Holistic prototype activation for few-shot segmentation
Conventional deep CNN-based segmentation approaches have achieved satisfactory
performance in recent years, however, they are essentially Big Data-driven technologies …
performance in recent years, however, they are essentially Big Data-driven technologies …
Heterogeneous domain adaptation with structure and classification space alignment
Q Tian, H Sun, C Ma, M Cao, Y Chu… - IEEE Transactions on …, 2021 - ieeexplore.ieee.org
Domain adaptation (DA) aims at facilitating the target model training by leveraging
knowledge from related but distribution-inconsistent source domain. Most of the previous DA …
knowledge from related but distribution-inconsistent source domain. Most of the previous DA …
Knowledge preserving and distribution alignment for heterogeneous domain adaptation
Domain adaptation aims at improving the performance of learning tasks in a target domain
by leveraging the knowledge extracted from a source domain. To this end, one can perform …
by leveraging the knowledge extracted from a source domain. To this end, one can perform …
Multiple graphs and low-rank embedding for multi-source heterogeneous domain adaptation
Multi-source domain adaptation is a challenging topic in transfer learning, especially when
the data of each domain are represented by different kinds of features, ie, Multi-source …
the data of each domain are represented by different kinds of features, ie, Multi-source …
A transfer classification method for heterogeneous data based on evidence theory
ZG Liu, G Qiu, G Mercier, Q Pan - IEEE Transactions on …, 2019 - ieeexplore.ieee.org
It remains a challenging problem for data classification without training patterns. In many
applications, there may exist some labeled data in other related domains (called source …
applications, there may exist some labeled data in other related domains (called source …
Iterative refinement for multi-source visual domain adaptation
One of the main challenges in multi-source domain adaptation is how to reduce the domain
discrepancy between each source domain and a target domain, and then evaluate the …
discrepancy between each source domain and a target domain, and then evaluate the …
Heterogeneous domain adaptation by information capturing and distribution matching
Heterogeneous domain adaptation (HDA) is a challenging problem because of the different
feature representations in the source and target domains. Most HDA methods search for …
feature representations in the source and target domains. Most HDA methods search for …
Semi-supervised domain adaptation for major depressive disorder detection
T Chen, Y Guo, S Hao, R Hong - IEEE Transactions on …, 2023 - ieeexplore.ieee.org
Major Depressive Disorder (MDD) detection with cross-domain datasets is a crucial yet
challenging application due to the data scarcity and isolated data island issues in …
challenging application due to the data scarcity and isolated data island issues in …
A new belief-based bidirectional transfer classification method
ZG Liu, GH Qiu, SY Wang, TC Li… - IEEE Transactions on …, 2021 - ieeexplore.ieee.org
In pattern classification, we may have a few labeled data points in the target domain, but a
number of labeled samples are available in another related domain (called the source …
number of labeled samples are available in another related domain (called the source …
Improving prediction for medical institution with limited patient data: Leveraging hospital-specific data based on multicenter collaborative research network
J Li, Y Tian, R Li, T Zhou, J Li, K Ding, J Li - Artificial intelligence in medicine, 2021 - Elsevier
Background and objective Clinical decision support assisted by prediction models usually
faces the challenges of limited clinical data and a lack of labels when the model is …
faces the challenges of limited clinical data and a lack of labels when the model is …