3 resultados para Paper -- Indústria i comerç
em Aston University Research Archive
Resumo:
Removing noise from piecewise constant (PWC) signals is a challenging signal processing problem arising in many practical contexts. For example, in exploration geosciences, noisy drill hole records need to be separated into stratigraphic zones, and in biophysics, jumps between molecular dwell states have to be extracted from noisy fluorescence microscopy signals. Many PWC denoising methods exist, including total variation regularization, mean shift clustering, stepwise jump placement, running medians, convex clustering shrinkage and bilateral filtering; conventional linear signal processing methods are fundamentally unsuited. This paper (part I, the first of two) shows that most of these methods are associated with a special case of a generalized functional, minimized to achieve PWC denoising. The minimizer can be obtained by diverse solver algorithms, including stepwise jump placement, convex programming, finite differences, iterated running medians, least angle regression, regularization path following and coordinate descent. In the second paper, part II, we introduce novel PWC denoising methods, and comparisons between these methods performed on synthetic and real signals, showing that the new understanding of the problem gained in part I leads to new methods that have a useful role to play.
Resumo:
Removing noise from signals which are piecewise constant (PWC) is a challenging signal processing problem that arises in many practical scientific and engineering contexts. In the first paper (part I) of this series of two, we presented background theory building on results from the image processing community to show that the majority of these algorithms, and more proposed in the wider literature, are each associated with a special case of a generalized functional, that, when minimized, solves the PWC denoising problem. It shows how the minimizer can be obtained by a range of computational solver algorithms. In this second paper (part II), using this understanding developed in part I, we introduce several novel PWC denoising methods, which, for example, combine the global behaviour of mean shift clustering with the local smoothing of total variation diffusion, and show example solver algorithms for these new methods. Comparisons between these methods are performed on synthetic and real signals, revealing that our new methods have a useful role to play. Finally, overlaps between the generalized methods of these two papers and others such as wavelet shrinkage, hidden Markov models, and piecewise smooth filtering are touched on.
Resumo:
This paper empirically examines a corporate community involvement (CCI) initiative in Bangladesh. Drawing on a conceptual framework of 'collaborative betterment' and 'collaborative empowerment' and by using focus group discussions and interviews, it assesses the initiative to examine the extent to which it meets expectations of the community where it operates. Some of the key findings of the paper include: (i) although the initiative provides vital healthcare services to some of the most vulnerable and desperately poor communities, the level of actual engagement of the local people - the main stakeholders - has been marginal; (ii) when the principles of collaborative betterment and empowerment are considered, it can be concluded that the initiative struggles even as a 'betterment' process; and (iii) notwithstanding the rhetoric and high-blown statements, corporate role in terms of practical efforts in the field has been mostly superficial and limited. © 2012 John Wiley & Sons, Ltd and ERP Environment.