Towards a Better Match in Siamese Network Based Visual Object Tracker

Anfeng He, Chong Luo, Xinmei Tian, Wen-Jun Zeng

Abstract

Recently, Siamese network based trackers have received tremendous interest for their fast tracking speed and high performance. Despite the great success, this tracking framework still suffers from several limitations. First, it cannot properly handle large object rotation. Second, tracking gets easily distracted when the background contains salient objects. In this paper, we propose two simple yet effective mechanisms, namely angle estimation and spatial masking, to address these issues. The objective is to extract more representative features so that a better match can be obtained between the same object from different frames. The resulting tracker, named Siam-BM, not only significantly improves the tracking performance, but more importantly maintains the realtime capability. Evaluations on the VOT2017 dataset show that Siam-BM achieves an EAO of 0.335, which makes it the best-performing realtime tracker to date.

Results

TaskDatasetMetricValueModel
Object TrackingVOT2017/18Expected Average Overlap (EAO)0.337SA Siam R
Visual Object TrackingVOT2017/18Expected Average Overlap (EAO)0.337SA Siam R

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