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Papers/ETTrack: Enhanced Temporal Motion Predictor for Multi-Obje...

ETTrack: Enhanced Temporal Motion Predictor for Multi-Object Tracking

Xudong Han, Nobuyuki Oishi, Yueying Tian, Elif Ucurum, Rupert Young, Chris Chatwin, Philip Birch

2024-05-24Multi-Object TrackingObject Tracking
PaperPDF

Abstract

Many Multi-Object Tracking (MOT) approaches exploit motion information to associate all the detected objects across frames. However, many methods that rely on filtering-based algorithms, such as the Kalman Filter, often work well in linear motion scenarios but struggle to accurately predict the locations of objects undergoing complex and non-linear movements. To tackle these scenarios, we propose a motion-based MOT approach with an enhanced temporal motion predictor, ETTrack. Specifically, the motion predictor integrates a transformer model and a Temporal Convolutional Network (TCN) to capture short-term and long-term motion patterns, and it predicts the future motion of individual objects based on the historical motion information. Additionally, we propose a novel Momentum Correction Loss function that provides additional information regarding the motion direction of objects during training. This allows the motion predictor rapidly adapt to motion variations and more accurately predict future motion. Our experimental results demonstrate that ETTrack achieves a competitive performance compared with state-of-the-art trackers on DanceTrack and SportsMOT, scoring 56.4% and 74.4% in HOTA metrics, respectively.

Results

TaskDatasetMetricValueModel
Multi-Object TrackingDanceTrackAssA39.1ETTrack
Multi-Object TrackingDanceTrackDetA81.7ETTrack
Multi-Object TrackingDanceTrackHOTA56.4ETTrack
Multi-Object TrackingDanceTrackIDF157.5ETTrack
Multi-Object TrackingDanceTrackMOTA92.2ETTrack
Multi-Object TrackingSportsMOTAssA62.1ETTrack
Multi-Object TrackingSportsMOTDetA88.8ETTrack
Multi-Object TrackingSportsMOTHOTA74.3ETTrack
Multi-Object TrackingSportsMOTIDF174.5ETTrack
Multi-Object TrackingSportsMOTMOTA96.8ETTrack
Object TrackingDanceTrackAssA39.1ETTrack
Object TrackingDanceTrackDetA81.7ETTrack
Object TrackingDanceTrackHOTA56.4ETTrack
Object TrackingDanceTrackIDF157.5ETTrack
Object TrackingDanceTrackMOTA92.2ETTrack
Object TrackingSportsMOTAssA62.1ETTrack
Object TrackingSportsMOTDetA88.8ETTrack
Object TrackingSportsMOTHOTA74.3ETTrack
Object TrackingSportsMOTIDF174.5ETTrack
Object TrackingSportsMOTMOTA96.8ETTrack

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