Abstract

Digital video now plays an important role in supporting more profitable online patient training and counseling, and integration of patient training videos from multiple competitive organizations in the health care network will result in better offerings for patients. However, privacy concerns often prevent multiple competitive organizations from sharing and integrating their patient training videos. In addition, patients with infectious or chronic diseases may not want the online patient training organizations to identify who they are or even which video clips they are interested in. Thus, there is an urgent need to develop more effective techniques to protect both video content privacy and access privacy. In this paper, we have developed a new approach to construct a distributed Hippocratic video database system for supporting more profitable online patient training and counseling. First, a new database modeling approach is developed to support concept-oriented video database organization and assign a degree of privacy of the video content for each database level automatically. Second, a new algorithm is developed to protect the video content privacy at the level of individual video clip by filtering out the privacy-sensitive human objects automatically. In order to integrate the patient training videos from multiple competitive organizations for constructing a centralized video database indexing structure, a privacy-preserving video sharing scheme is developed to support privacy-preserving distributed classifier training and prevent the statistical inferences from the videos that are shared for cross-validation of video classifiers. Our experiments on large-scale video databases have also provided very convincing results.

Highlights

  • T O SAVE the huge cost for national health care plan, online patient training and counseling are becoming very attractive by using digital videos to educate patients on early detection and self-treatment of their life-threatening diseases [1]

  • Because increasing the amounts of available patient training videos and increasing the diversity of video content may result in better offerings for patient training, it is very attractive to integrate the patient training videos from multiple competitive organizations in the health care network

  • Patients with infectious or chronic diseases, such as human immunodeficiency virus syndrome (AIDS), severe acute respiratory syndrome, bird flu, hepatitis, and diabetes, may not want the professional patient trainers and organizations to identify who they are or even which video clips they are interested in because disclosing private disease information may seriously affect their employment opportunities. Such privacy concerns may prevent the patients from using online training systems for early detection and selftreatment of their life-threatening infectious and chronic diseases

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Summary

INTRODUCTION

T O SAVE the huge cost for national health care plan, online patient training and counseling are becoming very attractive by using digital videos to educate patients on early detection and self-treatment of their life-threatening diseases [1]. Patients with infectious or chronic diseases, such as human immunodeficiency virus syndrome (AIDS), severe acute respiratory syndrome, bird flu, hepatitis, and diabetes, may not want the professional patient trainers and organizations to identify who they are or even which video clips they are interested in because disclosing private disease information may seriously affect their employment opportunities Such privacy concerns may prevent the patients from using online training systems for early detection and selftreatment of their life-threatening infectious and chronic diseases. Secure multiparty computation (SMC) approaches are too expensive to be useful for large-scale video database because of high communication costs [21]–[26] These existing methods cannot directly be extended to enable privacy-preserving video sharing for distributed classifier training. This paper is organized as follows: Section II introduces our scheme for concept-oriented video database modeling by using concept ontology [14], [15]; Section III presents our privacypreserving video sharing scheme to enable privacy-preserving distributed classifier training; Section IV introduces our framework on privacy-preserving centralized video database indexing and retrieval with a relaxed security model; Section V gives our experimental results; We conclude this paper at Section VI

CONCEPT-ORIENTED VIDEO DATABASE MODELING
PRIVACY-PRESERVING VIDEO CLASSIFIER TRAINING
PRIVACY-PRESERVING VIDEO DATABASE INDEXING AND RETRIEVAL
ALGORITHM EVALUATION
CONCLUSION
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