Deep Siamese Networks with Bayesian Non-parametrics for Video Object Tracking

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Abstract

We present a novel algorithm utilizing a deep Siamese neural network as a general object similarity function in combination with a Bayesian optimization (BO) framework to encode spatio-temporal information for efficient object tracking in video. In particular, we treat the video tracking problem as a dynamic (i.e. temporally-evolving) optimization problem. Using Gaussian Process priors, we model a dynamic objective function representing the location of a tracked object in each frame. By exploiting temporal correlations, the proposed method queries the search space in a statistically principled and efficient way, offering several benefits over current state of the art video tracking methods.

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Rhodes, A. D., & Goel, M. (2020). Deep Siamese Networks with Bayesian Non-parametrics for Video Object Tracking. In Advances in Intelligent Systems and Computing (Vol. 1070, pp. 950–958). Springer. https://doi.org/10.1007/978-3-030-32523-7_71

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