Single molecule localization microscopy challenge: a biologically inspired benchmark for long-sequence modeling
arXiv cs.LG / 3/13/2026
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Key Points
- The paper introduces the Single Molecule Localization Microscopy Challenge (SMLM-C), a new benchmark dataset with ten SMLM simulations spanning dSTORM and DNA-PAINT modalities to evaluate state space models on sparse, biologically realistic spatiotemporal data with ground truth.
- Using a controlled subset of simulations, the authors evaluate state space models and observe that performance degrades substantially as temporal discontinuity increases, highlighting challenges in modeling heavy-tailed blinking dynamics.
- The study demonstrates fundamental limitations of current sequence models for sparse, irregular temporal processes encountered in real-world scientific imaging data, motivating the development of more suitable architectures.
- SMLM-C provides a resource for future research in long-sequence modeling for biological imaging and serves as a testbed for comparing modeling approaches under realistic conditions.
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