Visible to the public Biblio

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2022-08-26
Zhao, Yue, Shen, Yang, Qi, Yuanbo.  2021.  A Security Analysis of Chinese Robot Supply Chain Based on Open-Source Intelligence. 2021 IEEE 1st International Conference on Digital Twins and Parallel Intelligence (DTPI). :219—222.

This paper argues that the security management of the robot supply chain would preferably focus on Sino-US relations and technical bottlenecks based on a comprehensive security analysis through open-source intelligence and data mining of associated discourses. Through the lens of the newsboy model and game theory, this study reconstructs the risk appraisal model of the robot supply chain and rebalances the process of the Sino-US competition game, leading to the prediction of China's strategic movements under the supply risks. Ultimately, this paper offers a threefold suggestion: increasing the overall revenue through cost control and scaled expansion, resilience enhancement and risk prevention, and outreach of a third party's cooperation for confrontation capabilities reinforcement.

2018-01-10
Bai, Jiale, Ni, Bingbing, Wang, Minsi, Shen, Yang, Lai, Hanjiang, Zhang, Chongyang, Mei, Lin, Hu, Chuanping, Yao, Chen.  2017.  Deep Progressive Hashing for Image Retrieval. Proceedings of the 2017 ACM on Multimedia Conference. :208–216.

This paper proposes a novel recursive hashing scheme, in contrast to conventional "one-off" based hashing algorithms. Inspired by human's "nonsalient-to-salient" perception path, the proposed hashing scheme generates a series of binary codes based on progressively expanded salient regions. Built on a recurrent deep network, i.e., LSTM structure, the binary codes generated from later output nodes naturally inherit information aggregated from previously codes while explore novel information from the extended salient region, and therefore it possesses good scalability property. The proposed deep hashing network is trained via minimizing a triplet ranking loss, which is end-to-end trainable. Extensive experimental results on several image retrieval benchmarks demonstrate good performance gain over state-of-the-art image retrieval methods and its scalability property.