SPECIAL NOTICE
99 -- Implicit Neural Representation-based Architecture for Dynamic 4D and Ill-Posed Computed Tomography Reconstruction
- Notice Date
- 6/3/2024 8:22:59 AM
- Notice Type
- Special Notice
- NAICS
- 334517
— Irradiation Apparatus Manufacturing
- Contracting Office
- LLNS � DOE CONTRACTOR Livermore CA 94551 USA
- ZIP Code
- 94551
- Solicitation Number
- IL-13897
- Response Due
- 7/3/2024 9:00:00 AM
- Archive Date
- 07/18/2024
- Point of Contact
- Mary Holden-Sanchez, Phone: 9254224614, Charlotte Eng, Phone: 9254221905
- E-Mail Address
-
holdensanchez2@llnl.gov, eng23@llnl.gov
(holdensanchez2@llnl.gov, eng23@llnl.gov)
- Description
- Opportunity: Lawrence Livermore National Laboratory (LLNL), operated by the Lawrence Livermore National Security (LLNS), LLC under contract no. DE-AC52-07NA27344 (Contract 44) with the U.S. Department of Energy (DOE), is offering the opportunity to enter into a collaboration to further develop and commercialize its implicit neural representation-based architecture for dynamic 4D and ill-posed �computed tomography reconstruction. Background: X-ray computed tomography (CT) is commonly used to acquire 3D volumetric imaging of static objects.� This makes the technique very useful in aerospace, automotive, electronics industries when inspecting parts for defects such as voids, cracks, porosity and inclusions.� CT is also used in clinical settings to diagnose disease or injury as well as plan treatments for patients.� A requirement for conventional x-ray CT scanning is that the object (or patient) has to remain relatively still during the time it takes for the equipment to complete the scan rotation and collect the data.� If the object is in motion or dynamically changing significantly over time, current technologies cannot scan and acquire the data quickly enough, thus reconstruction of the image data is severely degraded with reconstruction artifacts.� Hence, there is a strong need for new technologies that enable 4D CT imaging of dynamic objects with time resolution that approaches the time taken for one X-ray image acquisition. Such a new capability is useful for many applications as it essentially is capturing a 3D movie showing internal motion from any point of view of a beating heart or the lungs during while a patient is breathing, in-situ imaging of fabricated component while undergoing mechanical testing, etc. Description: LLNL�s Distributed Implicit Neural Representation (DINR) is a novel approach to 4D time-space reconstruction of dynamic objects.� DINR is the first technology to enable 4D imaging of dynamic objects at sufficiently high spatial and temporal resolutions that are necessary for real world medical and industrial applications. To be able to significantly decrease the time it takes to acquire a scan, DINR uses a neural network to predict an object�s X-ray attenuation properties as a function of the time and space coordinates. The novel distributed training algorithm optimizes the parameters of this neural network such that the forward model fits the measured data.� LLNL�s forward model is a model for the X-ray physical measurement process that is dependent on the imaging geometry and system parameters. DINR is highly scalable for distributed training on several hundreds of GPUs with near linear scaling performance. Advantages/Benefits:� Enables high resolution 4D imaging of dynamic objects Continuous CT projection offers flexibility and scalability in the optimization process Requires less computing resources and smaller memory footprint compared to existing approaches Increase in volume dimensions of reconstructions that can range from gigabytes to terabytes Potential Applications:� Computed Tomography (CT), dynamic CT for moving and deformable objects in industrial CT (e.g., object deformation under thermal or mechanical loading in additive manufacturing), dynamic CT for human body in medical/clinical CT (e.g., cardiac CT), ill-posed CT reconstruction (e.g., few view, limited-angle CT), inverse imaging (e.g., 3D reconstruction from multi-view images, view interpolation) Development Status:� Current stage of technology development:� TRL 3 LLNL has filed for patent protection on this invention. LLNL is seeking industry partners with a demonstrated ability to bring such inventions to the market. Moving critical technology beyond the Laboratory to the commercial world helps our licensees gain a competitive edge in the marketplace. All licensing activities are conducted under policies relating to the strict nondisclosure of company proprietary information.� Please visit the IPO website at https://ipo.llnl.gov/resources for more information on working with LLNL and the industrial partnering and technology transfer process. Note:� THIS IS NOT A PROCUREMENT.� Companies interested in commercializing LLNL's implicit neural representation-based architecture for dynamic 4D and ill-posed computed �tomography reconstruction should provide an electronic OR written statement of interest, which includes the following: Company Name and address. The name, address, and telephone number of a point of contact. A description of corporate expertise and/or facilities relevant to commercializing this technology. Please provide a complete electronic OR written statement to ensure consideration of your interest in LLNL's implicit neural representation-based architecture for dynamic 4D and ill-posed computed tomography reconstruction. The subject heading in an email response should include the Notice ID and/or the title of LLNL�s Technology/Business Opportunity and directed to the Primary and Secondary Point of Contacts listed below. Written responses should be directed to: Lawrence Livermore National Laboratory Innovation and Partnerships Office P.O. Box 808, L-779 Livermore, CA� 94551-0808 Attention:�� IL-13897
- Web Link
-
SAM.gov Permalink
(https://sam.gov/opp/471d93953c054dbab247b38ca057ecf3/view)
- Place of Performance
- Address: Livermore, CA, USA
- Country: USA
- Country: USA
- Record
- SN07083635-F 20240605/240603230038 (samdaily.us)
- Source
-
SAM.gov Link to This Notice
(may not be valid after Archive Date)
| FSG Index | This Issue's Index | Today's SAM Daily Index Page |