Barr et al., 2021 - Google Patents
Extraction of Hidden Science from Nanoscale ImagesBarr et al., 2021
View PDF- Document ID
- 17818474174358643651
- Author
- Barr K
- Chiang N
- Bertozzi A
- Gilles J
- Osher S
- Weiss P
- Publication year
- Publication venue
- The Journal of Physical Chemistry C
External Links
Snippet
Scanning probe microscopies and spectroscopies enable investigation of surfaces and even buried interfaces down to the scale of chemical-bonding interactions, and this capability has been enhanced with the support of computational algorithms for data acquisition and image …
- 238000000605 extraction 0 title description 3
Classifications
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- B—PERFORMING OPERATIONS; TRANSPORTING
- B82—NANO-TECHNOLOGY
- B82Y—SPECIFIC USES OR APPLICATIONS OF NANO-STRUCTURES; MEASUREMENT OR ANALYSIS OF NANO-STRUCTURES; MANUFACTURE OR TREATMENT OF NANO-STRUCTURES
- B82Y10/00—Nano-technology for information processing, storage or transmission, e.g. quantum computing or single electron logic
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- B—PERFORMING OPERATIONS; TRANSPORTING
- B82—NANO-TECHNOLOGY
- B82Y—SPECIFIC USES OR APPLICATIONS OF NANO-STRUCTURES; MEASUREMENT OR ANALYSIS OF NANO-STRUCTURES; MANUFACTURE OR TREATMENT OF NANO-STRUCTURES
- B82Y30/00—Nano-technology for materials or surface science, e.g. nano-composites
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