Abstract:
This paper presents a Real-Time Bird's Eye View Multi Object Tracking (MOT) system pipeline for an Autonomous Electric car, based on Fast Encoders for object detection an...Show MoreMetadata
Abstract:
This paper presents a Real-Time Bird's Eye View Multi Object Tracking (MOT) system pipeline for an Autonomous Electric car, based on Fast Encoders for object detection and a combination of Hungarian algorithm and Bird's Eye View (BEV) Kalman Filter, respectively used for data association and state estimation. The system is able to analyze 360 degrees around the ego-vehicle as well as estimate the future trajectories of the environment objects, being the essential input for other layers of a self-driving architecture, such as the control or decision-making. First, our system pipeline is described, merging the concepts of online and real-time DATMO (Deteccion and Tracking of Multiple Objects), ROS (Robot Operating System) and Docker to enhance the integration of the proposed MOT system in fully-autonomous driving architectures. Second, the system pipeline is validated using the recently proposed KITTI-3DMOT evaluation tool that demonstrates the full strength of 3D localization and tracking of a MOT system. Finally, a comparison of our proposal with other state-of-the-art approaches is carried out in terms of performance by using the mainstream metrics used on MOT benchmarks and the recently proposed integral MOT metrics, evaluating the performance of the tracking system over all detection thresholds.
Date of Conference: 20-23 September 2020
Date Added to IEEE Xplore: 24 December 2020
ISBN Information:
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Object Detection ,
- Tracking System ,
- Bird’s Eye ,
- Multi-object Tracking ,
- Multi-Object Tracking System ,
- 3D Position ,
- Object Tracking ,
- Robot Operating System ,
- Multiple Object Tracking ,
- Angular Velocity ,
- Graphics Processing Unit ,
- Point Cloud ,
- 3D Space ,
- Bounding Box ,
- Autonomous Vehicles ,
- Multiple-input Multiple-output ,
- Linear Velocity ,
- Online Methods ,
- Real-time Tracking ,
- Gaussian Random Variables ,
- 3D Object Detection ,
- Pixel Length ,
- Pixel Width ,
- 3D Bounding Box ,
- Real Unit ,
- Unscented Kalman Filter ,
- Tracking Module ,
- Constant Velocity Model ,
- Perspective Distortion ,
- Coordinate System
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Object Detection ,
- Tracking System ,
- Bird’s Eye ,
- Multi-object Tracking ,
- Multi-Object Tracking System ,
- 3D Position ,
- Object Tracking ,
- Robot Operating System ,
- Multiple Object Tracking ,
- Angular Velocity ,
- Graphics Processing Unit ,
- Point Cloud ,
- 3D Space ,
- Bounding Box ,
- Autonomous Vehicles ,
- Multiple-input Multiple-output ,
- Linear Velocity ,
- Online Methods ,
- Real-time Tracking ,
- Gaussian Random Variables ,
- 3D Object Detection ,
- Pixel Length ,
- Pixel Width ,
- 3D Bounding Box ,
- Real Unit ,
- Unscented Kalman Filter ,
- Tracking Module ,
- Constant Velocity Model ,
- Perspective Distortion ,
- Coordinate System
- Author Keywords