# Parallel AI fusion

Source: [https://docs.qualcomm.com/doc/80-70015-50/topic/gst-ai-parallel-inference.html](https://docs.qualcomm.com/doc/80-70015-50/topic/gst-ai-parallel-inference.html)

The **gst-ai-parallel-inference** application enables you to perform object
        detection, object classification, pose detection, and image segmentation on an input stream
        from different sources such as a camera, a file, or an RTSP network. The use cases use the
        Qualcomm Neural Processing SDK runtime for object detection and image segmentation, and
        TFLite runtime for classification and pose detection.

Note: This application is not supported on QCS9075.

The figure shows the pipeline, which takes the input from a camera, file, or an RTSP
            stream, performs the parallel inferencing for the four use cases, and display the
            results side by side on the screen.

For information on the plugins used in the pipeline flow, see [Pipeline flow](https://docs.qualcomm.com/doc/80-70015-50/topic/gst-ai-parallel-inference.html#gst-ai-parallel-inference__section_gcg_r3s_lbc).

Figure : gst-ai-parallel-inference pipeline
            
            ![](data:image/png;base64,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)

Learn how to enhance your development projects by performing the four parallel AI
            inferences on a live camera stream. This video shows the step-by-step procedure on how
            to set up the pipeline and display the results side by side.

<svg xmlns="http://www.w3.org/2000/svg" xmlns:xlink="http://www.w3.org/1999/xlink" viewbox="0 0 640 400" width="640" height="400" style="cursor:auto !important">
    <defs>
      <style>@import url("https://fonts.googleapis.com/css2?family=Roboto+Flex:opsz,wght@8..144,100..1000&display=swap");
.svg-1 .bg-fill { fill: var(--color-background) }
.svg-1 .fill-text { color: var(--color-content); fill: var(--color-content) }
.svg-1 .video-hoverbox { transition: opacity 0.15s ease-in-out }
.svg-1 .video-hoverbox:hover { opacity: 0.9 }</style>
  </defs>

  <foreignobject x="0" y="0" width="640" height="400">
    
        <iframe width="640" height="400" src="https://players.brightcove.net/1414329538001/BJv5wEFt_default/index.html?videoId=6355769124112" allowfullscreen="" allow="encrypted-media"></iframe>
    <div class="topic-detail"><div class="topic-updated-date"><span> Last Published: </span>Oct 27, 2025</div><div class="prev-and-next-links"><span class="previous-topic-link"><span aria-hidden="true" class="disabled" data-tip="" data-effect="solid"></span></span></div></div>
    </foreignobject>
</svg>

## Prerequisites

- To run the application, push the model and label files to the device. For
                    information on downloading the models, see the following:
    - [Download model and label files for Qualcomm Neural Processing SDK](https://docs.qualcomm.com/doc/80-70015-50/topic/ai-ml-sample-applications.html#ai-ml-sample-applications__section_chl_dgz_scc)
    - [Download model and label files for TFLite from AI Hub](https://docs.qualcomm.com/doc/80-70015-50/topic/ai-ml-sample-applications.html#ai-ml-sample-applications__section_fsl_lgz_scc)

    The application supports both the Qualcomm Neural Processing SDK and
                        TFLite models.
- To access your host device, enable SSH. For instructions, see [Use SSH](https://docs.qualcomm.com/bundle/publicresource/topics/80-70015-254/how_to.html#use-ssh).
- Enter the SSH shell and run the use cases:

        ssh root@<ip-addr of the target device>Copy to clipboard
- Enable the
                    display:

        export XDG_RUNTIME_DIR=/dev/socket/weston && export WAYLAND_DISPLAY=wayland-1Copy to clipboard
- Push the files from the host
                    machine:

        scp <filename> root@<IP address of target device>:/opt/Copy to clipboard

- Push the video.mp4 file to the opt
                    folder.

