Bag‐of‐words representation in image annotation: a review
CF Tsai - International Scholarly Research Notices, 2012 - Wiley Online Library
Content‐based image retrieval (CBIR) systems require users to query images by their low‐
level visual content; this not only makes it hard for users to formulate queries, but also can …
level visual content; this not only makes it hard for users to formulate queries, but also can …
Gaining insights from social media language: Methodologies and challenges.
Abstract Language data available through social media provide opportunities to study
people at an unprecedented scale. However, little guidance is available to psychologists …
people at an unprecedented scale. However, little guidance is available to psychologists …
Mixture-based feature space learning for few-shot image classification
Abstract We introduce Mixture-based Feature Space Learning (MixtFSL) for obtaining a rich
and robust feature representation in the context of few-shot image classification. Previous …
and robust feature representation in the context of few-shot image classification. Previous …
Bag-of-words representation for biomedical time series classification
Automatic analysis of biomedical time series such as electroencephalogram (EEG) and
electrocardiographic (ECG) signals has attracted great interest in the community of …
electrocardiographic (ECG) signals has attracted great interest in the community of …
von mises-fisher mixture model-based deep learning: Application to face verification
MA Hasnat, J Bohné, J Milgram, S Gentric… - arxiv preprint arxiv …, 2017 - arxiv.org
A number of pattern recognition tasks,\textit {eg}, face verification, can be boiled down to
classification or clustering of unit length directional feature vectors whose distance can be …
classification or clustering of unit length directional feature vectors whose distance can be …
Gaussian mixture model using semisupervised learning for probabilistic fault diagnosis under new data categories
Fault diagnosis has played a vital role in industry to prevent operation hazards and failures.
To overcome the limitation of conventional diagnosis approaches, which misclassify new …
To overcome the limitation of conventional diagnosis approaches, which misclassify new …
Scene image classification method based on Alex-Net model
J Sun, X Cai, F Sun, J Zhang - 2016 3rd international …, 2016 - ieeexplore.ieee.org
Deep convolutional neural network (DCNN) is a powerful method of learning image features
with more discriminative and has been studied deeply and applied widely in the field of …
with more discriminative and has been studied deeply and applied widely in the field of …
Personalized driver workload inference by learning from vehicle related measurements
Adapting in-vehicle systems (eg, advanced driver assistance systems and in-vehicle
information systems) to individual drivers' workload can enhance both safety and …
information systems) to individual drivers' workload can enhance both safety and …
Remote sensing image classification: No features, no clustering
S Cui, G Schwarz, M Datcu - IEEE Journal of Selected Topics in …, 2015 - ieeexplore.ieee.org
In this paper, we consider the problem of remote sensing image classification, in which
feature extraction and feature coding are critical steps. Various feature extraction methods …
feature extraction and feature coding are critical steps. Various feature extraction methods …
Bayesian learning of shifted-scaled dirichlet mixture models and its application to early COVID-19 detection in chest X-ray images
Early diagnosis and assessment of fatal diseases and acute infections on chest X-ray (CXR)
imaging may have important therapeutic implications and reduce mortality. In fact, many …
imaging may have important therapeutic implications and reduce mortality. In fact, many …