Currently, researchers spend significant time manually searching through large volumes of data produced during scanning probe imaging to identify specific patterns and motifs formed via self-assembly and self-organisation. Here, we use a combination of Monte Carlo simulations, general statistics and machine learning to automatically distinguish several spatially-correlated patterns in a mixed, highly varied dataset of real AFM images of self-organised nanoparticles. We do this regardless of feature-scale and without the need for manually labelled training data. Provided that the structures of interest can be simulated, the strategy and protocols we describe can be easily adapted to other self-organised systems and datasets
In the field of materials science, microscopy is the first and often only accessible method for stru...
: A general method to obtain a representation of the structural landscape of nanoparticles in terms ...
Image denoising or artefact removal using deep learning is possible in the availability of supervise...
Producing perfectly regulated nanoparticle samples on a large scale is challenging and costly for ma...
Determining the structure of data without prior knowledge of the number of clusters or any informati...
Scanning probe experiments such as scanning tunneling microscopy (STM) and atomic force microscopy (...
Inferring the organization of fluorescently labeled nanosized structures from single molecule locali...
Inferring the organization of fluorescently labeled nanosized structures from single molecule locali...
Although scanning probe microscopy (SPM) techniques have allowed researchers to interact with the...
The self-assembly of nanostructures has been of growing interest in materials science, with particul...
In this mini-dissertation the importance of having an automated object classification procedure for ...
Peer Reviewedhttps://deepblue.lib.umich.edu/bitstream/2027.42/143597/1/aic16157.pdfhttps://deepblue....
An extremely wide variety of self-organised nanostructured patterns can be produced by spin-casting ...
Electron microscopy (EM) represents the most powerful tool to directly characterize the structure of...
This data repository contains the codes for preprocessing point cloud data from MD simulation trajec...
In the field of materials science, microscopy is the first and often only accessible method for stru...
: A general method to obtain a representation of the structural landscape of nanoparticles in terms ...
Image denoising or artefact removal using deep learning is possible in the availability of supervise...
Producing perfectly regulated nanoparticle samples on a large scale is challenging and costly for ma...
Determining the structure of data without prior knowledge of the number of clusters or any informati...
Scanning probe experiments such as scanning tunneling microscopy (STM) and atomic force microscopy (...
Inferring the organization of fluorescently labeled nanosized structures from single molecule locali...
Inferring the organization of fluorescently labeled nanosized structures from single molecule locali...
Although scanning probe microscopy (SPM) techniques have allowed researchers to interact with the...
The self-assembly of nanostructures has been of growing interest in materials science, with particul...
In this mini-dissertation the importance of having an automated object classification procedure for ...
Peer Reviewedhttps://deepblue.lib.umich.edu/bitstream/2027.42/143597/1/aic16157.pdfhttps://deepblue....
An extremely wide variety of self-organised nanostructured patterns can be produced by spin-casting ...
Electron microscopy (EM) represents the most powerful tool to directly characterize the structure of...
This data repository contains the codes for preprocessing point cloud data from MD simulation trajec...
In the field of materials science, microscopy is the first and often only accessible method for stru...
: A general method to obtain a representation of the structural landscape of nanoparticles in terms ...
Image denoising or artefact removal using deep learning is possible in the availability of supervise...