi, Mouna Torjme. Enhancing Medical Image Retrieval with UMLS-Integrated CNN-Based Text Indexing. Diagnostics (Basel, Switzerland). vol 14. issue 11. 2024-06-19. PMID:38893730. specifically, our dmm aims to generate effective representations for query and image metadata using a personalized cnn, facilitating matching between these representations. 2024-06-19 2024-06-21 Not clear
Jianqiao Sun, Bo Chen, Ruiying Lu, Ziheng Cheng, Chunhui Qu, Xin Yua. Advancing Hyperspectral and Multispectral Image Fusion: An Information-Aware Transformer-Based Unfolding Network. IEEE transactions on neural networks and learning systems. vol PP. 2024-05-23. PMID:38776209. with the powerful representation ability, convolutional neural network (cnn)-based deep unfolding methods have demonstrated promising performances. 2024-05-23 2024-05-27 Not clear
Chuanxia Zheng, Guoxian Song, Tat-Jen Cham, Jianfei Cai, Linjie Luo, Dinh Phun. Bridging Global Context Interactions for High-Fidelity Pluralistic Image Completion. IEEE transactions on pattern analysis and machine intelligence. vol PP. 2024-05-21. PMID:38771691. our key contribution is to introduce a code-shared codebook learning using a restrictive cnn on small and non-overlapping receptive fields (rfs) for the local visible token representation. 2024-05-21 2024-05-27 Not clear
Weiwei Cao, Jianfeng Guo, Xiaohui You, Yuxin Liu, Lei Li, Wenju Cui, Yuzhu Cao, Xinjian Chen, Jian Zhen. NeighborNet: Learning Intra- and Inter-Image Pixel Neighbor Representation for Breast Lesion Segmentation. IEEE journal of biomedical and health informatics. vol PP. 2024-05-15. PMID:38743530. with the two properties, for each pixel at each feature level, the proposed neighbornet can evolve into the transformer or degenerate into the cnn for adaptive context representation learning to cope with the irregular lesion morphologies and blurry boundaries. 2024-05-15 2024-05-27 human
Shuang Zhou, Meiling Du, XiaoYu Liu, Hongyan She. Algorithm for community security risk assessment and influencing factors analysis by back propagation neural network. Heliyon. vol 10. issue 9. 2024-05-10. PMID:38720748. these traditional models include convolutional neural network (cnn), long short-term memory network (lstm), bidirectional encoder representations from transformers (bert), generative pre-trained transformer (gpt), and extreme gradient boosting (xgboost). 2024-05-10 2024-05-27 Not clear
Chengxuan Tong, Yi Ding, Zhuo Zhang, Haihong Zhang, Kevin JunLiang Lim, Cuntai Gua. TASA: Temporal Attention with Spatial Autoencoder Network for Odor-induced Emotion Classification Using EEG. IEEE transactions on neural systems and rehabilitation engineering : a publication of the IEEE Engineering in Medicine and Biology Society. vol PP. 2024-05-10. PMID:38722724. we improved upon the previous work by utilizing a two-phase learning framework, using the autoencoder module to learn the spatial information among electrodes by reconstructing the given input with a latent representation in the spatial dimension, which aims to minimize information loss compared to spatial filtering with cnn. 2024-05-10 2024-05-27 human
Delei Wang, Yanqing Ya. Improving inceptionV4 model based on fractional-order snow leopard optimization algorithm for diagnosing of ACL tears. Scientific reports. vol 14. issue 1. 2024-04-29. PMID:38684782. these findings surpass current methodologies like convolutional neural network (cnn), inception-v3, deep belief networks and improved honey badger algorithm (dbn/ihba), integration of the cnn with an amended cooking training-based optimizer version (cnn/acto), self-supervised representation learning (ssrl), signifying a significant breakthrough in acl injury diagnosis. 2024-04-29 2024-05-03 Not clear
Jun Hu, Zhe Li, Bing Rao, Maha A Thafar, Muhammad Ari. Improving Protein-Protein Interaction Prediction Using Protein Language Model and Protein Network Features. Analytical biochemistry. 2024-04-28. PMID:38679191. subsequently, feature representations are further extracted through cksaap, and a two-dimensional convolutional neural network (cnn) is utilized to capture local information. 2024-04-28 2024-05-01 Not clear
Austin Spadaro, Alok Sharma, Iman Dehzang. Predicting lysine methylation sites using a convolutional neural network. Methods (San Diego, Calif.). 2024-04-11. PMID:38604414. automated feature extraction from these representations of amino acids as well as cnn as a classifier have never been used for this problem. 2024-04-11 2024-04-14 Not clear
Siuly Siuly, Smith K Khare, Enamul Kabir, Muhammad Tariq Sadiq, Hua Wan. An efficient Parkinson's disease detection framework: Leveraging time-frequency representation and AlexNet convolutional neural network. Computers in biology and medicine. vol 174. 2024-04-10. PMID:38599069. to address these limitations, this study proposes a novel approach using a time-frequency representation (tfr) based alexnet convolutional neural network (cnn) model to explore eeg channel-based analysis and identify critical brain regions efficiently diagnosing pd from eeg data. 2024-04-10 2024-04-13 Not clear
Min Gao, Shaohua Jiang, Weibin Ding, Ting Xu, Zhijian Ly. Learning long- and short-term dependencies for improving drug-target binding affinity prediction using transformer and edge contraction pooling. Journal of bioinformatics and computational biology. vol 22. issue 1. 2024-04-03. PMID:38567388. furthermore, the incorporation of queries, keys and values produced by the stacked convolutional neural network (cnn) enables our model to better integrate the local and global context of protein representation, leading to further improvements in the accuracy of dta prediction. 2024-04-03 2024-04-05 Not clear