# Object detection and display with LiteRT

Source: [https://docs.qualcomm.com/doc/80-70018-50/topic/single-camera-stream-with-object-detection-and-display.html](https://docs.qualcomm.com/doc/80-70018-50/topic/single-camera-stream-with-object-detection-and-display.html)

The use cases use a YOLOv5 LiteRT model to identify the object in a scene. The use
        case is to either overlay or compose the bounding boxes over the detected objects, and then
        display the results.

## Use qtivoverlay plugin to apply bounding box overlay

Run the use case:

    gst-launch-1.0 -e --gst-debug=2 qtiqmmfsrc name=camsrc ! video/x-raw,format=NV12_Q08C,width=1280,height=720,framerate=30/1 ! \
    queue ! tee name=split split. ! queue ! qtimetamux name=metamux ! queue ! qtivoverlay ! queue ! waylandsink fullscreen=true split. ! queue ! \
    qtimlvconverter ! queue ! qtimltflite delegate=external external-delegate-path=libQnnTFLiteDelegate.so \
    external-delegate-options="QNNExternalDelegate,backend_type=htp;" model=/etc/models/yolov5.tflite ! queue ! \
    qtimlvdetection threshold=75.0 results=10 module=yolov5 labels=/etc/labels/yolov5.labels \
    constants="YoloV5,q-offsets=<3.0>,q-scales=<0.005047998391091824>;" ! text/x-raw ! queue ! metamux.Copy to clipboard

To stop the use case,  use CTRL + C.

Figure : Pipeline for bounding box overlay
                
                ![](data:image/png;base64,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)

The figure shows the flow of the use case execution:

1. Identifies object scenes in the scene from a video stream, which is coming
                    through a camera source.
2. Overlays bounding boxes over the detected objects using overlaylib.
3. Displays the results.

The table provides the sequential processing stages of the pipeline execution:

