IVCVNov 24, 2025

The Selective Disk Bispectrum and Its Inversion, with Application to Multi-Reference Alignment

arXiv:2511.19706v11 citations
Originality Incremental advance
AI Analysis

This provides a practical tool for computer vision and shape analysis tasks where object orientation is irrelevant, though it is incremental as it builds on existing bispectrum methods.

The authors tackled the problem of creating a rotation-invariant representation for images that is computationally efficient and invertible, resulting in the selective disk bispectrum which enables multi-reference alignment for rotated images, previously intractable.

In many computer vision and shape analysis tasks, practitioners are interested in learning from the shape of the object in an image, while disregarding the object's orientation. To this end, it is valuable to define a rotation-invariant representation of images, retaining all information about that image, but disregarding the way an object is rotated in the frame. To be practical for learning tasks, this representation must be computationally efficient for large datasets and invertible, so the representation can be visualized in image space. To this end, we present the selective disk bispectrum: a fast, rotation-invariant representation for image shape analysis. While the translational bispectrum has long been used as a translational invariant representation for 1-D and 2-D signals, its extension to 2-D (disk) rotational invariance on images has been hindered by the absence of an invertible formulation and its cubic complexity. In this work, we derive an explicit inverse for the disk bispectrum, which allows us to define a "selective" disk bispectrum, which only uses the minimal number of coefficients needed for faithful shape recovery. We show that this representation enables multi-reference alignment for rotated images-a task previously intractable for disk bispectrum methods. These results establish the disk bispectrum as a practical and theoretically grounded tool for learning on rotation-invariant shape data.

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