Two dimensional hashing for visual tracking

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Appearance model is a key part of tracking algorithms. To attain robustness, many complex appearance models are proposed to capture discriminative information of object. However, such models are difficult to maintain accurately and efficiently. In this paper, we observe that hashing techniques can be used to represent object by compact binary code which is efficient for processing. However, during tracking, online updating hash functions is still inefficient with large number of samples. To deal with this bottleneck, a novel hashing method called two dimensional hashing is proposed. In our tracker, samples and templates are hashed to binary matrices, and the hamming distance is used to measure confidence of candidate samples. In addition, the designed incremental learning model is applied to update hash functions for both adapting situation change and saving training time. Experiments on our tracker and other eight state-of-the-art trackers demonstrate that the proposed algorithm is more robust in dealing with various types of scenarios.

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论文评审过程:Received 27 August 2014, Accepted 16 January 2015, Available online 30 January 2015.

论文官网地址:https://doi.org/10.1016/j.cviu.2015.01.003