Congratulations to Trevor for completing his Master's Thesis!
Hybrid Event and Frame-based System for Target Detection, Tracking, and Identification
Abstract
A hybrid event-based (EBS) and frame-based sensor system is constructed for the task of automated object search and track. Due to its relatively low read-out bandwidth and high temporal resolution, an EBS sensor with a wide field of view (FoV) is employed to monitor a scene and rapidly detect moving targets. A pan/tilt stage holding a frame-based sensor is driven using positional information extracted from the EBS data, allowing it to track desired target position within a global (EBS) frame of reference. The frame-based sensor with a narrow FoV provides high spatial resolution images of the target, enabling real-time target identification with a convolutional neural network. The proposed hybrid sensor system’s performance is quantified using a small drone target flying at various stand-off distances, speeds, contrasts, and trajectories. Outdoor flights were conducted against a background of clear sky and a cluttered background of woods/plains. Detection probability with the EBS is compared against stand-off distance, as well as the precision and recall of the narrow FoV detection/tracking algorithm. Using field trials, the hybrid system is shown to detect and track a 30 cm drone at distances up to 100 m and speeds of 12 m/s. Empirical data on detection probability versus event rate curves suggest that the system can achieve detection rates of 95% with read-out bandwidths as low as 30±2 kilobytes/second with 200 microsecond resolution. The reduced bandwidth from an EBS makes it a potential alternative to a wide FoV frame-based imager for the search-and-track task.
Committee:
- Dr. Amit Ashok (Chair)
- Dr. Jon Koshel
- Dr. Brandon Chalifoux
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Congratulations to Sebastian for completing his Master's Thesis!