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A flexible AI approach for face mask compliance in healthcare settings

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Mike McNamara
Mike McNamara

Even as COVID-19 case rates are falling and vaccination rates are rising, the use of face masks and adequate social distancing are still essential in hospitals, assisted living facilities, and nursing homes. Proper masking is also crucial in clinical settings where distancing isn’t always practical, especially where rates of infection are high. Many healthcare facilities, including the medical center in my area, monitor and enforce masking for employees and patients at entrance and exit points.

Integrating AI with your existing video feeds

Video cameras are common in public healthcare spaces, creating an opportunity to combine existing video feeds with AI and computer vision to monitor compliance with masking and other guidelines to minimize risks unobtrusively. Many institutions have video systems but don’t have much, if any, automation associated with monitoring video feeds, limiting the value of those investments.

An AI model for face mask detection can be applied in various ways to address compliance requirements. For example, it’s possible to monitor public and private entryways to passively assess patients and staff entering a facility. Many facilities assign dedicated staff to monitor entry doors, a practice that might be unnecessary where compliance is high. However, as the percentage of the population that’s vaccinated increases, new problems can emerge. 

Although we haven’t yet implemented the capability, it should be possible to enhance an AI solution to deny entry to a facility or a particular area to anyone who isn’t properly masked. For this system to work, object detection and localization must occur in near real time, requiring inferencing at typical video frame rates. 

NetApp and SFL Scientific have implemented a flexible technology stack to meet the diverse requirements of healthcare and life sciences institutions. Depending on your IT and organizational needs, the NetApp® solution can be implemented on premises through purchase or subscription, or in the cloud through subscription.

Our methodology for face-mask compliance can be readily adapted to other compliance needs in healthcare and beyond. For example, hand washing is crucial for infection control, especially in areas such as ICUs, isolation wards, and operating rooms. A targeted solution could monitor hand-washing compliance in these areas.  Drug wastage and mishandling is another important challenge that many facilities face. An unobtrusive video compliance solution might help hospital pharmacies adhere to proper procedures or identify places where drugs are handled improperly.

To learn more about this topic, read the white paper Deep learning to identify COVID-19 lesions in lung CT scans and visit our AI in healthcare web site.  

Mike McNamara

Mike McNamara

Mike McNamara 是 NetApp 產品和解決方案行銷的資深主管,在資料管理和雲端儲存行銷領域擁有超過 25 年的豐富經驗。在十年前加入 NetApp 之前,Mike 曾任職於 Adaptec、Dell EMC 和 HPE 等公司。Mike 是推出第一方雲端儲存產品和業界第一款雲端連線 AI/ML 解決方案 (NetApp)、統一化橫向擴充和混合雲儲存系統與軟體 (NetApp)、iSCSI 和 SAS 儲存系統與軟體 (Adaptec),以及光纖通道儲存系統 (EMC CLARiiON) 的重要團隊領導者。此外他曾經擔任「光纖通道產業協會 (Fibre Channel Industry Association,FCIA)」的行銷主席,也是乙太網路技術高峰會議顧問委員會、乙太網路聯盟的成員,現在仍定期為業界期刊撰稿,並經常擔任活動講師。Mike 還透過 FriesenPress 出版了一本名為《橫向擴充儲存設備 - 企業資料管理的未來樣貌》的書籍,並被 Kapos 列為值得關注的 50 名 B2B 產品行銷人員。查看 Mike McNamara 的所有文章
A flexible AI approach for face mask compliance in healthcare settings