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Papers/SPMTrack: Spatio-Temporal Parameter-Efficient Fine-Tuning ...

SPMTrack: Spatio-Temporal Parameter-Efficient Fine-Tuning with Mixture of Experts for Scalable Visual Tracking

Wenrui Cai, Qingjie Liu, Yunhong Wang

2025-03-24CVPR 2025 1Visual Object TrackingVisual Trackingparameter-efficient fine-tuning
PaperPDFCode(official)

Abstract

Most state-of-the-art trackers adopt one-stream paradigm, using a single Vision Transformer for joint feature extraction and relation modeling of template and search region images. However, relation modeling between different image patches exhibits significant variations. For instance, background regions dominated by target-irrelevant information require reduced attention allocation, while foreground, particularly boundary areas, need to be be emphasized. A single model may not effectively handle all kinds of relation modeling simultaneously. In this paper, we propose a novel tracker called SPMTrack based on mixture-of-experts tailored for visual tracking task (TMoE), combining the capability of multiple experts to handle diverse relation modeling more flexibly. Benefiting from TMoE, we extend relation modeling from image pairs to spatio-temporal context, further improving tracking accuracy with minimal increase in model parameters. Moreover, we employ TMoE as a parameter-efficient fine-tuning method, substantially reducing trainable parameters, which enables us to train SPMTrack of varying scales efficiently and preserve the generalization ability of pretrained models to achieve superior performance. We conduct experiments on seven datasets, and experimental results demonstrate that our method significantly outperforms current state-of-the-art trackers. The source code is available at https://github.com/WenRuiCai/SPMTrack.

Results

TaskDatasetMetricValueModel
Object TrackingTNL2KAUC64.7SPMTrack-G
Object TrackingTNL2KNormalized Precision82.6SPMTrack-G
Object TrackingTNL2Kprecision70.6SPMTrack-G
Object TrackingTNL2KAUC63.7SPMTrack-L
Object TrackingTNL2KNormalized Precision81.5SPMTrack-L
Object TrackingTNL2Kprecision69.2SPMTrack-L
Object TrackingTNL2KAUC62SPMTrack-B
Object TrackingTNL2KNormalized Precision79.7SPMTrack-B
Object TrackingTNL2Kprecision66.7SPMTrack-B
Object TrackingUAV123AUC0.717SPMTrack-B
Object TrackingLaSOTAUC77.4SPMTrack-G
Object TrackingLaSOTNormalized Precision86.6SPMTrack-G
Object TrackingLaSOTPrecision85SPMTrack-G
Object TrackingLaSOTAUC76.8SPMTrack-L
Object TrackingLaSOTNormalized Precision85.9SPMTrack-L
Object TrackingLaSOTPrecision84SPMTrack-L
Object TrackingLaSOTAUC74.9SPMTrack-B
Object TrackingLaSOTNormalized Precision84SPMTrack-B
Object TrackingLaSOTPrecision81.7SPMTrack-B
Object TrackingNeedForSpeedAUC0.674SPMTrack-B
Object TrackingGOT-10kAverage Overlap81SPMTrack-G
Object TrackingGOT-10kSuccess Rate 0.589.2SPMTrack-G
Object TrackingGOT-10kSuccess Rate 0.7582.3SPMTrack-G
Object TrackingGOT-10kAverage Overlap80SPMTrack-L
Object TrackingGOT-10kSuccess Rate 0.589.4SPMTrack-L
Object TrackingGOT-10kSuccess Rate 0.7579.9SPMTrack-L
Object TrackingGOT-10kAverage Overlap76.5SPMTrack-B
Object TrackingGOT-10kSuccess Rate 0.585.9SPMTrack-B
Object TrackingGOT-10kSuccess Rate 0.7576.3SPMTrack-B
Object TrackingTrackingNetAccuracy87.3SPMTrack-G
Object TrackingTrackingNetNormalized Precision91.4SPMTrack-G
Object TrackingTrackingNetPrecision88.1SPMTrack-G
Object TrackingTrackingNetAccuracy86.9SPMTrack-L
Object TrackingTrackingNetNormalized Precision91SPMTrack-L
Object TrackingTrackingNetPrecision87.2SPMTrack-L
Object TrackingTrackingNetAccuracy86.1SPMTrack-B
Object TrackingTrackingNetNormalized Precision90.2SPMTrack-B
Object TrackingTrackingNetPrecision85.6SPMTrack-B
Object TrackingOTB-2015AUC0.727SPMTrack-B
Visual Object TrackingTNL2KAUC64.7SPMTrack-G
Visual Object TrackingTNL2KNormalized Precision82.6SPMTrack-G
Visual Object TrackingTNL2Kprecision70.6SPMTrack-G
Visual Object TrackingTNL2KAUC63.7SPMTrack-L
Visual Object TrackingTNL2KNormalized Precision81.5SPMTrack-L
Visual Object TrackingTNL2Kprecision69.2SPMTrack-L
Visual Object TrackingTNL2KAUC62SPMTrack-B
Visual Object TrackingTNL2KNormalized Precision79.7SPMTrack-B
Visual Object TrackingTNL2Kprecision66.7SPMTrack-B
Visual Object TrackingUAV123AUC0.717SPMTrack-B
Visual Object TrackingLaSOTAUC77.4SPMTrack-G
Visual Object TrackingLaSOTNormalized Precision86.6SPMTrack-G
Visual Object TrackingLaSOTPrecision85SPMTrack-G
Visual Object TrackingLaSOTAUC76.8SPMTrack-L
Visual Object TrackingLaSOTNormalized Precision85.9SPMTrack-L
Visual Object TrackingLaSOTPrecision84SPMTrack-L
Visual Object TrackingLaSOTAUC74.9SPMTrack-B
Visual Object TrackingLaSOTNormalized Precision84SPMTrack-B
Visual Object TrackingLaSOTPrecision81.7SPMTrack-B
Visual Object TrackingNeedForSpeedAUC0.674SPMTrack-B
Visual Object TrackingGOT-10kAverage Overlap81SPMTrack-G
Visual Object TrackingGOT-10kSuccess Rate 0.589.2SPMTrack-G
Visual Object TrackingGOT-10kSuccess Rate 0.7582.3SPMTrack-G
Visual Object TrackingGOT-10kAverage Overlap80SPMTrack-L
Visual Object TrackingGOT-10kSuccess Rate 0.589.4SPMTrack-L
Visual Object TrackingGOT-10kSuccess Rate 0.7579.9SPMTrack-L
Visual Object TrackingGOT-10kAverage Overlap76.5SPMTrack-B
Visual Object TrackingGOT-10kSuccess Rate 0.585.9SPMTrack-B
Visual Object TrackingGOT-10kSuccess Rate 0.7576.3SPMTrack-B
Visual Object TrackingTrackingNetAccuracy87.3SPMTrack-G
Visual Object TrackingTrackingNetNormalized Precision91.4SPMTrack-G
Visual Object TrackingTrackingNetPrecision88.1SPMTrack-G
Visual Object TrackingTrackingNetAccuracy86.9SPMTrack-L
Visual Object TrackingTrackingNetNormalized Precision91SPMTrack-L
Visual Object TrackingTrackingNetPrecision87.2SPMTrack-L
Visual Object TrackingTrackingNetAccuracy86.1SPMTrack-B
Visual Object TrackingTrackingNetNormalized Precision90.2SPMTrack-B
Visual Object TrackingTrackingNetPrecision85.6SPMTrack-B
Visual Object TrackingOTB-2015AUC0.727SPMTrack-B

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