1. What are the contributions mentioned in the paper "Semi-supervised tensor-based graph embedding learning and its application to visual discriminant tracking" ?
In this paper, the authors treat an image patch as a 2-order tensor which preserves the original image structure.. The authors prove two propositions for finding the transformation matrices which are used to map the original tensor samples to the tensor-based graph embedding space.. In order to encode more discriminant information in the embedding space, the authors propose a transfer-learningbased semi-supervised strategy to iteratively adjust the embedding space into which discriminative information obtained from earlier times is transferred.. The authors apply the proposed semi-supervised tensor-based graph embedding learning algorithm to visual tracking.. The new tracking algorithm captures an object ’ s appearance characteristics during tracking and uses a particle filter to estimate the optimal object state.
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2. What have the authors stated for future works in "Semi-supervised tensor-based graph embedding learning and its application to visual discriminant tracking" ?
In their future work, the authors will extend their image-as-matrix representation to higher-order tensor representation, e. g., 3-order tensor representation, with a feature vector for each pixel.
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