TECHNOLOGY/BUSINESS OPPORTUNITY

expired opportunity(Expired)
From: Federal Government(Federal)
IL-13625

Basic Details

started - 12 Mar, 2024 (1 month ago)

Start Date

12 Mar, 2024 (1 month ago)
due - 12 Apr, 2024 (16 days ago)

Due Date

12 Apr, 2024 (16 days ago)
Bid Notification

Type

Bid Notification
IL-13625

Identifier

IL-13625
ENERGY, DEPARTMENT OF

Customer / Agency

ENERGY, DEPARTMENT OF (8005)ENERGY, DEPARTMENT OF (8005)LLNS – DOE CONTRACTOR (240)
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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 Dynamic 4DCT Reconstruction using Neural Representation-based Optimization.Background: Reconstructing moving scenes with computed tomography (4DCT) is a challenging and ill-posed problem with important applications in industrial and medical settings. Dynamic computed tomography (DCT) refers to image reconstruction of moving or non-rigid objects over time while x-ray projections are acquired over a range of angles. Although 4DCT reconstruction is widely applicable to the study of object deformation and dynamics in a number of industrial and clinical applications, it has been a long-standing challenge due to the complexity of the x-ray measurement capturing both spatial and
temporal features with the limited data sampling.Description: The essence of this invention is a method that couples network architecture using neural implicit representations coupled with a novel parametric motion field to perform limited angle 4D-CT reconstruction of deforming scenes. To enable the reconstruction of the scene with high dynamics, the inventors developed a novel method for dynamic 4DCT reconstruction that leverages implicit neural representations with a parametric motion field to reconstruct dynamic scenes as time-varying sequence of 3D volumes. The methods have been demonstrated in experiments that reconstruct dynamic scenes with deformable and periodic motion on physically simulated synthetic data and real data.Advantages/Benefits: The principal advantages of this invention are:This method is an end-to-end optimization approach without the need for any training data;This method eliminates the need for fast CT scanners in use cases where the object or scene being scanned is fast moving;The hierarchical coarse-to-fine procedure to estimate the motion field enables recovering fine details of the motion scene without suffering from severe artifacts due to poor convergence of the optimization.Potential Applications: CT/CAT (computerized axial tomography) scanner systemsDevelopment Status: Current stage of technology development: TR-2LLNL has patent(s) on this invention.U.S. Patent No. 11,741,643 Reconstruction of dynamic scenes based on differences between collected view and synthesized view published 8/29/2023LLNL 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 Dynamic 4DCT Reconstruction using Neural Representation-based Optimization 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 Dynamic 4DCT Reconstruction using Neural Representation-based Optimization.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 LaboratoryInnovation and Partnerships OfficeP.O. Box 808, L-779Livermore, CA 94551-0808Attention: IL-13625

Livermore ,
 CA   USALocation

Place Of Performance : N/A

Country : United StatesState : CaliforniaCity : Livermore

Office Address : 7000 East Avenue Livermore , CA 94551 USA

Country : United StatesState : CaliforniaCity : Livermore

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Classification

naicsCode 334517Irradiation Apparatus Manufacturing