chainer-fcis - Chainer Implementation of Fully Convolutional Instance-aware Semantic Segmentation

  •        17

This is Chainer implementation of Fully Convolutional Instance-aware Semantic Segmentation. Original Mxnet repository is msracver/FCIS.

https://github.com/knorth55/chainer-fcis

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