AI RESEARCH
Aligning Latent Geometry for Spherical Flow Matching in Image Generation
arXiv CS.CV
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ArXi:2605.15193v1 Announce Type: new Latent flow matching for image generation usually transports Gaussian noise to variational autoencoder latents along linear paths. Both endpoints, however, concentrate in thin spherical shells, and a Euclidean chord leaves those shells even when preprocessing aligns their radii. By decomposing each latent token into radial and angular components, we show through component-swap probes that decoded perceptual and semantic content is carried predominantly by direction, with radius contributing much less. We. therefore.