2021
DOI: 10.48550/arxiv.2111.01673
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Relational Self-Attention: What's Missing in Attention for Video Understanding

Abstract: Convolution has been arguably the most important feature transform for modern neural networks, leading to the advance of deep learning. Recent emergence of Transformer networks, which replace convolution layers with self-attention blocks, has revealed the limitation of stationary convolution kernels and opened the door to the era of dynamic feature transforms. The existing dynamic transforms, including self-attention, however, are all limited for video understanding where correspondence relations in space and … Show more

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