domain adaptDomain adaptation networks for digit recognitioning
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Mutual labels: generative-adversarial-network, domain-adaptation
Lsd SegLearning from Synthetic Data: Addressing Domain Shift for Semantic Segmentation
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Mutual labels: generative-adversarial-network, domain-adaptation
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Mutual labels: generative-adversarial-network, domain-adaptation
pytorch-domain-adaptationUnofficial pytorch implementation of algorithms for domain adaptation
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Mutual labels: generative-adversarial-network, domain-adaptation
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Mutual labels: generative-adversarial-network, domain-adaptation
pytorch-dannA PyTorch implementation for Unsupervised Domain Adaptation by Backpropagation
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Mutual labels: generative-adversarial-network, domain-adaptation
tfjs-ganSimple GAN example using tensorflow JS core
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Mutual labels: generative-adversarial-network
CartoonGAN-tensorflowSimple code implement the paper of CartoonGAN(CVPR2018)
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Mutual labels: generative-adversarial-network
ganslateSimple and extensible GAN image-to-image translation framework. Supports natural and medical images.
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Mutual labels: domain-adaptation
cmdCentral Moment Discrepancy for Domain-Invariant Representation Learning (ICLR 2017, keras)
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Mutual labels: domain-adaptation
DomainAdaptationDomain Adaptation
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Mutual labels: domain-adaptation
bert-AADAdversarial Adaptation with Distillation for BERT Unsupervised Domain Adaptation
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Mutual labels: domain-adaptation
transfer-learning-algorithmsImplementation of many transfer learning algorithms in Python with Jupyter notebooks
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Mutual labels: domain-adaptation
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Mutual labels: generative-adversarial-network
CS231nPyTorch/Tensorflow solutions for Stanford's CS231n: "CNNs for Visual Recognition"
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Mutual labels: generative-adversarial-network
BIFI[ICML 2021] Break-It-Fix-It: Unsupervised Learning for Program Repair
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Mutual labels: domain-adaptation
CWRCode and dataset for Single Underwater Image Restoration by Contrastive Learning, IGARSS 2021, oral.
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Mutual labels: generative-adversarial-network
chainer-ADDAAdversarial Discriminative Domain Adaptation in Chainer
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Mutual labels: domain-adaptation