You can create a multi-object tracker to fuse information from radar and video camera sensors. The tracker uses Kalman filters that let you estimate the state of motion of a detected object. Use the sensor measurements made on a detected object to continuously solve for the position and velocity of that object. To track moving objects, you can use constant-velocity or constant-acceleration motion models, or you can define your own models.
Multi-Object Tracker | Create and manage tracks of multiple objects |
Multiple Object Tracking Tutorial
Perform automatic detection and motion-based tracking of moving objects in a video by using a multi-object tracker.
Estimate and predict object motion using a Linear Kalman filter.
Estimate and predict object motion using an extended Kalman filter.
Sensor Fusion Using Synthetic Radar and Vision Data
Generate a scenario, simulate sensor detections, and use sensor fusion to track simulated vehicles.
Sensor Fusion Using Synthetic Radar and Vision Data in Simulink
Implement a synthetic data simulation for tracking and sensor fusion in Simulink® with Automated Driving Toolbox™.
Code Generation for Tracking and Sensor Fusion
Generate C code for a MATLAB® function that processes data recorded from a test vehicle and tracks the objects around it.
Generate Code for a Track Fuser with Heterogeneous Source Tracks
Generate code for a track-level fusion algorithm where tracks originate from heterogeneous sources with different state definitions.