## Use cases

- Run the
                    application:

        gst-ai-parallel-inference [OPTION?]Copy to clipboard
- Display the help
                    options:

        gst-ai-parallel-inference -hCopy to clipboard

The table lists the model and the inferencing runtime application for each use
                case:

| Use case | Inferencing runtime | Model |
| --- | --- | --- |
| [Object detection](https://docs.qualcomm.com/doc/80-70015-50/topic/gst-ai-object-detection.html) | Qualcomm Neural Processing SDK inferencing | [YOLO-NAS](https://github.com/Deci-AI/super-gradients/blob/master/YOLONAS.md) |
| [Image segmentation](https://docs.qualcomm.com/doc/80-70015-50/topic/gst-ai-segmentation.html) | Qualcomm Neural Processing SDK inferencing | [DeepLab v3](https://pytorch.org/vision/stable/models/generated/torchvision.models.segmentation.deeplabv3_resnet50.html) |
| [Classification](https://docs.qualcomm.com/doc/80-70015-50/topic/gst-ai-classification.html) | TFLite inferencing | [Inception v3](https://aihub.qualcomm.com/iot/models/inception_v3_quantized?domain=Computer+Vision&amp;useCase=Image+Classification&amp;chipsets=QCS6490%22) |
| [Pose detection](https://docs.qualcomm.com/doc/80-70015-50/topic/gst-ai-pose-detection.html) | TFLite inferencing | [HRNetPose](https://aihub.qualcomm.com/iot/models/hrnet_pose_quantized?searchTerm=hrnet) |
|  |  |  |

Table : Parallel inferencing commands

| Source | Command |
| :--- | :--- |
| Camera | gst-ai-parallel-inference --camera=0Copy to clipboard |
| File | gst-ai-parallel-inference --file-path="/opt/video.mp4"Copy to clipboard |
| RTSP stream | gst-ai-parallel-inference --rtsp-ip-port="rtsp://<ip>:<port>/<stream>"Copy to clipboard |

To stop the use case, press CTRL + C.

## Expected output

After performing the four parallel inferences, the results are displayed side by side
                on the screen.

Figure : Expected output for gst-ai-parallel-inference application 
                
                ![](data:image/png;base64,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)

## Pipeline flow

The table lists the plugins used in the parallel inference pipeline:

