CVSep 6, 2024

LITE: A Paradigm Shift in Multi-Object Tracking with Efficient ReID Feature Integration

arXiv:2409.04187v22 citationsh-index: 9Has Code
Originality Highly original
AI Analysis

This addresses efficiency bottlenecks in multi-object tracking for applications like surveillance and autonomous driving, offering a significant speed improvement with competitive accuracy.

The paper tackles multi-object tracking by introducing LITE, a paradigm that integrates ReID feature extraction directly into the tracking pipeline, achieving a HOTA score of 43.03% at 28.3 FPS on MOT17 and up to four times faster speeds than DeepSORT on crowded datasets.

The Lightweight Integrated Tracking-Feature Extraction (LITE) paradigm is introduced as a novel multi-object tracking (MOT) approach. It enhances ReID-based trackers by eliminating inference, pre-processing, post-processing, and ReID model training costs. LITE uses real-time appearance features without compromising speed. By integrating appearance feature extraction directly into the tracking pipeline using standard CNN-based detectors such as YOLOv8m, LITE demonstrates significant performance improvements. The simplest implementation of LITE on top of classic DeepSORT achieves a HOTA score of 43.03% at 28.3 FPS on the MOT17 benchmark, making it twice as fast as DeepSORT on MOT17 and four times faster on the more crowded MOT20 dataset, while maintaining similar accuracy. Additionally, a new evaluation framework for tracking-by-detection approaches reveals that conventional trackers like DeepSORT remain competitive with modern state-of-the-art trackers when evaluated under fair conditions. The code will be available post-publication at https://github.com/Jumabek/LITE.

Code Implementations1 repo
Foundations

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