CVJul 17, 2020

Scale Equivariance Improves Siamese Tracking

arXiv:2007.09115v284 citations
AI Analysis

This work addresses the challenge of object scaling in real-life tracking scenarios for computer vision applications, representing an incremental improvement over existing methods.

The paper tackled the problem of visual object tracking by enhancing Siamese trackers with built-in scale equivariance to handle object scaling variations, resulting in improved performance on OTB and VOT benchmarks and synthetic datasets.

Siamese trackers turn tracking into similarity estimation between a template and the candidate regions in the frame. Mathematically, one of the key ingredients of success of the similarity function is translation equivariance. Non-translation-equivariant architectures induce a positional bias during training, so the location of the target will be hard to recover from the feature space. In real life scenarios, objects undergoe various transformations other than translation, such as rotation or scaling. Unless the model has an internal mechanism to handle them, the similarity may degrade. In this paper, we focus on scaling and we aim to equip the Siamese network with additional built-in scale equivariance to capture the natural variations of the target a priori. We develop the theory for scale-equivariant Siamese trackers, and provide a simple recipe for how to make a wide range of existing trackers scale-equivariant. We present SE-SiamFC, a scale-equivariant variant of SiamFC built according to the recipe. We conduct experiments on OTB and VOT benchmarks and on the synthetically generated T-MNIST and S-MNIST datasets. We demonstrate that a built-in additional scale equivariance is useful for visual object tracking.

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