Visual privacy behaviour recognition for social robots based on an improved generative adversarial network

Although social robots equipped with visual devices may leak user information, countermeasures for ensuring privacy are not readily available, making visual privacy protection problematic. In this article, a semi‐supervised learning algorithm is proposed for visual privacy behaviour recognition base...

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Veröffentlicht in:IET Computer Vision 2024-02, Vol.18 (1), p.110-123
Hauptverfasser: Yang, Guanci, Lin, Jiacheng, Su, Zhidong, Li, Yang
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Sprache:eng
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Zusammenfassung:Although social robots equipped with visual devices may leak user information, countermeasures for ensuring privacy are not readily available, making visual privacy protection problematic. In this article, a semi‐supervised learning algorithm is proposed for visual privacy behaviour recognition based on an improved generative adversarial network for social robots; it is called PBR‐GAN. A 9‐layer residual generator network enhances the data quality, and a 10‐layer discriminator network strengthens the feature extraction. A tailored objective function, loss function, and strategy are proposed to dynamically adjust the learning rate to guarantee high performance. A social robot platform and architecture for visual privacy recognition and protection are implemented. The recognition accuracy of the proposed PBR‐GAN is compared with Inception_v3, SS‐GAN, and SF‐GAN. The average recognition accuracy of the proposed PBR‐GAN is 85.91%, which is improved by 3.93%, 9.91%, and 1.73% compared with the performance of Inception_v3, SS‐GAN, and SF‐GAN respectively. Through a case study, seven situations are considered related to privacy at home, and develop training and test datasets with 8,720 and 1,280 images, respectively, are developed. The proposed PBR‐GAN recognises the designed visual privacy information with an average accuracy of 89.91%. We propose a semi‐supervised learning algorithm for visual privacy behaviour recognition based on an improved generative adversarial network for social robots (PBR‐GAN). We implement a social robot platform and architecture for visual privacy recognition and protection. We compare the recognition accuracy of the proposed PBR‐GAN with Inception_v3, SS‐GAN, and SF‐GAN.
ISSN:1751-9632
1751-9640
DOI:10.1049/cvi2.12231