Matches in SemOpenAlex for { <https://semopenalex.org/work/W4306790184> ?p ?o ?g. }
- W4306790184 abstract "The energy resolution in hyperspectral imaging techniques has always been an important matter in data interpretation. In many cases, spectral information is distorted by elements such as instruments' broad optical transfer function, and electronic high frequency noises. In the past decades, advances in artificial intelligence methods have provided robust tools to better study sophisticated system artifacts in spectral data and take steps towards removing these artifacts from the experimentally obtained data. This study evaluates the capability of a recently developed deep convolutional neural network script, EELSpecNet, in restoring the reality of a spectral data. The particular strength of the deep neural networks is to remove multiple instrumental artifacts such as random energy jitters of the source, signal convolution by the optical transfer function and high frequency noise at once using a single training data set. Here, EELSpecNet performance in reducing noise, and restoring the original reality of the spectra is evaluated for near zero-loss electron energy loss spectroscopy signals in Scanning Transmission Electron Microscopy. EELSpecNet demonstrates to be more efficient and more robust than the currently widely used Bayesian statistical method, even in harsh conditions (e.g. high signal broadening, intense high frequency noise)." @default.
- W4306790184 created "2022-10-20" @default.
- W4306790184 creator A5025077299 @default.
- W4306790184 creator A5061351569 @default.
- W4306790184 creator A5067478405 @default.
- W4306790184 creator A5081222743 @default.
- W4306790184 date "2022-10-19" @default.
- W4306790184 modified "2023-10-18" @default.
- W4306790184 title "Alignment-invariant signal reality reconstruction in hyperspectral imaging using a deep convolutional neural network architecture" @default.
- W4306790184 cites W1484923315 @default.
- W4306790184 cites W1502222680 @default.
- W4306790184 cites W1932674313 @default.
- W4306790184 cites W1963850614 @default.
- W4306790184 cites W1988386267 @default.
- W4306790184 cites W1994979643 @default.
- W4306790184 cites W1999733648 @default.
- W4306790184 cites W2025822980 @default.
- W4306790184 cites W2028439890 @default.
- W4306790184 cites W2040286733 @default.
- W4306790184 cites W2043776525 @default.
- W4306790184 cites W2054520295 @default.
- W4306790184 cites W2054832203 @default.
- W4306790184 cites W2064076387 @default.
- W4306790184 cites W2085113815 @default.
- W4306790184 cites W2088909704 @default.
- W4306790184 cites W2098693222 @default.
- W4306790184 cites W2099007864 @default.
- W4306790184 cites W2099474155 @default.
- W4306790184 cites W2101575090 @default.
- W4306790184 cites W2117035551 @default.
- W4306790184 cites W2118189356 @default.
- W4306790184 cites W2126077170 @default.
- W4306790184 cites W2126097106 @default.
- W4306790184 cites W2133665775 @default.
- W4306790184 cites W2135308128 @default.
- W4306790184 cites W2142269155 @default.
- W4306790184 cites W2156387937 @default.
- W4306790184 cites W2163649182 @default.
- W4306790184 cites W2170608748 @default.
- W4306790184 cites W2183795528 @default.
- W4306790184 cites W2296024045 @default.
- W4306790184 cites W2329789153 @default.
- W4306790184 cites W2331143823 @default.
- W4306790184 cites W2331771537 @default.
- W4306790184 cites W2528231504 @default.
- W4306790184 cites W2558580397 @default.
- W4306790184 cites W2599168487 @default.
- W4306790184 cites W2792432435 @default.
- W4306790184 cites W2806478404 @default.
- W4306790184 cites W2900834559 @default.
- W4306790184 cites W2912650435 @default.
- W4306790184 cites W2914540228 @default.
- W4306790184 cites W2927980542 @default.
- W4306790184 cites W2964227007 @default.
- W4306790184 cites W2964919223 @default.
- W4306790184 cites W2989729353 @default.
- W4306790184 cites W2996008575 @default.
- W4306790184 cites W2998691889 @default.
- W4306790184 cites W3039338008 @default.
- W4306790184 cites W3084798277 @default.
- W4306790184 cites W3088321713 @default.
- W4306790184 cites W3088838057 @default.
- W4306790184 cites W3099925406 @default.
- W4306790184 cites W3100236314 @default.
- W4306790184 cites W3103870726 @default.
- W4306790184 cites W3106774887 @default.
- W4306790184 cites W3111087827 @default.
- W4306790184 cites W3124027624 @default.
- W4306790184 cites W3157027654 @default.
- W4306790184 cites W3161200670 @default.
- W4306790184 cites W3162741970 @default.
- W4306790184 cites W3166405030 @default.
- W4306790184 cites W3186526634 @default.
- W4306790184 cites W3187695604 @default.
- W4306790184 cites W4200247129 @default.
- W4306790184 cites W4205378660 @default.
- W4306790184 cites W4213195525 @default.
- W4306790184 cites W4245270582 @default.
- W4306790184 cites W4248253651 @default.
- W4306790184 doi "https://doi.org/10.1038/s41598-022-22264-3" @default.
- W4306790184 hasPubMedId "https://pubmed.ncbi.nlm.nih.gov/36261495" @default.
- W4306790184 hasPublicationYear "2022" @default.
- W4306790184 type Work @default.
- W4306790184 citedByCount "0" @default.
- W4306790184 crossrefType "journal-article" @default.
- W4306790184 hasAuthorship W4306790184A5025077299 @default.
- W4306790184 hasAuthorship W4306790184A5061351569 @default.
- W4306790184 hasAuthorship W4306790184A5067478405 @default.
- W4306790184 hasAuthorship W4306790184A5081222743 @default.
- W4306790184 hasBestOaLocation W43067901841 @default.
- W4306790184 hasConcept C115961682 @default.
- W4306790184 hasConcept C153180895 @default.
- W4306790184 hasConcept C154945302 @default.
- W4306790184 hasConcept C159078339 @default.
- W4306790184 hasConcept C41008148 @default.
- W4306790184 hasConcept C81363708 @default.
- W4306790184 hasConcept C99498987 @default.
- W4306790184 hasConceptScore W4306790184C115961682 @default.
- W4306790184 hasConceptScore W4306790184C153180895 @default.
- W4306790184 hasConceptScore W4306790184C154945302 @default.