An Active Multi-Object Ultrafast Tracking System with CNN-Based Hybrid Object Detection

Sensors (Basel). 2023 Apr 21;23(8):4150. doi: 10.3390/s23084150.

Abstract

This study proposes a visual tracking system that can detect and track multiple fast-moving appearance-varying targets simultaneously with 500 fps image processing. The system comprises a high-speed camera and a pan-tilt galvanometer system, which can rapidly generate large-scale high-definition images of the wide monitored area. We developed a CNN-based hybrid tracking algorithm that can robustly track multiple high-speed moving objects simultaneously. Experimental results demonstrate that our system can track up to three moving objects with velocities lower than 30 m per second simultaneously within an 8-m range. The effectiveness of our system was demonstrated through several experiments conducted on simultaneous zoom shooting of multiple moving objects (persons and bottles) in a natural outdoor scene. Moreover, our system demonstrates high robustness to target loss and crossing situations.

Keywords: convolutional neural network (CNN); high-speed vision; multi-object tracking; template matching (TM).