Object Detection C Sample SSD

This topic demonstrates how to run the Object Detection C sample application, which does inference using object detection networks like SSD-VGG on Intel® Processors and Intel® HD Graphics.

NOTE: This topic describes usage of C implementation of the Object Detection Sample SSD. For the C++* implementation, refer to Object Detection C++* Sample SSD and for the Python* implementation, refer to Object Detection Python* Sample SSD.

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 device. When inference is done, the application creates output images 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_channels argument specified. For more information about the argument, refer to When to Reverse Input Channels section of Converting a Model Using General Conversion Parameters.


Running the application with the -h option yields the following usage message:

./object_detection_sample_ssd_c -h
[ INFO ] InferenceEngine:
[ INFO ] Parsing input parameters
object_detection_sample_ssd_c [OPTION]
-h Print a usage message.
-i "<path>" Required. Path to an .bmp image.
-m "<path>" Required. Path to an .xml file with a trained model.
-l "<absolute_path>" Required for CPU custom layers. Absolute path to a shared library with the kernels implementations.
-c "<absolute_path>" Required for GPU custom kernels. Absolute path to the .xml file with the kernels descriptions.
-d "<device>" Optional. Specify the target device to infer on (the list of available devices is shown below). Default value is CPU. Use "-d HETERO:<comma-separated_devices_list>" format to specify HETERO plugin. Sample will look for a suitable plugin for device specified
-g Path to the configuration file. Default value: "config".

Running the application with the empty list of options yields the usage message given above and an error message.

To run the sample, you can use public or pre-trained models. To download the pre-trained models, use the OpenVINO Model Downloader or go to https://download.01.org/opencv/.

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.

For example, to do inference on a CPU with the OpenVINO™ toolkit person detection SSD models, run one of the following commands:

./object_detection_sample_ssd_c -i <path_to_image>/inputImage.bmp -m <path_to_model>person-detection-retail-0013.xml -d CPU


./object_detection_sample_ssd_c -i <path_to_image>/inputImage1.bmp <path_to_image>/inputImage2.bmp ... -m <path_to_model>person-detection-retail-0013.xml -d CPU


./object_detection_sample_ssd_c -i <path_to_image>/inputImage.jpg -m <path_to_model>person-detection-retail-0002.xml -d CPU

Sample Output

The application outputs several images (out_0.bmp, out_1.bmp, ... ) with detected objects enclosed in rectangles. It outputs the list of classes of the detected objects along with the respective confidence values and the coordinates of the rectangles to the standard output stream.

See Also