Human re-identification with global and local siamese convolution neural network

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Abstract

Human re-identification is an important task in surveillance system to determine whether the same human re-appears in multiple cameras with disjoint views. Mostly, appearance based approaches are used to perform human re-identification task because they are less constrained than biometric based approaches. Most of the research works apply hand-crafted feature extractors and then simple matching methods are used. However, designing a robust and stable feature requires expert knowledge and takes time to tune the features. In this paper, we propose a global and local structure of Siamese Convolution Neural Network which automatically extracts features from input images to perform human re-identification task. Besides, most of the current human re-identification tasks in single-shot approaches do not consider occlusion issue due to lack of tracking information. Therefore, we apply a decision fusion technique to combine global and local features for occlusion cases in single-shot approaches.

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CITATION STYLE

APA

Low, K. B., & Sheikh, U. U. (2017). Human re-identification with global and local siamese convolution neural network. Telkomnika (Telecommunication Computing Electronics and Control), 15(2), 726–732. https://doi.org/10.12928/TELKOMNIKA.v15i2.6121

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