TL;DR
This paper introduces a topological encoding method for hyperdimensional computing that enhances robustness against image corruptions by extracting shape primitives and invariant descriptors, outperforming naive approaches.
Contribution
It proposes a novel topological shape encoding scheme that improves robustness of hyperdimensional computing to corruptions, with a lightweight online training process.
Findings
Significantly improves robustness to corruptions like rotation and noise.
Achieves competitive accuracy with CNNs on clean data.
Maintains high accuracy across multiple corruption types.
Abstract
Hyperdimensional (HD) computing offers an attractive alternative to deep networks for edge learning due to its simplicity, fast prototype-based inference, and compatibility with online updates. However, standard pixel-based HD encoders are brittle: small distribution shifts such as rotation, noise, or occlusion can drastically reduce accuracy. We extract discrete topological primitives-most notably holes-from binarized shapes and pair them with rotation/translation/scale (RTS)-invariant shape signatures. Our method constructs RTS-stable descriptors for (i) the outer shape using a spatial-pyramid variant of Zernike moments and (ii) each hole using an intrinsic Fourier descriptor of its radial signature together with RTS-canonical relative geometry. Each primitive is mapped to a bipolar hypervector via randomized projection and role binding, and variable-cardinality hole sets are…
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