OlĂĄ! Sou Valentin Khrulkov, pesquisador da equipe de Pesquisa Yandex. Frequentamos regularmente conferĂȘncias do setor e depois compartilhamos nossas impressĂ”es sobre HabrĂ©: qual dos palestrantes foi lembrado, quais estandes nĂŁo podiam ser ignorados, cujos pĂŽsteres chamaram mais atenção. 2020 fez ajustes significativos na programação usual: muitos eventos foram cancelados e remarcados, mas os organizadores de alguns deles arriscaram tentar novos formatos.
O CVPR 2020 tem 7600 participantes, 5025 trabalhos, eventos e interaçÔes, 1.497.800 minutos de discussÔes - e tudo online. Mais detalhes estão sob o corte.
Como era: planos x realidade
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Cross-Batch Memory for Embedding Learning:

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CNN-generated images are surprisingly easy to spot⊠for now:

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Learning Better Lossless Compression Using Lossy Compression: ,

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Image Processing Using Multi-Code GAN Prior:

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Effectively Unbiased FID and Inception Score and where to find them: GANs
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FDA: Fourier Domain Adaptation for Semantic Segmentation:

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Single-Image HDR Reconstruction by Learning to Reverse the Camera Pipeline:

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A Multigrid Method for Efficiently Training Video Models: tradeoff

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Towards Robust Image Classification Using Sequential Attention Models:

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Adversarial Vertex Mixup: Toward Better Adversarially Robust Generalization:

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High-Resolution Daytime Translation Without Domain Labels:

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