Voxel-wise Cross-Volume Representation Learning for 3D Neuron Reconstruction
Heng Wang, Chaoyi Zhang, Jianhui Yu, Yang Song, Siqi Liu, Wojciech, Chrzanowski, Weidong Cai

TL;DR
This paper introduces a voxel-level cross-volume representation learning method for 3D neuron reconstruction that leverages shared semantic features across different volumes, improving segmentation accuracy without extra inference costs.
Contribution
The proposed approach exploits intrinsic voxel features across volumes to enhance neuron segmentation, avoiding additional computational burden during inference.
Findings
Improved segmentation performance on BigNeuron dataset.
Enhanced reconstruction accuracy compared to baseline models.
No extra inference cost introduced by the method.
Abstract
Automatic 3D neuron reconstruction is critical for analysing the morphology and functionality of neurons in brain circuit activities. However, the performance of existing tracing algorithms is hinged by the low image quality. Recently, a series of deep learning based segmentation methods have been proposed to improve the quality of raw 3D optical image stacks by removing noises and restoring neuronal structures from low-contrast background. Due to the variety of neuron morphology and the lack of large neuron datasets, most of current neuron segmentation models rely on introducing complex and specially-designed submodules to a base architecture with the aim of encoding better feature representations. Though successful, extra burden would be put on computation during inference. Therefore, rather than modifying the base network, we shift our focus to the dataset itself. The encoder-decoder…
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Taxonomy
TopicsCell Image Analysis Techniques · Image Processing Techniques and Applications · Single-cell and spatial transcriptomics
