HyperTopo-Adapters: Geometry- and Topology-Aware Segmentation of Leaf Lesions on Frozen Encoders
Chimdi Walter Ndubuisi, Toni Kazic

TL;DR
This paper introduces HyperTopo-Adapters, a geometry- and topology-aware segmentation method for leaf lesions that embeds features on a product manifold to better capture biologically meaningful structures, improving topology metrics.
Contribution
It presents a lightweight, parameter-efficient head trained on frozen encoders that incorporates hyperbolic, Euclidean, and spherical embeddings with topology priors for improved lesion segmentation.
Findings
Improved boundary and topology metrics, reducing hole errors by 9%
Competitive Dice/IoU scores on leaf-lesion dataset
Open-source code for reproducibility and further research
Abstract
Leaf-lesion segmentation is topology-sensitive: small merges, splits, or false holes can be biologically meaningful descriptors of biochemical pathways, yet they are weakly penalized by standard pixel-wise losses in Euclidean latents. I explore HyperTopo-Adapters, a lightweight, parameter-efficient head trained on top of a frozen vision encoder, which embeds features on a product manifold -- hyperbolic + Euclidean + spherical (H + E + S) -- to encourage hierarchical separation (H), local linear detail (E), and global closure (S). A topology prior complements Dice/BCE in two forms: (i) persistent-homology (PH) distance for evaluation and selection, and (ii) a differentiable surrogate that combines a soft Euler-characteristic match with total variation regularization for stable training. I introduce warm-ups for both the hyperbolic contrastive term and the topology prior, per-sample…
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Taxonomy
TopicsTopological and Geometric Data Analysis · Advanced Neural Network Applications · Smart Agriculture and AI
