Files
openvino/docs/IE_DG/Samples_Overview.md
Dmitry Pigasin b2abf25218 Python speech sample (#5322)
* Upload python speech sample draft

* Add function doc strings

* Add the ability to save results to a file

* Add a plugin configuration for GNA to get better accuracy

* Add errors calculation (comparison with a reference)

* Fix flake8 issues

* Add ability to run in hetero mode

* Add ability to load and save numpy format files (.npz)

* Add an error for wrong file extensions & update help message

* Add import and export GNA model options

* Add -we option to export embedded gna model

* Add readme

* Add -oname command line option (Layer names for output blobs)

* Add -iname command line option (Layer names for input blobs)

* Add info about -iname option to README.md

* doc: update readme, fix style

* Add a state reset between inferences

* add reset API to speech README

* doc: remove extra output from README

* remove onnx and TODO, format output

* Add an else branch to the if statement that checks a utterance data type

* Add dummy data for inference if a number of vectors < batch size

* Split the sample into separte files

Co-authored-by: Kate Generalova <kate.generalova@intel.com>
2021-06-01 12:48:02 +03:00

14 KiB
Raw Blame History

Inference Engine Samples

The Inference Engine sample applications are simple console applications that show how to utilize specific Inference Engine capabilities within an application, assist developers in executing specific tasks such as loading a model, running inference, querying specific device capabilities and etc.

After installation of Intel® Distribution of OpenVINO™ toolkit, С, C++ and Python* sample applications are available in the following directories, respectively:

  • <INSTALL_DIR>/inference_engine/samples/c
  • <INSTALL_DIR>/inference_engine/samples/cpp
  • <INSTALL_DIR>/inference_engine/samples/python

Inference Engine sample applications include the following:

Note

: All C++ samples support input paths containing only ASCII characters, except the Hello Classification Sample, that supports Unicode.

Media Files Available for Samples

To run the sample applications, you can use images and videos from the media files collection available at https://storage.openvinotoolkit.org/data/test_data.

Samples that Support Pre-Trained Models

To run the sample, you can use [public](@ref omz_models_group_public) or [Intel's](@ref omz_models_group_intel) pre-trained models from the Open Model Zoo. The models can be downloaded using the [Model Downloader](@ref omz_tools_downloader).

Build the Sample Applications

Build the Sample Applications on Linux*

The officially supported Linux* build environment is the following:

  • Ubuntu* 18.04 LTS 64-bit or CentOS* 7 64-bit
  • GCC* 7.5.0 (for Ubuntu* 18.04) or GCC* 4.8.5 (for CentOS* 7.6)
  • CMake* version 3.10 or higher

Note

: For building samples from the open-source version of OpenVINO™ toolkit, see the build instructions on GitHub.

To build the C or C++ sample applications for Linux, go to the <INSTALL_DIR>/inference_engine/samples/c or <INSTALL_DIR>/inference_engine/samples/cpp directory, respectively, and run the build_samples.sh script:

build_samples.sh

Once the build is completed, you can find sample binaries in the following folders:

  • C samples: ~/inference_engine_c_samples_build/intel64/Release
  • C++ samples: ~/inference_engine_cpp_samples_build/intel64/Release

You can also build the sample applications manually:

Note

: If you have installed the product as a root user, switch to root mode before you continue: sudo -i

  1. Navigate to a directory that you have write access to and create a samples build directory. This example uses a directory named build:
mkdir build

Note

: If you ran the Image Classification verification script during the installation, the C++ samples build directory was already created in your home directory: ~/inference_engine_samples_build/

  1. Go to the created directory:
cd build
  1. Run CMake to generate the Make files for release or debug configuration. For example, for C++ samples:
  • For release configuration:
cmake -DCMAKE_BUILD_TYPE=Release <INSTALL_DIR>/inference_engine/samples/cpp
  • For debug configuration:
cmake -DCMAKE_BUILD_TYPE=Debug <INSTALL_DIR>/inference_engine/samples/cpp
  1. Run make to build the samples:
make

For the release configuration, the sample application binaries are in <path_to_build_directory>/intel64/Release/; for the debug configuration — in <path_to_build_directory>/intel64/Debug/.

Build the Sample Applications on Microsoft Windows* OS

The recommended Windows* build environment is the following:

  • Microsoft Windows* 10
  • Microsoft Visual Studio* 2017, or 2019
  • CMake* version 3.10 or higher

Note

: If you want to use Microsoft Visual Studio 2019, you are required to install CMake 3.14.

