Hyperspectral Imaging Market Size, Share, Outlook, and Opportunity Analysis, 2022 - 2030

 

An innovative approach to analysis based on spectroscopy is called hyperspectral imaging. For the same geographical (occupying) area, it gathers hundreds of photos at various wavelengths of the sample, such as cancer tissue. Hyperspectral imaging measures the continuous spectrum of the light for each pixel of the scene in the visible and near-infrared areas with fine wavelength precision.

Because hyperspectral imaging is used to detect viruses, the COVID-19 pandemic is anticipated to propel growth of the worldwide hyperspectral imaging market. For instance, integrating hyperspectral imaging with nanomaterial in 2021 led to the development of a diagnostic platform for extremely sensitive COVID-19 viral identification, according to an article published in the National Center for Biotechnology Information. Utilizing an ultrasensitive hyperspectral sensor (HyperSENSE) based on hafnium nanoparticles, an assay was conducted to identify the COVID-19 virus. It was discovered that the assay has a limit of detection that is 1,000,000,000 times greater than the COVID-19 tests that are now available on the market with a turnaround time of a few seconds.

The market for hyperspectral imaging is anticipated to rise as a result of increased research into innovative methods for COVID-19 virus detection. For instance, the Dimension release states that a study proposal for COVID-19 real-time detection by Hyperspectral Analysis of Sweat Metabolite Biometrics has been presented for 2020. In the proposed study, a brand-new hyperspectral imaging method will be created in order to collect sweat metabolites specifically affected by COVID-19 and process them using pattern recognition techniques.

Comments

Popular posts from this blog

The Role of the Foodservice Industry in Driving the French Fries Market

Market Share and Revenue Analysis of the Microdermabrasion Devices Market

The Growing Demand for Healthcare Staffing Market: Trends and Opportunities