Implicit neural representations for larval zebrafish brain microscopy: a reproducible benchmark on the MapZebrain atlas

arXiv cs.CV / 3/31/2026

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Key Points

  • The paper introduces a reproducible implicit neural representation (INR) benchmark for the MapZebrain larval zebrafish brain atlas, targeting high-resolution microscopy tasks where neuropil boundaries and fine processes matter.
  • It evaluates seed-controlled INR encoders—SIREN, Fourier features, Haar positional encoding, and a multi-resolution grid—using 950 grayscale images with normalization and a deterministic 40% column-wise hold-out along the X-axis for spatial generalization.
  • Haar and Fourier features deliver the strongest reconstruction fidelity on held-out columns (about 26 dB) and also show better boundary preservation according to SSIM and edge-focused error metrics.
  • SIREN underperforms in macro-averaged reconstruction but can still be competitive in area-weighted micro averages in an all-in-one setting, suggesting different strengths across evaluation regimes.
  • The results recommend Haar and Fourier encodings for MapZebrain workflows involving boundary-sensitive applications like atlas registration and morphology-preserving label/morphology sharing, while positioning SIREN as a lightweight baseline for denoising/background modeling.

Abstract

Implicit neural representations (INRs) offer continuous coordinate-based encodings for atlas registration, cross-modality resampling, sparse-view completion, and compact sharing of neuroanatomical data. Yet reproducible evaluation is lacking for high-resolution larval zebrafish microscopy, where preserving neuropil boundaries and fine neuronal processes is critical. We present a reproducible INR benchmark for the MapZebrain larval zebrafish brain atlas. Using a unified, seed-controlled protocol, we compare SIREN, Fourier features, Haar positional encoding, and a multi-resolution grid on 950 grayscale microscopy images, including atlas slices and single-neuron projections. Images are normalized with per-image (1,99) percentiles estimated from 10% of pixels in non-held-out columns, and spatial generalization is tested with a deterministic 40% column-wise hold-out along the X-axis. Haar and Fourier achieve the strongest macro-averaged reconstruction fidelity on held-out columns (about 26 dB), while the grid is moderately behind. SIREN performs worse in macro averages but remains competitive on area-weighted micro averages in the all-in-one regime. SSIM and edge-focused error further show that Haar and Fourier preserve boundaries more accurately. These results indicate that explicit spectral and multiscale encodings better capture high-frequency neuroanatomical detail than smoother-bias alternatives. For MapZebrain workflows, Haar and Fourier are best suited to boundary-sensitive tasks such as atlas registration, label transfer, and morphology-preserving sharing, while SIREN remains a lightweight baseline for background modelling or denoising.