| Plugin | Description |
| --- | --- |
| Camera source:[qtiqmmfsrc](https://docs.qualcomm.com/doc/80-70015-50/topic/qtiqmmfsrc.html) | <ul class="ul" id="gst-ai-parallel-inference__ul_zyl_gj1_mcc"><br>                                    <li class="li">Captures the live stream from camera.</li><br><br>                                    <li class="li">Uses tee to split the stream for inferencing.</li><br><br>                                </ul> |
| File source: filesrc | <ul class="ul" id="gst-ai-parallel-inference__ul_z1z_x4f_w1c"><br>                                    <li class="li">Captures the video stream using filesrc, followed by<br>                                        qtdemux, which demultiplexes the stream.</li><br><br>                                    <li class="li">Uses tee to split the stream for inferencing.</li><br><br>                                </ul> |
| RTSP source: rtspsrc | <ul class="ul" id="gst-ai-parallel-inference__ul_vsj_2r4_tbc"><br>                                    <li class="li">Captures the RTSP stream using rtspsrc, followed by<br>                                        rtph264depay for video extraction.</li><br><br>                                    <li class="li">Uses tee to split the stream for inferencing.</li><br><br>                                </ul> |
| h264parse | Parses the H.264 video. |
| [v4l2h264dec](https://docs.qualcomm.com/doc/80-70015-50/topic/v4l2h264dec.html) | Decodes the video |
| [qtimlvconverter](https://docs.qualcomm.com/doc/80-70015-50/topic/qtimlvconverter.html) | <ol class="ol" id="gst-ai-parallel-inference__ol_kgt_hnq_nbc"><br>                                    <li class="li">Receives the video stream on its sink pad.</li><br><br>                                    <li class="li">Performs the following preprocessing on the stream data.<br>                                        This preprocessing is done when the model expects<br>                                        floating-point values as input.<ol class="ol" type="a" id="gst-ai-parallel-inference__ol_drd_jnq_nbc"><br>                                            <li class="li">Color conversion</li><br><br>                                            <li class="li">Scaling (up or down)</li><br><br>                                            <li class="li">Normalization</li><br><br>                                        </ol><br></li><br><br>                                </ol><br><br>                                <br>The tensor stream is used for inferencing in the later stages of<br>                                    the pipeline. |
| [qtimlsnpe](https://docs.qualcomm.com/doc/80-70015-50/topic/qtimlsnpe.html) and [qtimltflite](https://docs.qualcomm.com/doc/80-70015-50/topic/qtimltflite.html) | **qtimlsnpe**: Acts as the ML inferencing plugin, which is<br>                                    used with the Qualcomm Neural Processing SDK runtime. It uses<br>                                    YOLO-NAS for object detection and DeepLab v3 for image<br>                                    segmentation.<br><br><br>                                <br>**qtimltflite**: Acts as an alternative option to qtimlsnpe.<br>                                    It runs on the TFLite runtime and uses the PoseNet model for<br>                                    pose detection and Inception v3 for classification.<br><ol class="ol" id="gst-ai-parallel-inference__ol_l2x_zjq_nbc"><br>                                    <li class="li">After the inference runtime receives the tensor stream on<br>                                        its sink pad, it runs the inference.</li><br><br>                                    <li class="li">Produces a tensor stream with the inference results on its<br>                                        source pad.</li><br><br>                                </ol> |
| Postprocessing plugins | Handles the inference results from any object detection,<br>                                classification, pose detection, and segmentation model.<ul class="ul" id="gst-ai-parallel-inference__ul_pgb_wpq_nbc"><br>                                    <li class="li"><a href="https://docs.qualcomm.com/doc/80-70015-50/topic/qtimlvdetection.html">qtimlvdetection</a><ol class="ol" id="gst-ai-parallel-inference__ol_ol3_dky_kbc"><br>                                            <li class="li">Applies a threshold to the chosen number of<br>                                                results.</li><br><br>                                            <li class="li">Loads the YOLO-NAS module. </li><br><br>                                            <li class="li">Produces video frames with only bounding boxes that<br>                                                can be overlaid on objects, sending them to the sink<br>                                                pad of the qtivcomposer.</li><br><br>                                        </ol><br></li><br><br>                                    <li class="li"><a href="https://docs.qualcomm.com/doc/80-70015-50/topic/qtimlvclassification.html">qtimlvclassification</a><ol class="ol" id="gst-ai-parallel-inference__ol_nt3_jqq_nbc"><br>                                            <li class="li">Applies the threshold to the chosen number of<br>                                                results. </li><br><br>                                            <li class="li">Loads the MobileNet module.</li><br><br>                                            <li class="li">Produces results as video frames with classification<br>                                                labels, sending them to the sink pad of the<br>                                                qtivcomposer.</li><br><br>                                        </ol><br></li><br><br>                                    <li class="li"><a href="https://docs.qualcomm.com/doc/80-70015-50/topic/qtimlvpose.html">qtimlvpose</a><ol class="ol" id="gst-ai-parallel-inference__ol_znf_mqq_nbc"><br>                                            <li class="li">Applies the threshold to the chosen number of<br>                                                results.</li><br><br>                                            <li class="li">Loads the corresponding modules for various pose<br>                                                estimation models. For the use cases described in<br>                                                this section, qtimlvpose loads the PoseNet module. </li><br><br>                                            <li class="li">Produces results as video frames with poses drawn,<br>                                                sending them to the sink pad of the<br>                                                qtivcomposer.</li><br><br>                                        </ol><br></li><br><br>                                    <li class="li"><a href="https://docs.qualcomm.com/doc/80-70015-50/topic/qtimlvsegmentation.html">qtimlvsegmentation</a>: Converts the<br>                                        inference tensors that it receives on its sink pad into<br>                                        video formats that the multimedia plugins for further<br>                                        processing.</li><br><br>                                </ul> |
| [qtivcomposer](https://docs.qualcomm.com/doc/80-70015-50/topic/qtivcomposer.html) | <ol class="ol" id="gst-ai-parallel-inference__ol_dmb_2vr_lbc"><br>                                    <li class="li">Composes frames with contents from its sink pads.</li><br><br>                                    <li class="li">Pushes the GStreamer buffers containing these composed<br>                                        frames to its source pad.</li><br><br>                                </ol> |
| [Waylandsink](https://docs.qualcomm.com/doc/80-70015-50/topic/waylandsink.html) | <ol class="ol" id="gst-ai-parallel-inference__ol_kjr_fvr_lbc"><br>                                    <li class="li">Waylandsink submits the video stream received on its sink<br>                                        pad to Weston.</li><br><br>                                    <li class="li">Weston renders the video stream on a local display.</li><br><br>                                </ol> |

## Known issues

Video streaming using the RTSP sink encounters a hang issue after running the use
                case for a few minutes.

**Parent Topic:** [AI/ML sample applications](https://docs.qualcomm.com/doc/80-70015-50/topic/ai-ml-sample-applications.html)

Last Published: Oct 27, 2025

[Previous Topic
Image segmentation](https://docs.qualcomm.com/bundle/publicresource/80-70015-50/topics/gst-ai-segmentation.md) [Next Topic
Multi-input AI inferencing](https://docs.qualcomm.com/bundle/publicresource/80-70015-50/topics/gst-ai-multi-input-output-object-detection.md)