To build the C or C++ sample applications on Windows, go to the <INSTALL_DIR>\inference_engine\samples\c or <INSTALL_DIR>\inference_engine\samples\cpp directory, respectively, and run the build_samples_msvc.bat batch file:

build_samples_msvc.bat

By default, the script automatically detects the highest Microsoft Visual Studio version installed on the machine and uses it to create and build a solution for a sample code. Optionally, you can also specify the preferred Microsoft Visual Studio version to be used by the script. Supported versions are VS2017 and VS2019. For example, to build the C++ samples using the Microsoft Visual Studio 2017, use the following command:

<INSTALL_DIR>\inference_engine\samples\cpp\build_samples_msvc.bat VS2017

Once the build is completed, you can find sample binaries in the following folders:

  • C samples: C:\Users\<user>\Documents\Intel\OpenVINO\inference_engine_c_samples_build\intel64\Release
  • C++ samples: C:\Users\<user>\Documents\Intel\OpenVINO\inference_engine_cpp_samples_build\intel64\Release

You can also build a generated solution manually. For example, if you want to build C++ sample binaries in Debug configuration, run the appropriate version of the Microsoft Visual Studio and open the generated solution file from the C:\Users\<user>\Documents\Intel\OpenVINO\inference_engine_cpp_samples_build\Samples.sln directory.

Build the Sample Applications on macOS*

The officially supported macOS* build environment is the following:

  • macOS* 10.15 64-bit
  • Clang* compiler from Xcode* 10.1 or higher
  • CMake* version 3.13 or higher

Note

: For building samples from the open-source version of OpenVINO™ toolkit, see the build instructions on GitHub.

To build the C or C++ sample applications for macOS, go to the <INSTALL_DIR>/inference_engine/samples/c or <INSTALL_DIR>/inference_engine/samples/cpp directory, respectively, and run the build_samples.sh script:

build_samples.sh

Once the build is completed, you can find sample binaries in the following folders:

  • C samples: ~/inference_engine_c_samples_build/intel64/Release
  • C++ samples: ~/inference_engine_cpp_samples_build/intel64/Release

You can also build the sample applications manually:

Note

: If you have installed the product as a root user, switch to root mode before you continue: sudo -i

Note

: Before proceeding, make sure you have OpenVINO™ environment set correctly. This can be done manually by

cd <INSTALL_DIR>/bin
source setupvars.sh
  1. Navigate to a directory that you have write access to and create a samples build directory. This example uses a directory named build:
mkdir build

Note

: If you ran the Image Classification verification script during the installation, the C++ samples build directory was already created in your home directory: ~/inference_engine_samples_build/

  1. Go to the created directory:
cd build
  1. Run CMake to generate the Make files for release or debug configuration. For example, for C++ samples:
  • For release configuration:
cmake -DCMAKE_BUILD_TYPE=Release <INSTALL_DIR>/inference_engine/samples/cpp
  • For debug configuration:
cmake -DCMAKE_BUILD_TYPE=Debug <INSTALL_DIR>/inference_engine/samples/cpp
  1. Run make to build the samples:
make

For the release configuration, the sample application binaries are in <path_to_build_directory>/intel64/Release/; for the debug configuration — in <path_to_build_directory>/intel64/Debug/.

Get Ready for Running the Sample Applications

Get Ready for Running the Sample Applications on Linux*

Before running compiled binary files, make sure your application can find the Inference Engine and OpenCV libraries. Run the setupvars script to set all necessary environment variables:

source <INSTALL_DIR>/bin/setupvars.sh

(Optional): The OpenVINO environment variables are removed when you close the shell. As an option, you can permanently set the environment variables as follows:

  1. Open the .bashrc file in <user_home_directory>:
vi <user_home_directory>/.bashrc
  1. Add this line to the end of the file:
source /opt/intel/openvino_2021/bin/setupvars.sh
  1. Save and close the file: press the Esc key, type :wq and press the Enter key.
  2. To test your change, open a new terminal. You will see [setupvars.sh] OpenVINO environment initialized.

You are ready to run sample applications. To learn about how to run a particular sample, read the sample documentation by clicking the sample name in the samples list above.

Get Ready for Running the Sample Applications on Windows*

Before running compiled binary files, make sure your application can find the Inference Engine and OpenCV libraries. Use the setupvars script, which sets all necessary environment variables:

<INSTALL_DIR>\bin\setupvars.bat

To debug or run the samples on Windows in Microsoft Visual Studio, make sure you have properly configured Debugging environment settings for the Debug and Release configurations. Set correct paths to the OpenCV libraries, and debug and release versions of the Inference Engine libraries. For example, for the Debug configuration, go to the project's Configuration Properties to the Debugging category and set the PATH variable in the Environment field to the following:

PATH=<INSTALL_DIR>\deployment_tools\inference_engine\bin\intel64\Debug;<INSTALL_DIR>\opencv\bin;%PATH%

where <INSTALL_DIR> is the directory in which the OpenVINO toolkit is installed.

You are ready to run sample applications. To learn about how to run a particular sample, read the sample documentation by clicking the sample name in the samples list above.

See Also