RhoanaNet Pipeline: Dense Automatic Neural Annotation
Seymour Knowles-Barley, Verena Kaynig, Thouis Ray Jones, Alyssa, Wilson, Joshua Morgan, Dongil Lee, Daniel Berger, Narayanan Kasthuri, Jeff W., Lichtman, Hanspeter Pfister

TL;DR
The paper introduces RhoanaNet, an automated pipeline for segmenting electron microscopy images to facilitate connectome reconstruction, demonstrating high accuracy on multiple brain datasets and providing open source tools and data.
Contribution
It presents an improved, open source EM segmentation pipeline using deep learning and agglomeration techniques, with benchmark datasets and results.
Findings
Achieved high F-score segmentation results on four brain datasets.
Enhanced throughput and segmentation quality over previous methods.
Provided open access to data and software for community use.
Abstract
Reconstructing a synaptic wiring diagram, or connectome, from electron microscopy (EM) images of brain tissue currently requires many hours of manual annotation or proofreading (Kasthuri and Lichtman, 2010; Lichtman and Sanes, 2008; Seung, 2009). The desire to reconstruct ever larger and more complex networks has pushed the collection of ever larger EM datasets. A cubic millimeter of raw imaging data would take up 1 PB of storage and present an annotation project that would be impractical without relying heavily on automatic segmentation methods. The RhoanaNet image processing pipeline was developed to automatically segment large volumes of EM data and ease the burden of manual proofreading and annotation. Based on (Kaynig et al., 2015), we updated every stage of the software pipeline to provide better throughput performance and higher quality segmentation results. We used state of the…
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Taxonomy
TopicsAdvanced Neural Network Applications · Anomaly Detection Techniques and Applications · Neural Networks and Applications
