Abstract

In this paper, we propose several methods to improve the performance of multiple object tracking (MOT), especially for humans, in dynamic environments such as robots and autonomous vehicles. The first method is to restore and re-detect unreliable results to improve the detection. The second is to restore noisy regions in the image before the tracking association to improve the identification. To implement the image restoration function used in these two methods, an image inference model based on SRGAN (super-resolution generative adversarial networks) is used. Finally, the third method includes an association method using face features to reduce failures in the tracking association. Three distance measurements are designed so that this method can be applied to various environments. In order to validate the effectiveness of our proposed methods, we select two baseline trackers for comparative experiments and construct a robotic environment that interacts with real people and provides services. Experimental results demonstrate that the proposed methods efficiently overcome dynamic situations and show favorable performance in general situations.

Highlights

  • IntroductionHigh-performance real-time multiple object tracking (MOT) research studies are required for scenarios such as human-computer interaction, autonomous vehicles, and humanoid robots

  • The multiple object tracking (MOT) problem aims to assign IDs to multiple detected targets and to estimate the trajectory of the object until each tracking target disappears.Recently, high-performance real-time MOT research studies are required for scenarios such as human-computer interaction, autonomous vehicles, and humanoid robots

  • We use Multiple Object Tracking Accuracy (MOTA) [43], ID F1 score [44], the ratio of Mostly Tracked targets (MT), the ratio of Mostly Lost targets (ML), and the number of ID Switches (IDS) as the performance metrics, which are significant among several metrics used in the MOT Challenge

Read more

Summary

Introduction

High-performance real-time MOT research studies are required for scenarios such as human-computer interaction, autonomous vehicles, and humanoid robots. For this reason, researches for improving real-time MOT performance such as [1,2,3,4,5] have been actively conducted. Consider the range from the past to the future, while the online methods [10,11,12,13,14] consider the range from the past to the present. The offline methods perform better than the online methods by global optimization considering the future state, but they are not suitable for real-time tracking applications such as the previous scenario examples

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call