# Object Tracking ## Object tracking types [gvatrack](../elements/gvatrack.md) is an object tracking element, typically inserted into a video analytics pipeline right after the object detection element [gvadetect](../elements/gvadetect.md) and can work in the following modes as specified by the *tracking-type* property: | tracking-type | Max detection interval (inference-interval property in gvadetect) | Algorithm uses detected coordinates and trajectory extrapolation | Algorithm uses image data | Notes | |----------------------|-------------------------------------------------------------------|------------------------------------------------------------------|---------------------------|---------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------| | short-term-imageless | <= 5 | Yes | No | Assigns a unique id to objects and generates object position for frames on which object detection was skipped.
Fast algorithm that extrapolates object trajectory from previous frame(s) without access to image data. | | zero-term | 1 (every frame) | Yes | Yes | Assigns a unique id to objects, and requires object detection run on every frame.
Takes into account object trajectory as well as a color histogram of object image data. | | zero-term-imageless | 1 (every frame) | Yes | No | Assigns a unique id to objects, and requires object detection run on every frame.
Fastest algorithm as based on comparing object coordinates on current frame with objects trajectory on previous frames. | ## Additional configuration Additional configuration parameters for object tracker can be passed via the `config` property of [gvatrack](../elements/gvatrack.md). The `config` property accepts a comma separated list of `KEY=VALUE` parameters. The supported parameters are described below: ### Tracking per class Configurable via `tracking_per_class` parameter. It specifies whether the class label is considered for updating the `object_id` of an object or not. When set to `true`, a new tracking ID will be assigned to an object when the class label changes. When set to `false`, the tracking ID will be retained, based on the position of the bounding box, even if the class label of the object changes due to model inaccuracy. The default value is `true`. Example: ```bash ... gvatrack config=tracking_per_class=false ... ``` ### Maximum number of objects Configurable via `max_num_objects` parameter. It specifies the maximum number of objects that the object tracker will track. On devices with less computing power, tracking a smaller number of objects can reduce compute and increase throughput. Example: ```bash ... gvatrack config=max_num_objects=20 ... ``` ## Sample Refer to the [vehicle_pedestrian_tracking](https://github.com/open-edge-platform/edge-ai-libraries/tree/release-1.2.0/libraries/dl-streamer/samples/gstreamer/gst_launch/vehicle_pedestrian_tracking) sample for a pipeline with `gvadetect`, `gvatrack`, and `gvaclassify` elements. ## How to read object unique id The following code example iterates all objects detected or tracked on the current frame and prints object unique id and bounding box coordinates. ```cpp #include "video_frame.h" void PrintObjects(GstBuffer *buffer) { GVA::VideoFrame video_frame(buffer); std::vector regions = video_frame.regions(); for (GVA::RegionOfInterest &roi : regions) { // iterate objects int object_id = roi.object_id(); // get unique object id auto bbox = roi.rect(); // get bounding box information std::cout << "Object id=" << object_id << ", bounding box: " << bbox.x << "," << bbox.y << "," << bbox.w << "," << bbox.h << "," << std::endl; } } ``` ## Performance considerations Object tracking can help improve performance of both object detection `(`gvadetect`) and object classification (`gvaclassify`) elements - Object detection: *short-term-imageless* tracking types enable reducing object detection frequency by setting the `inference-interval` property in the `gvadetect` element. - Object classification: if an object was classified by `gvaclassify` on frame N, you can skip classification of the same object for several next frames N+1,N+2,... and reuse last classification result from frame N. Reclassification interval is controlled by the `reclassify-interval` property in the `gvaclassify` element. See the sample pipeline below: ```bash gst-launch-1.0 \ ... ! \ decodebin3 ! \ gvadetect model=$DETECTION_MODEL inference-interval=10 ! \ gvatrack tracking-type=short-term-imageless ! \ gvaclassify model=$AGE_GENDER_MODEL reclassify-interval=30 ! \ gvaclassify model=$EMOTION_MODEL reclassify-interval=15 ! \ gvaclassify model=$LANDMARKS_MODEL ! \ ... ``` It detects faces every 10th frame and tracks faces position for the next 9 frames. The age and gender classification is updated every second, the emotion classification is updated twice a second, and the landmark points are updated every frame.