TY - GEN
T1 - HNST
T2 - 7th International Conference on Control, Automation and Robotics, ICCAR 2021
AU - Zou, Zhe
AU - Wu, Yujie
AU - Zhao, Rong
N1 - Publisher Copyright:
© 2021 IEEE.
PY - 2021/4/23
Y1 - 2021/4/23
N2 - Object tracking is a fundamental problem in perception, which is of great importance for intelligent robots. Recent years have witnessed breakthroughs of deep neural networks (DNN) in intelligent perception with a remarkable improvement on tracking accuracy. However, the huge computing cost and high latency restrict their applications in embedded robotic platform. In contrast, traditional correlation filters-based trackers use handcraft low-level features with higher tracking speed and lighter computational overhead. Both methods have their own advantages. Integrating them may provide a complementary strategy to achieve flexibility between speed and accuracy, which promises to handle more complex scenarios. This work proposes a hybrid neural state tracker (HNST) that combines DNN-based detection and Kernelized Correlation Filter (KCF) tracking using a policy to determine when to activate detection and whether to update the template of tracking target. Furthermore, we develop a similarity discrimination and establish a hybrid neural state machine for decision-making. Through comprehensive evaluation of the speed and accuracy of multiple standard video datasets, our approach improves more than 70% on precision and 95% on AUC with real-time tracking speed (~100 FPS) on CPU over the KCF tracker baseline, indicating the great potential of HNST in high-speed tracking.
AB - Object tracking is a fundamental problem in perception, which is of great importance for intelligent robots. Recent years have witnessed breakthroughs of deep neural networks (DNN) in intelligent perception with a remarkable improvement on tracking accuracy. However, the huge computing cost and high latency restrict their applications in embedded robotic platform. In contrast, traditional correlation filters-based trackers use handcraft low-level features with higher tracking speed and lighter computational overhead. Both methods have their own advantages. Integrating them may provide a complementary strategy to achieve flexibility between speed and accuracy, which promises to handle more complex scenarios. This work proposes a hybrid neural state tracker (HNST) that combines DNN-based detection and Kernelized Correlation Filter (KCF) tracking using a policy to determine when to activate detection and whether to update the template of tracking target. Furthermore, we develop a similarity discrimination and establish a hybrid neural state machine for decision-making. Through comprehensive evaluation of the speed and accuracy of multiple standard video datasets, our approach improves more than 70% on precision and 95% on AUC with real-time tracking speed (~100 FPS) on CPU over the KCF tracker baseline, indicating the great potential of HNST in high-speed tracking.
KW - decision-making
KW - hybrid neural state
KW - object tracking
UR - http://www.scopus.com/inward/record.url?scp=85114481064&partnerID=8YFLogxK
U2 - 10.1109/ICCAR52225.2021.9463460
DO - 10.1109/ICCAR52225.2021.9463460
M3 - Conference article published in proceeding or book
AN - SCOPUS:85114481064
T3 - 2021 7th International Conference on Control, Automation and Robotics, ICCAR 2021
SP - 231
EP - 235
BT - 2021 7th International Conference on Control, Automation and Robotics, ICCAR 2021
PB - Institute of Electrical and Electronics Engineers Inc.
Y2 - 23 April 2021 through 26 April 2021
ER -