With the incremental popularity of ophthalmic imaging techniques, anonymization of the clinical image datasets is becoming a critical issue, especially the fundus images, which would have unique patient-specific biometric content. Towards achieving a framework to anonymize ophthalmic images, we propose an image-specific de-identification method on the vascular structure of retinal fundus images while preserving important clinical features such as hard exudates. Our method calculates the contribution of latent code in latent space to the vascular structure by computing the gradient map of the generated image with respect to latent space and then by computing the overlap between the vascular mask and the gradient map. The proposed method is designed to specifically target and effectively manipulate the latent code with the highest contribution score in vascular structures. Extensive experimental results show that our proposed method is competitive with other state-of-the-art approaches in terms of identity similarity and lesion similarity, respectively. Additionally, our approach allows for a better balance between identity similarity and lesion similarity, thus ensuring optimal performance in a trade-off manner.
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With the incremental popularity of ophthalmic imaging techniques, anonymization of the clinical image datasets is becoming a critical issue, especially the fundus images, which would have unique patient-specific biometric content. Towards achieving a framework to anonymize ophthalmic images, we propose an image-specific de-identification method on the vascular structure of retinal fundus images while preserving important clinical features such as hard exudates. Our method calculates the contribu...
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