DSS-GAN: Directional State Space GAN with Mamba backbone for Class-Conditional Image Synthesis
arXiv cs.LG / 3/19/2026
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Key Points
- The paper introduces DSS-GAN, a GAN that uses a Mamba hierarchical generator backbone and a novel Directional Latent Routing (DLR) mechanism for noise-to-image synthesis.
- DLR decomposes the latent vector into direction-specific subvectors, each jointly projected with a class embedding to produce feature-wise affine modulation across the Mamba backbone.
- Unlike conventional global conditioning, DLR couples class identity and latent structure along distinct spatial axes of the feature map, consistently across all generative scales.
- DSS-GAN reports improved FID, KID, and precision-recall scores versus StyleGAN2-ADA across multiple datasets, with latent-space analysis showing directionally specialized, structured image changes.
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