Litcius/Paper detail

Object Tracking via Spatial-Temporal Memory Network

Zikun Zhou, Xin Li, Tianzhu Zhang, Hongpeng Wang, Zhenyu He

2021IEEE Transactions on Circuits and Systems for Video Technology41 citationsDOI

Abstract

Temporal and spatial contexts, characterizing target appearance variations and target-background differences, respectively, are crucial for improving the online adaptive ability and instance-level discriminative ability of object tracking. However, most existing trackers focus on either the temporal context or the spatial context during tracking and have not exploited these contexts simultaneously and effectively. In this paper, we propose a Spatial-TEmporal Memory (STEM) network to exploit these contexts jointly for object tracking. Specifically, we develop a key-value structured memory model equipped with a key-value index-based memory reading mechanism to model the spatial and temporal contexts simultaneously. To update the memory with new target states and ensure the diversity of the memory, we introduce a similarity-aware memory update scheme. In addition, we construct an entropy-guided ensemble strategy to fuse the prediction models based on these two contexts, such that these two contexts can be exploited to estimate the target state jointly. Extensive experimental results on eight challenging datasets, including OTB2015, TC128, UAV123, VOT2018, LaSOT, TrackingNet, GOT-10k, and OxUvA, demonstrate that the proposed method performs favorably against state-of-the-art trackers.

Topics & Concepts

Computer scienceDiscriminative modelSpatial contextual awarenessBitTorrent trackerArtificial intelligenceMemory modelVideo trackingExploitEntropy (arrow of time)Pattern recognition (psychology)Object (grammar)Eye trackingShared memoryComputer securityQuantum mechanicsOperating systemPhysicsVideo Surveillance and Tracking MethodsFire Detection and Safety SystemsImpact of Light on Environment and Health