Table : Pipeline processing stages for bounding box overlay

| Process | Description |
| --- | --- |
| qtiqmmfsrc | <ol class="ol" id="single-camera-stream-with-object-detection-and-display__ol_l2f_zgm_vbc"><br>                                    <li class="li">Collects the video stream (source) and creates two copies of<br>                                        the source:<ul class="ul" id="single-camera-stream-with-object-detection-and-display__ol_m2f_zgm_vbc"><br>                                            <li class="li">One stream is sent to <a title="The qtimetamux plugin uses frame matching techniques to associate or attach ML string based postprocessing results (output from the postprocessing plugin) or CV information to original frame such as GstMeta." class="xref cursorpointer" onclick="Window.BookmapComponent.navigateFile('qtimetamux.html')">qtimetamux</a><br>                                                plugin to retain the video stream.</li><br><br>                                            <li class="li">The other stream is sent to an ML inferencing<br>                                                pipeline.</li><br><br>                                        </ul><br></li><br><br>                                </ol> |
| **Preprocessing** |
| qtimlvconverter | <ol class="ol" id="single-camera-stream-with-object-detection-and-display__ol_xsf_q5l_vbc"><br>                                    <li class="li">Receives the video stream on its sink pad.</li><br><br>                                    <li class="li">Performs preprocessing:<ul class="ul" id="single-camera-stream-with-object-detection-and-display__ul_ff2_twl_vbc"><br>                                            <li class="li">Color conversion</li><br><br>                                            <li class="li">Scaling down/up</li><br><br>                                            <li class="li">Normalization on the stream data when the model<br>                                                expects the floating point values as input</li><br><br>                                        </ul><br></li><br><br>                                    <li class="li">Converts the video stream to a tensor stream on its source<br>                                            pad.<p class="p">The object detection model uses this tensor<br>                                            stream for inferencing.</p><br></li><br><br>                                </ol> |
| **Inferencing** |
| qtimltflite | <ol class="ol" id="single-camera-stream-with-object-detection-and-display__ol_ufn_2lm_vbc"><br>                                    <li class="li">Loads the object detection model.</li><br><br>                                    <li class="li">Modifies the graph for the chosen delegate.</li><br><br>                                    <li class="li">Receives the tensor stream on its sinkpad.</li><br><br>                                    <li class="li">Runs the inference and produces a tensor stream with the<br>                                        object detection results on its source pad.</li><br><br>                                </ol> |
| **Postprocessing** |
| qtimlvdetection | <ol class="ol"><br>                                    <li class="li"> Receives the inference tensors from object detection. </li><br><br>                                    <li class="li">Converts the inference tensors on its sinkpad into formats<br>                                        like video or text that the multimedia plugins can process<br>                                        later.</li><br><br>                                    <li class="li">Applies the threshold to the chosen number of results. </li><br><br>                                    <li class="li">Loads the corresponding modules for detection models. <p class="p">In<br>                                            this use case, qtimlvdetection does the following:<br>                                            </p><ol class="ol" type="a" id="single-camera-stream-with-object-detection-and-display__ol_jcd_wnk_5bc"><br>                                            <li class="li">Loads the YOLOv5 submodule. </li><br><br>                                            <li class="li">Produces results as structures of text.</li><br><br>                                            <li class="li">Sends them to the sinkpad of qtimetamux.</li><br><br>                                        </ol><br></li><br><br>                                </ol> |
| qtimetamux | <ol class="ol" id="single-camera-stream-with-object-detection-and-display__ol_ll3_x5l_vbc"><br>                                    <li class="li">Receives video stream and text stream with bounding box<br>                                        results corresponding to the video stream on its<br>                                        sinkpads.</li><br><br>                                    <li class="li">Produces GST buffers with contents of video stream from its<br>                                        sink pad.</li><br><br>                                    <li class="li">Adds bounding boxes as GstVideoRegionOfInterest from data<br>                                        sinkpad to GST buffers meta (meta muxing) on its source<br>                                        pad.</li><br><br>                                </ol> |
| qtivoverlay | <ol class="ol" id="single-camera-stream-with-object-detection-and-display__ol_wst_y5l_vbc"><br>                                    <li class="li">Receives the multiplexed stream.</li><br><br>                                    <li class="li">Overlays the bounding boxes on the VideoFrame using CL. </li><br><br>                                    <li class="li">Produces GST buffers with overlays in its source pad.</li><br><br>                                </ol> |
| **Output** |
| Waylandsink | <ol class="ol" id="single-camera-stream-with-object-detection-and-display__ol_dyv_1lm_vbc"><br>                                    <li class="li">Receives the video stream on its sinkpad.</li><br><br>                                    <li class="li">Submits the video stream to Weston. </li><br><br>                                    <li class="li">Weston renders the video stream and bounding boxes generated<br>                                        for the objects in that scene on a local display<br>                                        device.</li><br><br>                                </ol> |

## Use qtivcomposer to mix original frame with bounding box mask

Run the use
                case:

    gst-launch-1.0 -e --gst-debug=2 qtiqmmfsrc name=camsrc ! video/x-raw,format=NV12_Q08C,width=1280,height=720,framerate=30/1 ! queue ! tee name=split split. ! \
    queue ! qtivcomposer name=mixer sink_1::dimensions="<1920,1080>" ! queue ! waylandsink fullscreen=true split. ! queue ! qtimlvconverter ! queue ! \
    qtimltflite delegate=external external-delegate-path=libQnnTFLiteDelegate.so external-delegate-options="QNNExternalDelegate,backend_type=htp;" \
    model=/etc/models/yolov5.tflite ! queue ! qtimlvdetection threshold=75.0 results=10 module=yolov5 labels=/etc/labels/yolov5.labels \
    constants="YoloV5,q-offsets=<3.0>,q-scales=<0.005047998391091824>;" ! video/x-raw,format=BGRA,width=640,height=360 ! queue ! mixer.Copy to clipboard

To stop the use case,  use CTRL + C.

Figure : Pipeline for bounding box mask with qtivcomposer
                
                ![](data:image/png;base64,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)

The figure shows the flow of the use case execution:

1. Identifies object scenes in the scene from a video stream, which is coming
                    through a camera source.
2. Composes the following using qtivcomposer:
    1. Bounding boxes over objects detected.
    2. Original video stream.
3. Displays the results.

