Current subject studies and data-driven approaches in lighting research often use manually selected light spectra, which usually exhibit a large bias due to the applied selection criteria. This paper, therefore, presents a novel approach to minimize this bias by using a data-driven framework for selecting the most diverse candidates from a given larger set of possible light spectra. The spectral information per wavelength is first reduced by applying a convolutional autoencoder. The relevant features are then selected based on Laplacian Scores and transformed to a two-dimensional embedded space for subsequent clustering. The low dimensional embedding, from which the required diversity follows, is done with respect to the locality of the fea...
The spectral clustering algorithm is an algorithm for putting N data points in an I-dimensional spac...
A novel unsupervised band selection method is proposed, where adaptive clustering of spectral compon...
Abstract : This work is concerned with the development and application of novel unsupervised learnin...
Featured Application: Selection of most diverse light spectra from a larger set of possible candida...
This disclosure concerns processing of electronic images, such as hyperspectral or multispectral ima...
Spectral clustering requires robust and meaningful affin-ity graphs as input in order to form cluste...
Consensus clustering has been one of the major fields in data science, with increasing numbers of th...
This paper proposes an unsupervised clustering algorithm for multispectral images, which automatical...
A large volume of CCD X-ray spectra is being generated by the Chandra X-ray Observatory (Chandra) an...
In this paper, we present an unsupervised method for segmenting the illuminant regions and estimatin...
[Context]: The volume of data generated by astronomical surveys is growing rapidly. Traditional anal...
© 2012 IEEE. In learning applications, exploring the cluster structures of the high dimensional data...
In this work a new compression method for multispectral images has been proposed: the ‘colorimetric–...
Abstract. Spectrometric data involve very high-dimensional observations representing sampled spectra...
<p>Band selection, by choosing a set of representative bands in a hyperspectral image, is an effecti...
The spectral clustering algorithm is an algorithm for putting N data points in an I-dimensional spac...
A novel unsupervised band selection method is proposed, where adaptive clustering of spectral compon...
Abstract : This work is concerned with the development and application of novel unsupervised learnin...
Featured Application: Selection of most diverse light spectra from a larger set of possible candida...
This disclosure concerns processing of electronic images, such as hyperspectral or multispectral ima...
Spectral clustering requires robust and meaningful affin-ity graphs as input in order to form cluste...
Consensus clustering has been one of the major fields in data science, with increasing numbers of th...
This paper proposes an unsupervised clustering algorithm for multispectral images, which automatical...
A large volume of CCD X-ray spectra is being generated by the Chandra X-ray Observatory (Chandra) an...
In this paper, we present an unsupervised method for segmenting the illuminant regions and estimatin...
[Context]: The volume of data generated by astronomical surveys is growing rapidly. Traditional anal...
© 2012 IEEE. In learning applications, exploring the cluster structures of the high dimensional data...
In this work a new compression method for multispectral images has been proposed: the ‘colorimetric–...
Abstract. Spectrometric data involve very high-dimensional observations representing sampled spectra...
<p>Band selection, by choosing a set of representative bands in a hyperspectral image, is an effecti...
The spectral clustering algorithm is an algorithm for putting N data points in an I-dimensional spac...
A novel unsupervised band selection method is proposed, where adaptive clustering of spectral compon...
Abstract : This work is concerned with the development and application of novel unsupervised learnin...