On mask-based image set desensitization with recognition support

Q Li, J Liu, Y Sun, C Zhang, D Dou - Applied Intelligence, 2024 - Springer
Q Li, J Liu, Y Sun, C Zhang, D Dou
Applied Intelligence, 2024Springer
Abstract In recent years, Deep Neural Networks (DNN) have emerged as a practical method
for image recognition. The raw data, which contain sensitive information, are generally
exploited within the training process. However, when the training process is outsourced to a
third-party organization, the raw data should be desensitized before being transferred to
protect sensitive information. Although masks are widely applied to hide important sensitive
information, preventing inpainting masked images is critical, which may restore the sensitive …
Abstract
In recent years, Deep Neural Networks (DNN) have emerged as a practical method for image recognition. The raw data, which contain sensitive information, are generally exploited within the training process. However, when the training process is outsourced to a third-party organization, the raw data should be desensitized before being transferred to protect sensitive information. Although masks are widely applied to hide important sensitive information, preventing inpainting masked images is critical, which may restore the sensitive information. The corresponding models should be adjusted for the masked images to reduce the degradation of the performance for recognition or classification tasks due to the desensitization of images. In this paper, we propose a mask-based image desensitization approach while supporting recognition. This approach consists of a mask generation algorithm and a model adjustment method. We propose exploiting an interpretation algorithm to maintain critical information for the recognition task in the mask generation algorithm. In addition, we propose a feature selection masknet as the model adjustment method to improve the performance based on the masked images. Extensive experimentation results based on multiple image datasets reveal significant advantages (up to 9.34% in terms of accuracy) of our approach for image desensitization while supporting recognition.
Springer
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