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Main Authors: Sawmya, Shashata, Athey, Thomas L., Liu, Gwyneth, Shavit, Nir
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.06196
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author Sawmya, Shashata
Athey, Thomas L.
Liu, Gwyneth
Shavit, Nir
author_facet Sawmya, Shashata
Athey, Thomas L.
Liu, Gwyneth
Shavit, Nir
contents Training segmentation models from scratch has been the standard approach for new electron microscopy connectomics datasets. However, leveraging pretrained models from existing datasets could improve efficiency and performance in constrained annotation budget. In this study, we investigate domain adaptation in connectomics by analyzing six major datasets spanning different organisms. We show that, Maximum Mean Discrepancy (MMD) between neuron image distributions serves as a reliable indicator of transferability, and identifies the optimal source domain for transfer learning. Building on this, we introduce NeuroADDA, a method that combines optimal domain selection with source-free active learning to effectively adapt pretrained backbones to a new dataset. NeuroADDA consistently outperforms training from scratch across diverse datasets and fine-tuning sample sizes, with the largest gain observed at $n=4$ samples with a 25-67\% reduction in Variation of Information. Finally, we show that our analysis of distributional differences among neuron images from multiple species in a learned feature space reveals that these domain "distances" correlate with phylogenetic distance among those species.
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publishDate 2025
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spellingShingle NeuroADDA: Active Discriminative Domain Adaptation in Connectomic
Sawmya, Shashata
Athey, Thomas L.
Liu, Gwyneth
Shavit, Nir
Computer Vision and Pattern Recognition
Training segmentation models from scratch has been the standard approach for new electron microscopy connectomics datasets. However, leveraging pretrained models from existing datasets could improve efficiency and performance in constrained annotation budget. In this study, we investigate domain adaptation in connectomics by analyzing six major datasets spanning different organisms. We show that, Maximum Mean Discrepancy (MMD) between neuron image distributions serves as a reliable indicator of transferability, and identifies the optimal source domain for transfer learning. Building on this, we introduce NeuroADDA, a method that combines optimal domain selection with source-free active learning to effectively adapt pretrained backbones to a new dataset. NeuroADDA consistently outperforms training from scratch across diverse datasets and fine-tuning sample sizes, with the largest gain observed at $n=4$ samples with a 25-67\% reduction in Variation of Information. Finally, we show that our analysis of distributional differences among neuron images from multiple species in a learned feature space reveals that these domain "distances" correlate with phylogenetic distance among those species.
title NeuroADDA: Active Discriminative Domain Adaptation in Connectomic
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2503.06196