Mateusz Tabaka d7db4974f3 Reduce number of ops needed to create InstanceNorm (#1896)
* Reduce number of ops needed to create InstanceNorm

InstanceNorm in onnx importer creates the same subgraph for Mean twice - once for Variance and once for actual Mean.
This change makes InstanceNorm to use single Mean which is shared by numerator and Variance.

Also enables IE_CPU.onnx_model_instance_normalization test case

* Revert changes to .gitignore
2020-08-24 12:26:15 +03:00
2020-08-12 13:17:34 +03:00
2020-07-20 17:36:08 +03:00
2020-07-17 15:07:58 +03:00
2020-05-19 19:04:27 +03:00
2018-10-16 13:45:03 +03:00
2020-08-07 15:33:11 +03:00

OpenVINO™ Toolkit - Deep Learning Deployment Toolkit repository

Stable release Apache License Version 2.0

This toolkit allows developers to deploy pre-trained deep learning models through a high-level C++ Inference Engine API integrated with application logic.

This open source version includes two components: namely Model Optimizer and Inference Engine, as well as CPU, GPU and heterogeneous plugins to accelerate deep learning inferencing on Intel® CPUs and Intel® Processor Graphics. It supports pre-trained models from the Open Model Zoo, along with 100+ open source and public models in popular formats such as Caffe*, TensorFlow*, MXNet* and ONNX*.

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