CPAR: Cloud-Assisted Privacy-preserving Image Annotation with Randomized KD-Forest
Yifan Tian, Yantian Hou, Jiawei Yuan

TL;DR
CPAR introduces a privacy-preserving image annotation method using a randomized kd-forest, enabling efficient cloud-assisted keyword assignment while protecting sensitive image data.
Contribution
The paper presents a novel randomized kd-forest structure for privacy-preserving image annotation, improving performance over existing cryptographic approaches.
Findings
Significantly faster annotation process compared to previous methods
Maintains high accuracy in keyword assignment
Ensures strong privacy protection of user images
Abstract
With the explosive growth in the number of pictures taken by smartphones, organizing and searching pictures has become important tasks. To efficiently fulfill these tasks, the key enabler is annotating images with proper keywords, with which keyword-based searching and organizing become available for images. Currently, smartphones usually synchronize photo albums with cloud storage platforms, and have their images annotated with the help of cloud computing. However, the "offloading-to-cloud" solution may cause privacy breach, since photos from smart photos contain various sensitive information. For privacy protection, existing research made effort to support cloud-based image annotation on encrypted images by utilizing cryptographic primitives. Nevertheless, for each annotation, it requires the cloud to perform linear checking on the large-scale encrypted dataset with high computational…
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Taxonomy
TopicsAdvanced Steganography and Watermarking Techniques · Advanced Image and Video Retrieval Techniques · Image Retrieval and Classification Techniques
