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Introduction to Special Issue on Emerging Technologies in Polarization-Based Biomedical Imaging
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作者 Chao He Honghui He 《Journal of Innovative Optical Health Sciences》 2025年第2期1-2,共2页
As a vectorial property,polarization encodes high-dimensional information of light.Polarization-based imaging can characterize detailed structural features of biomedical samples label-freely.However,compared with othe... As a vectorial property,polarization encodes high-dimensional information of light.Polarization-based imaging can characterize detailed structural features of biomedical samples label-freely.However,compared with other fundamental properties of light,such as intensity,wavelength and phase,polarization has a shorter application history in biomedicine,because of the requirement for both advanced polarization optical components and computational approaches,which can be achieved nowadays with the fast theoretical and hardware development. 展开更多
关键词 vectorialproperty advanced polarization optical components high dimensionalinformation computational approacheswhich characterize detailed structural features polarization basedbiomedicalimaging biomedical samples label freeccharacterization
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Learning atomic forces from uncertaintycalibrated adversarial attacks
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作者 Henrique Musseli Cezar Tilmann Bodenstein +3 位作者 Henrik Andersen Sveinsson Morten Ledum Simen Reine Sigbjørn Løland Bore 《npj Computational Materials》 2025年第1期2087-2095,共9页
Adversarial approaches,which intentionally challenge machine learning models by generating difficult examples,are increasingly being adopted to improve machine learning interatomic potentials(MLIPs).While already prov... Adversarial approaches,which intentionally challenge machine learning models by generating difficult examples,are increasingly being adopted to improve machine learning interatomic potentials(MLIPs).While already providing great practical value,little is known about the actual prediction errors of MLIPs on adversarial structures and whether these errors can be controlled.We propose the Calibrated Adversarial Geometry Optimization(CAGO)algorithm to discover adversarial structures with userassigned errors.Through uncertainty calibration,the estimated uncertainty of MLIPs is unified with real errors.By performing geometry optimization for calibrated uncertainty,we reach adversarial structures with the user-assigned target MLIP prediction error.Integrating with active learning pipelines,we benchmark CAGO,demonstrating stable MLIPs that systematically converge structural,dynamical,and thermodynamical properties for liquid water and water adsorption in a metal-organic framework within only hundreds of training structures,where previously many thousands were typically required. 展开更多
关键词 machine learning interatomic potentials adversarial approacheswhich improve machine learning interatomic potentials mlips machine learning models prediction errors adversarial structures calibrated adversarial geometry optimization cago algorithm adversarial attacks
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