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Tieniu Tan

Researcher at Chinese Academy of Sciences

Publications -  727
Citations -  46303

Tieniu Tan is an academic researcher from Chinese Academy of Sciences. The author has contributed to research in topics: Feature extraction & Iris recognition. The author has an hindex of 96, co-authored 704 publications receiving 39487 citations. Previous affiliations of Tieniu Tan include Association for Computing Machinery & Center for Excellence in Education.

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A survey on visual surveillance of object motion and behaviors

TL;DR: This paper reviews recent developments and general strategies of the processing framework of visual surveillance in dynamic scenes, and analyzes possible research directions, e.g., occlusion handling, a combination of two and three-dimensional tracking, and fusion of information from multiple sensors, and remote surveillance.
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Silhouette analysis-based gait recognition for human identification

TL;DR: A simple but efficient gait recognition algorithm using spatial-temporal silhouette analysis is proposed that implicitly captures the structural and transitional characteristics of gait.
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Recent developments in human motion analysis

TL;DR: This paper provides a comprehensive survey of research on computer-vision-based human motion analysis, namely human detection, tracking and activity understanding, and various methods for each issue are discussed in order to examine the state of the art.
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Personal identification based on iris texture analysis

TL;DR: A bank of spatial filters, whose kernels are suitable for iris recognition, is used to capture local characteristics of the iris so as to produce discriminating texture features and results show that the proposed method has an encouraging performance.
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Session-Based Recommendation with Graph Neural Networks

TL;DR: Wang et al. as discussed by the authors proposed Session-based Recommendation with Graph Neural Networks (SR-GNN) to capture complex transitions of items, which are difficult to be revealed by previous conventional sequential methods.