Conference

Debiased Visual Question Answering from Feature and Sample Perspectives

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Landmark-RxR: Solving Vision-and-Language Navigation with Fine-Grained Alignment Supervision

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Neighbor-view Enhanced Model for Vision and Language Navigation

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R-GAN: Exploring Human-like Way for Reasonable Text-to-Image Sythesis via Generative Adversarial Networks

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The Road to Know-Where: An Object-and-Room Informed Sequential BERT for Indoor Vision-Language Navigation

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CogTree: Cognition Tree Loss for Unbiased Scene Graph Generation

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Proposal-free One-stage Referring Expression via Grid-Word Cross-Attention

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The Road to Know-Where: An Object-and-Room Informed Sequential BERT for Indoor Vision-Language Navigation

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A Recurrent Vision-and-Language BERT for Navigation

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Jo-SRC: A Contrastive Approach for Combating Noisy Labels

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