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3 months ago

BoT-SORT: Robust Associations Multi-Pedestrian Tracking

Nir Aharon Roy Orfaig Ben-Zion Bobrovsky

BoT-SORT: Robust Associations Multi-Pedestrian Tracking

Abstract

The goal of multi-object tracking (MOT) is detecting and tracking all the objects in a scene, while keeping a unique identifier for each object. In this paper, we present a new robust state-of-the-art tracker, which can combine the advantages of motion and appearance information, along with camera-motion compensation, and a more accurate Kalman filter state vector. Our new trackers BoT-SORT, and BoT-SORT-ReID rank first in the datasets of MOTChallenge [29, 11] on both MOT17 and MOT20 test sets, in terms of all the main MOT metrics: MOTA, IDF1, and HOTA. For MOT17: 80.5 MOTA, 80.2 IDF1, and 65.0 HOTA are achieved. The source code and the pre-trained models are available at https://github.com/NirAharon/BOT-SORT

Code Repositories

Robotmurlock/Motrack
Mentioned in GitHub
mikel-brostrom/boxmot
pytorch
Mentioned in GitHub
viplix3/BoTSORT-cpp
Mentioned in GitHub
niraharon/bot-sort
Official
pytorch
Mentioned in GitHub
airotau/pointpillarshailoinnoviz
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
multi-object-tracking-on-mot17BoT-SORT
HOTA: 65.0
IDF1: 80.2
MOTA: 80.5
multi-object-tracking-on-mot20-1BoT-SORT
HOTA: 63.3
IDF1: 77.5
MOTA: 77.8

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