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MALIS

This repository is not actively maintained anymore, consider switching to github.com/thouis/malis_large_volumes

Structured loss function for supervised learning of segmentation and clustering

Python and MATLAB wrapper for C++ functions for computing the MALIS loss

The MALIS loss is described here:

SC Turaga, KL Briggman, M Helmstaedter, W Denk, HS Seung (2009). Maximin learning of image segmentation. Advances in Neural Information Processing Systems (NIPS) 2009.

http://papers.nips.cc/paper/3887-maximin-affinity-learning-of-image-segmentation

Note that you have to have the c++ library boost installed (on ubuntu you can install it with "sudo apt-get install libboost-all-dev").

Usage

malis_mtetrics returns the elementwise malis cost, and the positive and negative pair counts. In order to get a scalar cost, you could just sum the malis_cost tensor. In order to to use more sophisticated loss functions, you also get access to the positive and negative counts directly.

import malis.theano_op as malis_theano_op
# let edge_var and gt_var be theano tensor variables and volume_shape be [D, W, H]
malis_cost, pos_pairs, neg_pairs = malis_theano_op.malis_metrics(volume_shape, edge_var, gt_var)

malis_metrics supports extensive options to modify the exact calculation of the malis cost. In order to view these options, see the docstring at malis/theano_op.py -> malis_metrics()

A good way to test whether everything works is to run tests/test_theano.py

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MALIS structured loss function for supervised learning of segmentation and clustering

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  • Python 86.8%
  • C++ 11.9%
  • C 1.2%
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