* Changed labels for demos and model downloader * Changed links to models and tools * Changed links to models and tools * Changed links to demos
Image Classification Python* Sample
This topic demonstrates how to run the Image Classification sample application, which performs inference using image classification networks such as AlexNet and GoogLeNet.
How It Works
Upon the start-up, the sample application reads command line parameters and loads a network and an image to the Inference Engine plugin. When inference is done, the application creates an output image and outputs data to the standard output stream.
Note
: 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.
Running
Run the application with the -h option yields the usage message:
python3 classification_sample.py -h
The command yields the following usage message:
usage: classification_sample.py [-h] -m MODEL -i INPUT [INPUT ...]
[-l CPU_EXTENSION]
[-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 file with a trained model.
-i INPUT [INPUT ...], --input INPUT [INPUT ...]
Required. Path to a folder with images or path to an
image files
-l CPU_EXTENSION, --cpu_extension CPU_EXTENSION
Optional. Required for CPU custom layers. MKLDNN (CPU)-targeted custom layers.
Absolute path to a shared library with the kernels
implementations.
-d DEVICE, --device DEVICE
Optional. Specify the target device to infer on; CPU,
GPU, FPGA, HDDL or MYRIAD 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
Running the application with the empty list of options yields the usage message given above.
To run the sample, you can use AlexNet and GoogLeNet or other image classification models. You can download [public](@ref omz_models_group_public) or [Intel's](@ref omz_models_group_intel) pre-trained models using the [Model Downloader](@ref omz_tools_downloader).
Note
: 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.
For example, to perform inference of an AlexNet model (previously converted to the Inference Engine format) on CPU, use the following command:
python3 classification_sample.py -i <path_to_image>/cat.bmp -m <path_to_model>/alexnet_fp32.xml
Sample Output
By default the application outputs top-10 inference results.
Add the -nt option to the previous command to modify the number of top output results.
For example, to get the top-5 results on GPU, run the following command:
python3 classification_sample.py -i <path_to_image>/cat.bmp -m <path_to_model>/alexnet_fp32.xml -nt 5 -d GPU
See Also
- Using Inference Engine Samples
- Model Optimizer tool
- [Model Downloader](@ref omz_tools_downloader)