Delving into the Trajectory Long-tail Distribution for Muti-object Tracking
Sijia Chen, En Yu, Jinyang Li, Wenbing Tao

TL;DR
This paper investigates the long-tail distribution of trajectory lengths in multi-object tracking datasets and proposes data augmentation strategies to mitigate its impact, improving tracking performance.
Contribution
It introduces the first thorough analysis of trajectory long-tail distribution in MOT datasets and proposes novel augmentation methods to address this imbalance.
Findings
The long-tail distribution significantly affects MOT performance.
Proposed augmentation strategies improve tracking accuracy.
Methods are compatible with existing tracking systems.
Abstract
Multiple Object Tracking (MOT) is a critical area within computer vision, with a broad spectrum of practical implementations. Current research has primarily focused on the development of tracking algorithms and enhancement of post-processing techniques. Yet, there has been a lack of thorough examination concerning the nature of tracking data it self. In this study, we pioneer an exploration into the distribution patterns of tracking data and identify a pronounced long-tail distribution issue within existing MOT datasets. We note a significant imbalance in the distribution of trajectory lengths across different pedestrians, a phenomenon we refer to as ``pedestrians trajectory long-tail distribution''. Addressing this challenge, we introduce a bespoke strategy designed to mitigate the effects of this skewed distribution. Specifically, we propose two data augmentation strategies, including…
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Taxonomy
TopicsVideo Surveillance and Tracking Methods
MethodsDiffusion · Softmax
