Meta-SelfLearning

Domain adaptation software

Develops a method to improve performance of computer vision tasks by adapting models to new domains and data sources through meta-learning and self-learning techniques.

Meta Self-learning for Multi-Source Domain Adaptation: A Benchmark

GitHub

199 stars
3 watching
5 forks
Language: Python
last commit: over 2 years ago
benchmarkcomputer-visiondatasetdomain-adaptationiccv2021meta-learningmulti-source-domain-adaptationocr-recognitionself-learningtext-recognition

Related projects:

Repository Description Stars
naoto0804/cross-domain-detection Develops object detection algorithms to adapt to new domains with limited supervision 422
wenkehuang/rethinkfl Improves federated learning performance by incorporating domain knowledge and regularization to adapt models across diverse domains 91
chrisallenming/ltc-msda An implementation of a knowledge aggregation method for adapting to multiple domains using a graph-based framework. 68
domainadaptation/salad A toolbox for comparing and running domain adaptation algorithms on different datasets. 333
wasidennis/adaptsegnet This project implements a deep learning-based approach to adapt semantic segmentation models from one domain to another. 849
easezyc/deep-transfer-learning A collection of implementations of algorithms to adapt deep learning models from one domain to another 892
kaiyangzhou/dassl.pytorch A PyTorch toolbox for supporting research and development of domain adaptation, generalization, and semi-supervised learning methods in computer vision. 1,217
baowenxuan/atp An implementation of adaptive test-time personalization for federated learning in deep neural networks. 16
lhoyer/hrda A framework for unsupervised domain adaptation in semantic segmentation using multi-resolution training and learned scale attention. 235
tristandeleu/pytorch-meta Provides tools and datasets for meta-learning and few-shot learning in deep learning 1,987
layneh/self-adaptive-training Improves deep network generalization under noise and enhances self-supervised representation learning 127
tsingz0/dbe This implementation of a federated learning method aims to reduce domain bias in representation space, enabling more efficient knowledge transfer between clients and servers. 22
bupt-gamma/multi-component-graph-convolutional-collaborative-filtering A deep learning framework for collaborative filtering and graph-based recommender systems 60
ikostrikov/pytorch-meta-optimizer A PyTorch implementation of meta-learning using gradient descent to adapt to new tasks. 312
mop/bier This project implements a deep metric learning framework using an adversarial auxiliary loss to improve robustness. 39