# Parallel AI fusion

Source: [https://docs.qualcomm.com/doc/80-70014-50/topic/gst-ai-parallel-inference.html](https://docs.qualcomm.com/doc/80-70014-50/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 a live camera
        stream. The use cases use Qualcomm Neural Processing SDK runtime for object detection and
        image segmentation, and TFLite runtime for classification and pose detection.

The figure shows the pipeline, which performs the parallel inferencing for the four use
            cases. For information on the plugins used in the pipeline flow, see [Pipeline flow](https://docs.qualcomm.com/doc/80-70014-50/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&amp;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">
    <body xmlns="http://www.w3.org/1999/xhtml">
        <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></body>
    </foreignobject>
</svg>

## Prerequisites

- Push the model and label files to the device to run the application. For more
                    information, see [Download the model and label files](https://docs.qualcomm.com/doc/80-70014-50/topic/ai-ml-sample-applications.html#ai-ml-sample-applications__prereq_v23_cxc_gbc).
- Enable SSH in Permissive mode to securely access your host device. For
                    instructions, see [How to SSH?](https://docs.qualcomm.com/bundle/publicresource/topics/80-70014-254/how_to.html#how-to-ssh-)
- Use the following command to enter the SSH shell and execute the use
                        cases:

        ssh root@<ip-addr of the target device>Copy to clipboard
- Run the following command to enable the Permissive
                    mode:

        setenforce 0Copy to clipboard
- Run the following command to enable the
                    display:

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

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

## Use cases

Use the following command to execute the application:

    gst-ai-parallel-inferenceCopy to clipboard

To display the available help options, run the following
                command:

    gst-ai-parallel-inference -hCopy to clipboard

To
                stop the use case, press CTRL + C.

The table lists the model and the inferencing runtime application for each use case.
                Click the respective link to add model and label files.

| Use case | Model |
| --- | --- |
| [Object detection](https://docs.qualcomm.com/doc/80-70014-50/topic/gst-ai-object-detection.html) | Qualcomm Neural Processing SDK inferencing – [YOLO-NAS](https://github.com/Deci-AI/super-gradients/blob/master/YOLONAS.md) model |
| [Classification](https://docs.qualcomm.com/doc/80-70014-50/topic/gst-ai-classification.html) | TFLite inferencing – [Inception v3](https://pytorch.org/hub/pytorch_vision_inception_v3/) model |
| [Pose detection](https://docs.qualcomm.com/doc/80-70014-50/topic/gst-ai-pose-detection.html) | TFLite inferencing – [PoseNet MobileNet v1](https://github.com/google-coral/project-posenet/tree/master) model |
| [Image segmentation](https://docs.qualcomm.com/doc/80-70014-50/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) model |

## 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 to execute the parallel inference
                    pipeline:| Plugin | Description |
| --- | --- |
| [qtiqmmfsrc](https://docs.qualcomm.com/doc/80-70014-50/topic/qtiqmmfsrc.html) | Captures the camera live stream and employs the tee to split the<br>                                stream for inferencing. |
| [qtimlvconverter](https://docs.qualcomm.com/doc/80-70014-50/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 is done when the model expects floating-point values as<br>                                            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/80-70014-50/topic/qtimlsnpe.html) and [qtimltflite](https://docs.qualcomm.com/doc/80-70014-50/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 executes 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/80-70014-50/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/80-70014-50/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/80-70014-50/topic/qtimlvpose.html">qtimlvpose</a></li><br><br>                                    <li class="li"><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><br>                                    </li><br><br>                                    <li class="li"><a href="https://docs.qualcomm.com/doc/80-70014-50/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/80-70014-50/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/80-70014-50/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> |

**Parent Topic:** [AI/ML sample applications](https://docs.qualcomm.com/doc/80-70014-50/topic/ai-ml-sample-applications.html)

Last Published: Oct 27, 2025

[Previous Topic
Image segmentation](https://docs.qualcomm.com/bundle/publicresource/80-70014-50/topics/gst-ai-segmentation.md) [Next Topic
Multi-input AI inferencing](https://docs.qualcomm.com/bundle/publicresource/80-70014-50/topics/gst-ai-multi-input-output-object-detection.md)