摘要
This paper is on the concept of quantum steering and quantum entanglement of two observers. The concept is applied to a multi-view computer vision system that incorporates two cameras. Three separate multi-view static camera setups are used to compare the recognition accuracy and to improve the arrangement of cameras in gesture recognition and classroom organisation applications. Prominent features which are partially hidden from a viewpoint can increase performance if given attention. In view of that, this paper proposes an entanglement-based ranking technique that updates the weights of attentive features to improve the classification rate. Principles of entanglement are also used to optimise the position of cameras such that the authoritative hidden features are visible. The proposed technique has a high recognition rate with static cameras. It also shows a low error rate in the field of view when switching to other applications. The results are validated with derangement and Bland–Altman agreement test. The entanglement approach for determining the fine-tuned position of static cameras in a recognition task outperforms many active camera networks.
源语言 | 英语 |
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页(从-至) | 2847-2863 |
页数 | 17 |
期刊 | Visual Computer |
卷 | 39 |
期 | 7 |
DOI | |
出版状态 | 已出版 - 7月 2023 |