* Edits to MO Per findings spreadsheet * macOS changes per issue spreadsheet * Fixes from review spreadsheet Mostly IE_DG fixes * Consistency changes * Make doc fixes from last round of review * Add GSG build-all details * Fix links to samples and demos pages * Make MO_DG v2 changes * Add image view step to classify demo * Put MO dependency with others * Edit docs per issues spreadsheet * Add file to pytorch_specific * More fixes per spreadsheet * Prototype sample page * Add build section * Update README.md * Batch download/convert by default * Add detail to How It Works * Minor change * Temporary restored topics * corrected layout * Resized * Added white background into the picture * fixed link to omz_tools_downloader * fixed title in the layout Co-authored-by: baychub <cbay@yahoo.com> Co-authored-by: baychub <31420038+baychub@users.noreply.github.com>
9.7 KiB
Image Classification Async Python* Sample
This sample demonstrates how to do inference of image classification networks using Asynchronous Inference Request API.
Models with only 1 input and output are supported.
The following Inference Engine Python API is used in the application:
| Feature | API | Description |
|---|---|---|
| Asynchronous Infer | InferRequest.async_infer, InferRequest.wait, Blob.buffer | Do asynchronous inference |
| Custom Extension Kernels | IECore.add_extension, IECore.set_config | Load extension library and config to the device |
Basic Inference Engine API is covered by Hello Classification Python* Sample.
| Options | Values |
|---|---|
| Validated Models | [alexnet](@ref omz_models_model_alexnet) |
| Model Format | Inference Engine Intermediate Representation (.xml + .bin), ONNX (.onnx) |
| Supported devices | All |
| Other language realization | C++ |
How It Works
At startup, the sample application reads command-line parameters, prepares input data, loads a specified model and image(s) to the Inference Engine plugin, performs synchronous inference, and processes output data, logging each step in a standard output stream.
You can see the explicit description of each sample step at Integration Steps section of "Integrate the Inference Engine with Your Application" guide.
Running
Run the application with the -h option to see the usage message:
python <path_to_sample>/classification_sample_async.py -h
Usage message:
usage: classification_sample_async.py [-h] -m MODEL -i INPUT [INPUT ...]
[-l EXTENSION] [-c CONFIG] [-d DEVICE]
[--labels LABELS] [-nt NUMBER_TOP]
Options:
-h, --help Show this help message and exit.
-m MODEL, --model MODEL
Required. Path to an .xml or .onnx file with a trained
model.
-i INPUT [INPUT ...], --input INPUT [INPUT ...]
Required. Path to an image file(s).
-l EXTENSION, --extension EXTENSION
Optional. Required by the CPU Plugin for executing the
custom operation on a CPU. Absolute path to a shared
library with the kernels implementations.
-c CONFIG, --config CONFIG
Optional. Required by GPU or VPU Plugins for the
custom operation kernel. Absolute path to operation
description file (.xml).
-d DEVICE, --device DEVICE
Optional. Specify the target device to infer on; CPU,
GPU, MYRIAD, HDDL or HETERO: is acceptable. The sample
will look for a suitable plugin for device specified.
Default value is CPU.
--labels LABELS Optional. Path to a labels mapping file.
-nt NUMBER_TOP, --number_top NUMBER_TOP
Optional. Number of top results.
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.
NOTES:
By default, Inference Engine samples and demos expect input with BGR channels order. If you trained your model to work with RGB order, you need to manually rearrange the default channels order in the sample or demo application or reconvert your model using the Model Optimizer tool with
--reverse_input_channelsargument specified. For more information about the argument, refer to When to Reverse Input Channels section of Converting a Model Using General Conversion Parameters.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
- Download a pre-trained model using [Model Downloader](@ref omz_tools_downloader):
python <path_to_omz_tools>/downloader.py --name alexnet
- 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
- Perform inference of
car.bmpandcat.jpgusingalexnetmodel on aGPU, for example:
python <path_to_sample>/classification_sample_async.py -m <path_to_model>/alexnet.xml -i <path_to_image>/car.bmp <path_to_image>/cat.jpg -d GPU
Sample Output
The sample application logs each step in a standard output stream and outputs top-10 inference results.
[ INFO ] Creating Inference Engine
[ INFO ] Reading the network: c:\openvino\deployment_tools\open_model_zoo\tools\downloader\public\alexnet\FP32\alexnet.xml
[ INFO ] Configuring input and output blobs
[ INFO ] Loading the model to the plugin
[ WARNING ] Image c:\images\car.bmp is resized from (637, 749) to (227, 227)
[ WARNING ] Image c:\images\cat.jpg is resized from (300, 300) to (227, 227)
[ INFO ] Starting inference in asynchronous mode
[ INFO ] Infer request 0 returned 0
[ INFO ] Image path: c:\images\car.bmp
[ INFO ] Top 10 results:
[ INFO ] classid probability
[ INFO ] -------------------
[ INFO ] 656 0.6645315
[ INFO ] 654 0.1121185
[ INFO ] 581 0.0698451
[ INFO ] 874 0.0334973
[ INFO ] 436 0.0259718
[ INFO ] 817 0.0173190
[ INFO ] 675 0.0109321
[ INFO ] 511 0.0109075
[ INFO ] 569 0.0083093
[ INFO ] 717 0.0063173
[ INFO ]
[ INFO ] Infer request 1 returned 0
[ INFO ] Image path: c:\images\cat.jpg
[ INFO ] Top 10 results:
[ INFO ] classid probability
[ INFO ] -------------------
[ INFO ] 876 0.1320105
[ INFO ] 435 0.1210389
[ INFO ] 285 0.0712640
[ INFO ] 282 0.0570528
[ INFO ] 281 0.0319335
[ INFO ] 999 0.0285931
[ INFO ] 94 0.0270323
[ INFO ] 36 0.0240510
[ INFO ] 335 0.0198461
[ INFO ] 186 0.0183939
[ INFO ]
[ INFO ] This sample is an API example, for any performance measurements please use the dedicated benchmark_app tool
See Also
- Integrate the Inference Engine with Your Application
- Using Inference Engine Samples
- [Model Downloader](@ref omz_tools_downloader)
- Model Optimizer