RSSFormer: Foreground saliency enhancement for remote sensing land-cover segmentation
High spatial resolution (HSR) remote sensing images contain complex foreground-
background relationships, which makes the remote sensing land cover segmentation a …
background relationships, which makes the remote sensing land cover segmentation a …
Noise-resistant multilabel fuzzy neighborhood rough sets for feature subset selection
Feature selection attempts to capture the more discriminative features and plays a significant
role in multilabel learning. As an efficient mathematical tool to handle incomplete and …
role in multilabel learning. As an efficient mathematical tool to handle incomplete and …
A survey on multi-label feature selection from perspectives of label fusion
W Qian, J Huang, F Xu, W Shu, W Ding - Information Fusion, 2023 - Elsevier
With the rapid advancement of big data technology, high-dimensional datasets comprising
multi-label data have become prevalent in various fields. However, these datasets often …
multi-label data have become prevalent in various fields. However, these datasets often …
Deep learning for multi-label learning: A comprehensive survey
AN Tarekegn, M Ullah, FA Cheikh - arXiv preprint arXiv:2401.16549, 2024 - arxiv.org
Multi-label learning is a rapidly growing research area that aims to predict multiple labels
from a single input data point. In the era of big data, tasks involving multi-label classification …
from a single input data point. In the era of big data, tasks involving multi-label classification …
Feature learning network with transformer for multi-label image classification
The purpose of multi-label image classification task is to accurately assign a set of labels to
the objects in images. Although promising results have been achieved, most of the existing …
the objects in images. Although promising results have been achieved, most of the existing …
A novel transformer-based network forecasting method for building cooling loads
L Li, X Su, X Bi, Y Lu, X Sun - Energy and Buildings, 2023 - Elsevier
For cooling equipment management and scheduling optimization, accurate building cooling
load forecasting technology is crucial. Currently, the physics-based forecasting models are …
load forecasting technology is crucial. Currently, the physics-based forecasting models are …
[HTML][HTML] CTransCNN: Combining transformer and CNN in multilabel medical image classification
Multilabel image classification aims to assign images to multiple possible labels. In this task,
each image may be associated with multiple labels, making it more challenging than the …
each image may be associated with multiple labels, making it more challenging than the …
Magdra: a multi-modal attention graph network with dynamic routing-by-agreement for multi-label emotion recognition
X Li, J Liu, Y Xie, P Gong, X Zhang, H He - Knowledge-Based Systems, 2024 - Elsevier
Multimodal multi-label emotion recognition (MMER) is a vital yet challenging task in affective
computing. Despite significant progress in previous works, there are three limitations:(i) …
computing. Despite significant progress in previous works, there are three limitations:(i) …
Ingredient prediction via context learning network with class-adaptive asymmetric loss
Ingredient prediction has received more and more attention with the help of image
processing for its diverse real-world applications, such as nutrition intake management and …
processing for its diverse real-world applications, such as nutrition intake management and …
Few-shot learning meets transformer: Unified query-support transformers for few-shot classification
The goal of Few-shot classification (FSL) is to identify unseen classes with very limited
samples has attracted more and more attention. Usually, it is formulated as a metric learning …
samples has attracted more and more attention. Usually, it is formulated as a metric learning …