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Papers/Know Your Surroundings: Exploiting Scene Information for O...

Know Your Surroundings: Exploiting Scene Information for Object Tracking

Goutam Bhat, Martin Danelljan, Luc van Gool, Radu Timofte

2020-03-24ECCV 2020 8Object TrackingVideo Object Tracking
PaperPDFCode(official)

Abstract

Current state-of-the-art trackers only rely on a target appearance model in order to localize the object in each frame. Such approaches are however prone to fail in case of e.g. fast appearance changes or presence of distractor objects, where a target appearance model alone is insufficient for robust tracking. Having the knowledge about the presence and locations of other objects in the surrounding scene can be highly beneficial in such cases. This scene information can be propagated through the sequence and used to, for instance, explicitly avoid distractor objects and eliminate target candidate regions. In this work, we propose a novel tracking architecture which can utilize scene information for tracking. Our tracker represents such information as dense localized state vectors, which can encode, for example, if the local region is target, background, or distractor. These state vectors are propagated through the sequence and combined with the appearance model output to localize the target. Our network is learned to effectively utilize the scene information by directly maximizing tracking performance on video segments. The proposed approach sets a new state-of-the-art on 3 tracking benchmarks, achieving an AO score of 63.6% on the recent GOT-10k dataset.

Results

TaskDatasetMetricValueModel
VideoNT-VOT211AUC36.02KYS
VideoNT-VOT211Precision48.13KYS
Object TrackingCOESOTPrecision Rate66.7KYS
Object TrackingCOESOTSuccess Rate58.6KYS
Object TrackingFE108Averaged Precision41KYS
Object TrackingFE108Success Rate26.6KYS
Object TrackingNT-VOT211AUC36.02KYS
Object TrackingNT-VOT211Precision48.13KYS

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