2023
DOI: 10.48550/arxiv.2303.00086
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Applying Plain Transformers to Real-World Point Clouds

Abstract: Due to the lack of inductive bias, transformer-based models usually require a large amount of training data. The problem is especially concerning in 3D vision, as 3D data are harder to acquire and annotate. To overcome this problem, previous works modify the architecture of transformers to incorporate inductive biases by applying, e.g., local attention and down-sampling. Although they have achieved promising results, earlier works on transformers for point clouds have two issues. First, the power of plain tran… Show more

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