The table provides the sequential processing stages of the pipeline execution:

Table : Pipeline processing stages for bounding box mask with qtivcomposer

| Process | Description |
| --- | --- |
| qtiqmmfsrc | <ol class="ol" id="single-camera-stream-with-object-detection-and-display__ol_z2v_xlm_vbc"><br>                                    <li class="li">Collects the video stream (source) and creates two copies of<br>                                        the source:<ul class="ul" id="single-camera-stream-with-object-detection-and-display__ol_afv_xlm_vbc"><br>                                            <li class="li">One stream is sent to qtivcomposer plugin to retain<br>                                                the video stream.</li><br><br>                                            <li class="li">The other stream is sent to a ML inferencing<br>                                                pipeline.</li><br><br>                                        </ul><br></li><br><br>                                </ol> |
| **Preprocessing** |
| qtimlvconverter | <ol class="ol" id="single-camera-stream-with-object-detection-and-display__ol_bfv_xlm_vbc"><br>                                    <li class="li">Receives the video stream on its sink pad.</li><br><br>                                    <li class="li">Performs preprocessing:<ul class="ul" id="single-camera-stream-with-object-detection-and-display__ul_cfv_xlm_vbc"><br>                                            <li class="li">Color conversion</li><br><br>                                            <li class="li">Scaling down/up</li><br><br>                                            <li class="li">Normalization on the stream data when the model<br>                                                expects the floating point values as input</li><br><br>                                        </ul><br></li><br><br>                                    <li class="li">Converts the video stream to a tensor stream on its source<br>                                            pad.<p class="p">The object detection model uses this tensor<br>                                            stream for inferencing.</p><br></li><br><br>                                </ol> |
| **Inferencing** |
| qtimltflite | <ol class="ol" id="single-camera-stream-with-object-detection-and-display__ol_dfv_xlm_vbc"><br>                                    <li class="li">Loads the object detection model.</li><br><br>                                    <li class="li">Modifies the graph for the chosen delegate.</li><br><br>                                    <li class="li">Receives the tensor stream on its sinkpad.</li><br><br>                                    <li class="li">Runs the inference and produces a tensor stream with the<br>                                        object detection results on its source pad.</li><br><br>                                </ol> |
| **Postprocessing** |
| qtimlvdetection | <ol class="ol" id="single-camera-stream-with-object-detection-and-display__ol_efv_xlm_vbc"><br>                                    <li class="li"> Receives the inference tensors from the object detection<br>                                        model. </li><br><br>                                    <li class="li">Converts the inference tensors on its sinkpad into formats<br>                                        like video or text that the multimedia plugins can process<br>                                        later.</li><br><br>                                    <li class="li">Applies the threshold to the chosen number of results. </li><br><br>                                    <li class="li">Loads the corresponding modules for detection models. <p class="p">In<br>                                            this use case, qtimlvdetection does the following:<br>                                            </p><ol class="ol" type="a" id="single-camera-stream-with-object-detection-and-display__ol_ffv_xlm_vbc"><br>                                            <li class="li">Loads the YOLOv5 submodule. </li><br><br>                                            <li class="li">Produces video frames with only bounding boxes that<br>                                                can be overlaid on objects.</li><br><br>                                            <li class="li">Sends them to the sinkpad of qtivcomposer.</li><br><br>                                        </ol><br></li><br><br>                                </ol> |
| qtivcomposer | <ol class="ol"><br>                                    <li class="li">Receives the original video stream and video stream with<br>                                        bounding boxes on its sinkpads.</li><br><br>                                    <li class="li">On its sourcepads, produces content that's composed of the<br>                                        video streams processed from its sinkpads.</li><br><br>                                </ol> |
| **Output** |
| Waylandsink | <ol class="ol" id="single-camera-stream-with-object-detection-and-display__ol_ifv_xlm_vbc"><br>                                    <li class="li">Receives the video stream on its sinkpad.</li><br><br>                                    <li class="li">Submits the video stream to Weston. </li><br><br>                                    <li class="li">Weston displays the following on a local display device:<ol class="ol" type="a" id="single-camera-stream-with-object-detection-and-display__ol_nv1_xzm_vbc"><br>                                            <li class="li">The video stream is captured from the camera.</li><br><br>                                            <li class="li">The bounding boxes are drawn over the allowed number<br>                                                of objects identified in that scene.</li><br><br>                                        </ol><br></li><br><br>                                </ol> |

**Parent Topic:** LiteRT use cases

Last Published: Jan 30, 2026

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