Learning the RoPEs: Better 2D and 3D Position Encodings with STRING
Abstract
STRING extends Rotary Position Encodings with a theoretical framework for translationally invariant position encodings that maintain low computational costs and provide exact invariance for arbitrary dimensional token coordinates, particularly beneficial for robotics applications.
We introduce STRING: Separable Translationally Invariant Position Encodings. STRING extends Rotary Position Encodings, a recently proposed and widely used algorithm in large language models, via a unifying theoretical framework. Importantly, STRING still provides exact translation invariance, including token coordinates of arbitrary dimensionality, whilst maintaining a low computational footprint. These properties are especially important in robotics, where efficient 3D token representation is key. We integrate STRING into Vision Transformers with RGB(-D) inputs (color plus optional depth), showing substantial gains, e.g. in open-vocabulary object detection and for robotics controllers. We complement our experiments with a rigorous mathematical analysis, proving the universality of our methods.
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