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openvino/samples/cpp/hello_nv12_input_classification
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Co-authored-by: azaytsev <andrey.zaytsev@intel.com>
2022-01-27 19:39:49 +03:00
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2022-01-27 19:39:49 +03:00

Hello NV12 Input Classification C++ Sample

This sample demonstrates how to execute an inference of image classification networks like AlexNet with images in NV12 color format using Synchronous Inference Request API and input reshape feature.

Hello NV12 Input Classification C++ Sample demonstrates how to use the NV12 automatic input pre-processing API of the Inference Engine in your applications:

Feature API Description
OpenVINO Runtime Core Operations ov::Core::get_metric Gets general runtime metric for dedicated hardware
Tensor Operations ov::Tensor::get_element_type, ov::Tensor::get_shape, ov::Tensor::data Work with storing inputs, outputs of the model, weights and biases of the layers
Input in N12 color format ov::preprocess::InputTensorInfo::set_color_format Change the color format of the input data
Model Input Reshape ov::Model::get_output_shape, ov::Model::reshape, ov::get_batch Set the batch size equal to the number of input images

Basic Inference Engine API is covered by Hello Classification C++ sample.

Options Values
Validated Models [alexnet](@ref omz_models_model_alexnet)
Model Format Inference Engine Intermediate Representation (*.xml + *.bin), ONNX (*.onnx)
Validated images An uncompressed image in the NV12 color format - *.yuv
Supported devices All
Other language realization C

How It Works

Upon the start-up, the sample application reads command-line parameters, loads specified network and an image in the NV12 color format to an Inference Engine plugin. Then, the sample creates an synchronous inference request object. When inference is done, the application outputs data to the standard output stream. You can place labels in .labels file near the model to get pretty output.

You can see the explicit description of each sample step at Integration Steps section of "Integrate the Inference Engine with Your Application" guide.

Building

To build the sample, please use instructions available at Build the Sample Applications section in Inference Engine Samples guide.

Running

To run the sample, you need specify a model and image:

  • 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).
  • you can use images from the media files collection available at https://storage.openvinotoolkit.org/data/test_data.

The sample accepts an uncompressed image in the NV12 color format. To run the sample, you need to convert your BGR/RGB image to NV12. To do this, you can use one of the widely available tools such as FFmpeg* or GStreamer*. The following command shows how to convert an ordinary image into an uncompressed NV12 image using FFmpeg:

ffmpeg -i cat.jpg -pix_fmt nv12 cat.yuv

NOTES:

  • Because the sample reads raw image files, you should provide a correct image size along with the image path. The sample expects the logical size of the image, not the buffer size. For example, for 640x480 BGR/RGB image the corresponding NV12 logical image size is also 640x480, whereas the buffer size is 640x720.

  • By default, this sample expects that network input has BGR channels order. If you trained your model to work with RGB order, you need to reconvert your model using the Model Optimizer tool with --reverse_input_channels argument specified. For more information about the argument, refer to When to Reverse Input Channels section of Converting a Model.

  • Before running the sample with a trained model, make sure the model is converted to the Inference Engine format (*.xml + *.bin) using the Model Optimizer tool.

  • The sample accepts models in ONNX format (.onnx) that do not require preprocessing.

Example

  1. Download a pre-trained model using [Model Downloader](@ref omz_tools_downloader):
python <path_to_omz_tools>/downloader.py --name alexnet
  1. If a model is not in the Inference Engine IR or ONNX format, it must be converted. You can do this using the model converter script:
python <path_to_omz_tools>/converter.py --name alexnet
  1. Perform inference of NV12 image using alexnet model on a CPU, for example:
<path_to_sample>/hello_nv12_input_classification <path_to_model>/alexnet.xml <path_to_image>/cat.yuv 300x300 CPU

Sample Output

The application outputs top-10 inference results.

[ INFO ] Files were added: 1
[ INFO ]     ./cat.yuv
Batch size is 1

Top 10 results:

Image ./cat.yuv

classid probability
------- -----------
435     0.0917327  
876     0.0817254  
999     0.0693054  
587     0.0437265  
666     0.0389570  
419     0.0328923  
285     0.0303094  
700     0.0299405  
696     0.0216280  
855     0.0203389  

This sample is an API example, for any performance measurements please use the dedicated benchmark_app tool

See Also