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Papers/SiamFC++: Towards Robust and Accurate Visual Tracking with...

SiamFC++: Towards Robust and Accurate Visual Tracking with Target Estimation Guidelines

Yinda Xu, Zeyu Wang, Zuoxin Li, Ye Yuan, Gang Yu

2019-11-14Visual Object TrackingVisual TrackingRobust classificationGeneral ClassificationClassification
PaperPDFCodeCodeCodeCodeCode(official)Code

Abstract

Visual tracking problem demands to efficiently perform robust classification and accurate target state estimation over a given target at the same time. Former methods have proposed various ways of target state estimation, yet few of them took the particularity of the visual tracking problem itself into consideration. After a careful analysis, we propose a set of practical guidelines of target state estimation for high-performance generic object tracker design. Following these guidelines, we design our Fully Convolutional Siamese tracker++ (SiamFC++) by introducing both classification and target state estimation branch(G1), classification score without ambiguity(G2), tracking without prior knowledge(G3), and estimation quality score(G4). Extensive analysis and ablation studies demonstrate the effectiveness of our proposed guidelines. Without bells and whistles, our SiamFC++ tracker achieves state-of-the-art performance on five challenging benchmarks(OTB2015, VOT2018, LaSOT, GOT-10k, TrackingNet), which proves both the tracking and generalization ability of the tracker. Particularly, on the large-scale TrackingNet dataset, SiamFC++ achieves a previously unseen AUC score of 75.4 while running at over 90 FPS, which is far above the real-time requirement. Code and models are available at: https://github.com/MegviiDetection/video_analyst .

Results

TaskDatasetMetricValueModel
Object TrackingVOT2017/18Expected Average Overlap (EAO)0.428SiamFC++
Object TrackingGOT-10kAverage Overlap61SiamFC++
Object TrackingGOT-10kSuccess Rate 0.574.2SiamFC++
Object TrackingTrackingNetAccuracy74.5SiamFC++
Object TrackingTrackingNetNormalized Precision79.8SiamFC++
Object TrackingTrackingNetPrecision68.5SiamFC++
Visual Object TrackingVOT2017/18Expected Average Overlap (EAO)0.428SiamFC++
Visual Object TrackingGOT-10kAverage Overlap61SiamFC++
Visual Object TrackingGOT-10kSuccess Rate 0.574.2SiamFC++
Visual Object TrackingTrackingNetAccuracy74.5SiamFC++
Visual Object TrackingTrackingNetNormalized Precision79.8SiamFC++
Visual Object TrackingTrackingNetPrecision68.5SiamFC++

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