cn24 - Convolutional (Patch) Networks for Semantic Segmentation

  •        6

CN24 is a complete semantic segmentation framework using fully convolutional networks. It supports a wide variety of platforms (Linux, Mac OS X and Windows) and libraries (OpenCL, Intel MKL, AMD ACML...) while providing dependency-free reference implementations. The software is developed in the Computer Vision Group at the University of Jena. The repository contains pre-trained networks for these two applications, which are ready to use.

https://github.com/cvjena/cn24

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