- Haberl, Matthias G;
- Churas, Christopher;
- Tindall, Lucas;
- Boassa, Daniela;
- Phan, Sébastien;
- Bushong, Eric A;
- Madany, Matthew;
- Akay, Raffi;
- Deerinck, Thomas J;
- Peltier, Steven T;
- Ellisman, Mark H
As biomedical imaging datasets expand, deep neural networks are considered vital for image processing, yet community access is still limited by setting up complex computational environments and availability of high-performance computing resources. We address these bottlenecks with CDeep3M, a ready-to-use image segmentation solution employing a cloud-based deep convolutional neural network. We benchmark CDeep3M on large and complex two-dimensional and three-dimensional imaging datasets from light, X-ray, and electron microscopy.