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Siamese networks with distractor-reduction method for long-term visual object tracking

Shiyu Xuan, Shengyang Li, Zifei Zhao, Longxuan Kou, Zhuang Zhou, Gui-Song Xia

2020Pattern Recognition40 citationsDOIOpen Access PDF

Abstract

Many trackers which divide the tracking process into two stages have recently been proposed to solve the problem of long-term tracking. Their outstanding performance makes them become one of the mainstream algorithms of long-term tracking. To further improve the performance of two-stage tracking algorithms, some improvements are proposed in this paper. (a) A hard negative mining method is proposed. It can optimize the training process of the verification network and bridge the gap between the two sub-networks. (b) The architecture of the verification network is designed as a Siamese structure; therefore, the semantic ambiguity in classification can be alleviated. Extensive experiments performed on benchmarks demonstrate that the proposed approach significantly outperforms the state-of-the-art methods, yielding 7% relative gain in the VOT2018-LT dataset and 14.2% relative gain in the OxUvA dataset.

Topics & Concepts

Computer scienceBitTorrent trackerArtificial intelligenceTerm (time)Process (computing)Tracking (education)AmbiguityBridge (graph theory)Video trackingReduction (mathematics)Object (grammar)Computer visionPattern recognition (psychology)Machine learningEye trackingMathematicsInternal medicinePsychologyOperating systemProgramming languageQuantum mechanicsMedicinePedagogyPhysicsGeometryVideo Surveillance and Tracking MethodsFire Detection and Safety SystemsAdvanced Chemical Sensor Technologies
Siamese networks with distractor-reduction method for long-term visual object tracking | Litcius