Private Facial Diagnosis as an Edge Service for Parkinson's DBS
Treatment Valuation
- URL: http://arxiv.org/abs/2105.07533v1
- Date: Sun, 16 May 2021 22:24:37 GMT
- Title: Private Facial Diagnosis as an Edge Service for Parkinson's DBS
Treatment Valuation
- Authors: Richard Jiang, Paul Chazot, Danny Crookes, Ahmed Bouridane and M Emre
Celebi
- Abstract summary: We propose an edge-oriented privacy-preserving facial diagnosis framework to analyze the treatment of Deep Brain Stimulation (DBS) on PD patients.
In our experiments with a collected facial dataset from PD patients, for the first time, we demonstrated that facial patterns could be used to valuate the improvement of PD patients undergoing DBS treatment.
- Score: 16.425558398408963
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Facial phenotyping has recently been successfully exploited for medical
diagnosis as a novel way to diagnose a range of diseases, where facial
biometrics has been revealed to have rich links to underlying genetic or
medical causes. In this paper, taking Parkinson's Diseases (PD) as a case
study, we proposed an Artificial-Intelligence-of-Things (AIoT) edge-oriented
privacy-preserving facial diagnosis framework to analyze the treatment of Deep
Brain Stimulation (DBS) on PD patients. In the proposed framework, a new
edge-based information theoretically secure framework is proposed to implement
private deep facial diagnosis as a service over a privacy-preserving
AIoT-oriented multi-party communication scheme, where partial homomorphic
encryption (PHE) is leveraged to enable privacy-preserving deep facial
diagnosis directly on encrypted facial patterns. In our experiments with a
collected facial dataset from PD patients, for the first time, we demonstrated
that facial patterns could be used to valuate the improvement of PD patients
undergoing DBS treatment. We further implemented a privacy-preserving deep
facial diagnosis framework that can achieve the same accuracy as the
non-encrypted one, showing the potential of our privacy-preserving facial
diagnosis as an trustworthy edge service for grading the severity of PD in
patients.
Related papers
- FedDP: Privacy-preserving method based on federated learning for histopathology image segmentation [2.864354559973703]
This paper addresses the dispersed nature and privacy sensitivity of medical image data by employing a federated learning framework.
The proposed method, FedDP, minimally impacts model accuracy while effectively safeguarding the privacy of cancer pathology image data.
arXiv Detail & Related papers (2024-11-07T08:02:58Z) - Privacy-preserving Optics for Enhancing Protection in Face De-identification [60.110274007388135]
We propose a hardware-level face de-identification method to solve this vulnerability.
We also propose an anonymization framework that generates a new face using the privacy-preserving image, face heatmap, and a reference face image from a public dataset as input.
arXiv Detail & Related papers (2024-03-31T19:28:04Z) - OpticalDR: A Deep Optical Imaging Model for Privacy-Protective
Depression Recognition [66.91236298878383]
Depression Recognition (DR) poses a considerable challenge, especially in the context of privacy concerns.
We design a new imaging system to erase the identity information of captured facial images while retain disease-relevant features.
It is irreversible for identity information recovery while preserving essential disease-related characteristics necessary for accurate DR.
arXiv Detail & Related papers (2024-02-29T01:20:29Z) - Diff-Privacy: Diffusion-based Face Privacy Protection [58.1021066224765]
In this paper, we propose a novel face privacy protection method based on diffusion models, dubbed Diff-Privacy.
Specifically, we train our proposed multi-scale image inversion module (MSI) to obtain a set of SDM format conditional embeddings of the original image.
Based on the conditional embeddings, we design corresponding embedding scheduling strategies and construct different energy functions during the denoising process to achieve anonymization and visual identity information hiding.
arXiv Detail & Related papers (2023-09-11T09:26:07Z) - Facial Point Graphs for Amyotrophic Lateral Sclerosis Identification [0.0]
This paper proposes Facial Point Graphs to learn information from the geometry of facial images to identify ALS automatically.
The experimental outcomes in the Toronto Neuroface dataset show the proposed approach outperformed state-of-the-art results.
arXiv Detail & Related papers (2023-07-22T20:16:39Z) - Private, fair and accurate: Training large-scale, privacy-preserving AI models in medical imaging [47.99192239793597]
We evaluated the effect of privacy-preserving training of AI models regarding accuracy and fairness compared to non-private training.
Our study shows that -- under the challenging realistic circumstances of a real-life clinical dataset -- the privacy-preserving training of diagnostic deep learning models is possible with excellent diagnostic accuracy and fairness.
arXiv Detail & Related papers (2023-02-03T09:49:13Z) - Practical Digital Disguises: Leveraging Face Swaps to Protect Patient
Privacy [1.7249222048792818]
Face swapping for privacy protection has emerged as an active area of research.
Our main contribution is a novel end-to-end face swapping pipeline for recorded videos of standardized assessments of autism symptoms in children.
arXiv Detail & Related papers (2022-04-07T16:34:15Z) - Privacy-preserving medical image analysis [53.4844489668116]
We present PriMIA, a software framework designed for privacy-preserving machine learning (PPML) in medical imaging.
We show significantly better classification performance of a securely aggregated federated learning model compared to human experts on unseen datasets.
We empirically evaluate the framework's security against a gradient-based model inversion attack.
arXiv Detail & Related papers (2020-12-10T13:56:00Z) - Face Anti-Spoofing by Learning Polarization Cues in a Real-World
Scenario [50.36920272392624]
Face anti-spoofing is the key to preventing security breaches in biometric recognition applications.
Deep learning method using RGB and infrared images demands a large amount of training data for new attacks.
We present a face anti-spoofing method in a real-world scenario by automatic learning the physical characteristics in polarization images of a real face.
arXiv Detail & Related papers (2020-03-18T03:04:03Z) - Deepfakes for Medical Video De-Identification: Privacy Protection and
Diagnostic Information Preservation [12.10092482860325]
Face-swapping as a de-identification approach is reliable, and it keeps the keypoints almost invariant, significantly better than traditional methods.
This study proposes a pipeline for video de-identification and keypoint preservation, clearing up some ethical restrictions for medical data sharing.
arXiv Detail & Related papers (2020-02-07T22:36:48Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.